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Article

Research on Corporate Indebtedness Determinants: A Case Study of Visegrad Group Countries

Faculty of Operation and Economics of Transport and Communications, University of Zilina, Univerzitna 1, 010 26 Zilina, Slovakia
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Authors to whom correspondence should be addressed.
Mathematics 2023, 11(2), 299; https://doi.org/10.3390/math11020299
Submission received: 13 December 2022 / Revised: 28 December 2022 / Accepted: 4 January 2023 / Published: 6 January 2023

Abstract

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Debt financing is arguably the most important source of external financing for enterprises and has become popular in recent years. Corporate debt is related to the monitoring of corporate indebtedness, which is a necessary part of evaluating the overall financial performance of an enterprise and will occur if an enterprise does not have enough equity. However, rising indebtedness can be a difficult financial situation for enterprises in the form of default and an inability to meet their emerging liabilities. The main aim of this paper is to perform a debt analysis of enterprises operating in the Visegrad Group countries and subsequently examine whether firm size and legal form have a statistically significant impact on selected indebtedness indicators. Firstly, it was necessary to perform a debt analysis using 10 debt ratios. Subsequently, the nonparametric Kruskal–Wallis test was used to perform a more detailed analysis focused on examining statistically significant differences in individual indebtedness ratios based on firm size and legal form. Bonferroni corrections were applied to detect where stochastic dominance occurred. The Kruskal–Wallis test results reveal statistically significant differences in debt ratios in Visegrad Group countries, confirming the impact of firm size and legal form on calculated debt ratios. Recognizing the impact of several determinants on corporate debt is critical because these firm-specific features may be interpreted as proxies for default probability or the volatility of corporate assets, which may simplify the decision-making processes of creditors and stakeholders.

1. Introduction

Enterprises nowadays are required to analyze their business activities [1] and assess their performance more than ever before [2]. Firms take care of their financial health, know their strengths and weaknesses, can take efficient actions, and thus flexibly adapt to changing conditions. However, only those enterprises that know how to react quickly enough to changes in their environment can survive, be successful, and increase their performance [3,4]. To determine the strengths and weaknesses of a firm and choose the best financial management approach, it is essential to evaluate its corporate business performance and financial health. Based on the prosperity of the enterprise, i.e., its functioning, it is possible to predict whether the business entity will be able to continue its business in the future [5]. One of the most widely used methods focused on assessing business activity and predicting bankruptcy is the analysis of financial ratio indicators. Unfavorable trends, such as declining liquidity, declining profitability, or rising costs, are signals of a loss of financial stability [6]. Therefore, a business entity must analyze its financial and economic activities to identify those that are adversely affected by internal and external factors. On the contrary, the term financial instability is used to indicate the susceptibility of the financial aspect of an enterprise to large-scale financial crises [7].
Indebtedness is one of the essential aspects that might impact corporate performance. Every enterprise operating in the market maintains an appropriate capital structure to enhance performance [8] and reduce its financial costs. A firm must monitor its capital structure, which testifies to the appropriate and effective combination of equity and debt financing. According to Durana et al. [9], every firm operating in the market must make the correct decision in choosing the appropriate capital structure, which is required for its specified corporate goals. In general, debt financing is a form of external financing used by enterprises [10]. Debt financing has increased significantly in recent years, indicating the economic expansion of enterprises, and the issue of indebtedness is related to this financial source. In general, merely using equity to finance corporate assets reduces a firm’s total profitability. On the contrary, external financing of all corporate assets is related to difficulties in obtaining them [11]. Debt analysis is concerned with identifying the appropriate combination of equity and debt. It is not possible to state which financial source is suitable for an enterprise to finance its specific business activities. Many financial management professionals have dealt with this issue and developed several theories about capital structure difficulties. In recent years, the existence of a unique combination of equity and debt financing has been a frequent topic of discussion in the literature.
Monitoring the performance of a debt-financed firm must be controlled not only by start-ups but also by substantially more experienced enterprises. According to Gaspareniene [12], many firms prefer debt as start-up capital to start or maintain their specific business activities. A high proportion of debt increases the corporate indebtedness, thus creating uncertainty for both the enterprise’s creditors and its owners. There are numerous reasons why a company would prefer to finance its business activities with debt rather than equity, and vice versa. Generally, the firm size, its legal form, the amount of profit, the industry in which the enterprise operates, as well as the macroeconomic environment, the regulatory framework of the firm, and the credit policy all have a significant impact on the choice of financing form.
The main aim of this paper is to implement 10 crucial indebtedness indicators and appropriate quantitative methods to analyze the indebtedness of enterprises operating in the Visegrad Group countries in the period of 2016–2021; however, the monitored period was not divided into periods before and after the COVID-19 pandemic, but the object of monitoring was the situation in the preceding 6-year horizon and to examine whether there are statistically significant differences in the level of corporate debt due to a firm’s size and its legal form. Monitoring statistically significant differences is realized using the Kruskal–Wallis test, in which the null hypothesis tests whether the medians of each group of enterprises are the same, i.e., whether there are statistically significant differences between the calculated debt ratios relating to the firm size and legal form, which are the most important firm-specific features in terms of corporate indebtedness, as proved in previously published studies worldwide (e.g., [13,14,15,16,17,18,19]). The originality of the study is the demonstration of the corporate indebtedness on a sample of 12,816 enterprises from all economic sectors, which makes the research pioneering in the Central European environment in terms of the dataset robustness and the number of indicators analyzed. The paper is divided into the following sections: The theoretical background contains a literature review, which covers the most relevant and up-to-date research in the field. The methodology section determines the sample of analyzed firms as well as the methodological research steps required for debt analysis implementation, with a focus on the existence of statistically significant differences in debt indicators due to firm size and legal form. The results and discussion section presents the results obtained by the previous calculation of selected debt indicators and their subsequent statistical verification. These findings are discussed and argued in the context of other international studies. The conclusion section underlines the most significant research outputs, along with their limitations and further research challenges.

2. Literature Review

The constant competition and rivalry between market enterprises have increased dramatically in recent decades. Many firms fail this rivalry, and the only ones that succeed are those that are effectively managed [20,21]. Freeman et al. [22] state that the current development in advanced economies indicates that the success of business management is connected precisely with increasing firms’ performance. Corporate performance is a phenomenon that determines the results of a firm [23], thereby influencing the position of the enterprise in the market [24]. On the most general level, the performance of a firm can be described as the essence of the existence of the enterprise in the market environment, the success of the company, and its ability to survive in the future [25,26]. Zhou et al. [27] understand performance as the ability of a firm to evaluate the investments made in its business activities to the greatest extent possible. According to Valaskova et al. [28], corporate performance is a measure of the use of a firm’s competitive advantage. Although business performance is a commonly used concept, its exact definition is debatable. Approaches to performance measurement are constantly evolving. Because financial results primarily offer a retroactive perspective [29] and reveal less about a firm’s prospects [30], many authors point out that evaluating a firm based only on profit or sales is not sufficient [31]. The traditional accounting point of view has begun to be abandoned, and accounting is no longer considered the only basis for performance measurement [32]. Performance indicators answer the question of what measures need to be taken to increase corporate performance [33]. Even though there are many other performance indicators, financial indicators are the ones most frequently used to monitor and assess corporate performance.
A firm needs to know information about its performance [34] because it directly determines the firm’s financial health. The financial health of an enterprise is a fundamental attribute of its successful functioning [35], which is determined through financial analysis [36], which deals with different methods and offers various procedures for determining the financial health of the firm [37]. Financial ratios are the primary tool for determining financial health [38] and include debt indicators [39]. According to Kucera et al. [40], debt ratios measure the ratio of internal and external sources of financing in an enterprise. This information is crucial for a firm because it expresses how much of its business activities are financed by its own resources and how much by foreign ones [41]. Numerous authors [42,43,44] have defined corporate indebtedness as a state where the enterprise acquires debt for financing overall business activities. As a result, in addition to determining the total amount of required capital, one of the fundamental problems of corporate financial management is determining the appropriate composition of sources of financing for a firm’s activity [45]. The essence of debt analysis is the search for the optimal relationship between equity and debt financing. According to Pacheco and Tavares [46], finding the appropriate equity-to-debt ratio and, concurrently, figuring out how much total debt financing is required to support business activities can be problematic. Generally, the golden rule recommends that the ratio of equity to debt should be 1:1 [47]. On the contrary, other authors [48,49,50] support the theory that it would be more advantageous for a firm if it had a higher share of foreign resources. Indebtedness does not always have to be a negative factor for a company [51], as it can lead to growth not only in profitability [52] but also in the market value of the firm [53]. However, indebtedness is associated with a greater possibility of financial difficulties [54], debts [55], obtaining a loan from a bank [56], and poor currency on the market [57], which can cause customers and suppliers to mistrust the company. The higher the corporate indebtedness, the higher the risk in business [58]. The terminology of financial risk refers to businesses, financial markets, and individuals and represents the danger or possibility that shareholders, investors, or other interested parties will lose money [59]. Only a few enterprises operating in the market are entirely self-sufficient. On the contrary, many companies finance their business activities with foreign sources of financing. Mauer et al. [60] point out that if an enterprise achieves a long-term loss, a negative equity situation may arise. Debt indicators are used to examine the level of corporate indebtedness [61], debt coverage [62], and total corporate debt [63]. The total indebtedness ratio, which indicates the amount of debt held by a firm and measures how much of its assets are covered by debt [64], is one of the most significant debt indicators [65]. The higher this indicator is, the higher the financial risk associated with the company [66]. In general, firms utilize this indicator as a tool for expansion and choosing sustainable types of borrowing. According to Serrasqueiro and Caetano [67], 30% of the monitored indicator is considered low indebtedness, while a value higher than 70% is characterized as risky indebtedness for the company.
The optimal setting of the capital structure is a rather complex problem that requires great attention in financial decision-making. The ratio between equity and debt financing depends primarily on the industry in which the enterprise operates [68], the structure of the assets of the company [69], the interest rate of banks [70], and many other factors. As long as the interest rate is lower than the profit of the enterprise itself, using debt often increases the profitability of equity capital [71]. Debt-related actions can be classified as financial leverage. The higher the financial leverage indicator, the more the firm is financed with debt [72]. The financial leverage indicator is based on the idea that using debt to fund business activities enhances the relative profitability of equity [73], while also assuming that debt financing is less expensive than equity financing [74]. At the same time, however, the use of foreign capital also increases the riskiness of a firm.
Corporate indebtedness is influenced by various determinants that affect the composition of corporate capital in different ways [75], e.g., prioritizing the financing of business activities primarily through debt. Many authors claim in their studies that one of the most important determinants that significantly affects the level of corporate debt is the firm’s size. Smaller firms have a lower proportion of foreign resources than large enterprises, which is also reflected in their lower level of indebtedness [76]. Many authors [77,78] point to the legal form of the company as a crucial determinant influencing its decision on the choice of financing form. Even Cole [79] highlights significant differences in the indebtedness of enterprises due to the influence of their chosen legal form. The level and volatility of corporate profits [80], the costs of financial difficulties [81], the effect of inflation [82], the effort to maintain ownership control over the company [83], dividend policy [84], requirements for the financial flexibility of the company [85], and the method and intensity of taxation [86] significantly affect corporate indebtedness. According to Lei et al. [87], the financial market situation has a significant impact on the financial decision-making of a business entity. Moon and Phillips [88] also mention the affiliation of an enterprise to the industry as one of the factors affecting the level of corporate indebtedness.
However, the existing literature has not been able to reach a consensus on the main determinants of capital structure due to internal differences between countries, industries, and individual specifics of the firms themselves. The interaction of several factors affects how each capital component is represented in a capital structure. In the international literature, there are definitions of several factors that influence corporate capital structures. Although there are several theoretical models, there is no comprehensive method for creating an appropriate capital structure. There is no solution in the form of a general algorithm into which it would be sufficient to insert values and thus calculate the actual optimal capital structure of an enterprise. The ability of a financial manager to appropriately identify the factors that determine indebtedness in the context of corporate features, which have a significant impact on how much indebtedness is perceived generally, is one of the many skills and knowledge resources that are necessary for a solution to be successful.

3. Materials and Methods

The main aim of this research paper is to implement 10 crucial indebtedness indicators and appropriate quantitative methods to analyze the indebtedness of enterprises operating in the Visegrad Group countries in the period of 2016–2021, and to examine whether there are any statistically significant differences in corporate debt due to firm size and legal form.
Applying financial parameters from the ORBIS database, which is regarded as a source of business and financial data on more than 400 million private and public firms operating globally, was necessary for a comprehensive debt analysis. The database, which formed the basis for the debt analysis, contains financial data on 100,057 enterprises operating in Visegrad Group countries for the monitored period of 2016–2021. The data from the database had to be appropriately adjusted because not all firms were suitable for the calculation of the debt indicators. Enterprises that did not provide all the required input data for the debt analysis throughout the monitored period were eliminated. Outlying values were removed from the dataset to reduce the informativeness of the obtained results of the calculated debt analysis. The final dataset contains financial data about 12,816 enterprises (6048 Slovak enterprises, 1626 Czech enterprises, 3851 Polish enterprises, and 1291 Hungarian enterprises), whose elementary identification data, such as firm size, legal form, ownership structure, firm age, and economic sector, are summarized in Table 1. However, we focused on purposive sampling when building the dataset of enterprises, which is the intentional selection of information based on its ability to elucidate a specific theme, concept, or phenomenon. Each economy has some specific features, different legislative restrictions, and thus building the dataset with the same number of enterprises should cause some imperfections in the calculations.
The final data contain the final dataset necessary for the debt analysis of enterprises operating in the Visegrad Group countries. According to the conditions set out in the ORBIS database to determine the firm size characteristics, a very large enterprise is defined as one that meets at least one of the following conditions: operating revenue ≥EUR 100 million, total assets ≥EUR 200 million, and employees ≥1000. A large enterprise is regarded as one with an operating revenue ≥EUR 10 million, total assets ≥EUR 20 million, and employees ≥150. A medium-sized enterprise is one that meets at least one of the following criteria: operating revenue ≥EUR 1 million, total assets ≥EUR 2 million, and employees ≥15. Enterprises that do not fulfill these criteria are considered small enterprises. The final dataset contains the most enterprises operating in the medium-sized enterprise category. On the contrary, with the exception of Hungary, where small enterprises are underrepresented, very large enterprises are the category that is least represented.
The ORBIS database determines the following legal form categories. Partnerships, private limited companies, public limited companies, and other legal forms are the four ownership structures used by enterprises operating in the Visegrad Group countries. A private limited company has been legally incorporated into supplementary legal identities. The shareholders of this legal form have limited liability for any debts incurred by the enterprise [89]. Within the Visegrad Group countries, enterprises with the legal form of a private limited company comprise the most numerous category. A public limited company, which is often confused with a private limited company, differs in the possible sale of the shares of the enterprise to the general public. The firm may benefit from this approach in terms of fund raising [90]. Partnerships are another legal form formed by a few individuals involved not just in the ownership and decision-making of the business but also in its earnings. Each individual may contribute a distinct specialization to the firm to increase the ability of the enterprise to operate in the market [91]. The least represented category comprised enterprises operating under other legal forms, which include, for example, branches or solo traders.
The ORBIS database also provides information about the number of years on the market. It is evident that enterprises operating the longest in the market have the least share (more than 50 years). In Slovakia, firms that have been active on the market for 10–20 years dominate, while in the Czech Republic, Poland, and Hungary, companies operating on the market for 20–30 years can be considered the most represented group. These enterprises are sufficiently stable and will provide the research with ideal data because they predominate and have been in the market for more than 10 years.
Economic activities in the European Union are categorized according to the statistical classification of economic activities in the European Community, abbreviated as the NACE classification. In economic statistics, NACE is a four-digit classification that provides the basis for collecting and presenting a comprehensive range of statistical data by economic activity. In Slovakia, most enterprises operate in the category G—Wholesale and retail trade; repair of motor vehicles and motorcycles. This category took first place because the Slovak Republic is known for its automobile manufacturing. Vehicles’ subsequent sale and the provision of service regarding them are closely related to the production of cars. When the other countries of the Visegrad Group became independent, they immediately established themselves as world leaders in the manufacturing industry, and category C—Manufacturing can be considered an important economic sector. Today, manufacturing is still paramount in these countries. On the contrary, the fewest enterprises in the sample operate in category O—Public administration and defense; compulsory social security.
Financial data (in thousands of euros) was the basis for the calculation of debt indicators, and Table 2 summarizes their descriptive statistics, such as average, median, standard deviation, minimum, maximum, and coefficient of variation. Then, the descriptive statistics were calculated also for the analyzed debt ratios (See Appendix A (Table A1)).
A comprehensive analysis focused on the indebtedness of enterprises operating in the Visegrad Group countries in the monitored period was carried out using 10 debt indicators. Table 3 summarizes the formulas needed for the following calculation.
Several methodological steps were used to perform the financial analysis concerning the indebtedness of enterprises and to verify the determined hypotheses: whether there are statistically significant differences between the calculated debt ratios relating to the firm size/legal form of enterprises. Then, some research questions arose: (i) Which debt ratios are significantly different when considering individual levels of firm size? (ii) Which debt ratios are significantly different when considering specific types of legal forms?
Firstly, it was necessary to calculate the individual monitored debt indicators separately for enterprises operating in the Visegrad Group countries in the monitored time horizon set from 2016 to 2021. The debt indicators were chosen following other relevant international studies focusing on the same research issue [92,93,94,95,96].
Next, normality tests were used to determine if a dataset was well-modelled by a normal distribution. A statistical test of normality is helpful because it can be difficult to determine whether any deviation from linearity is systematic or is only the result of sample variation [97]. The null hypothesis is that the sample comes from a normal distribution, and the alternative is that the sample is from a non-normal distribution. The original sample-size restriction for the Shapiro and Wilk [98] test was 50. Using either skewness, kurtosis, or both to detect departures from normality, this test was the first to be able to identify them. Due to its strong power characteristics, it has become the preferred test [99]. The Shapiro–Wilk test is a test of the composite hypothesis that the data are independent, identically distributed, and normal given a sample X 1 ,     X 2 ,   , X n of n real-valued observations, i.e., N ( μ , σ 2 ) for some unknown real μ and some σ > 0 . Kurtosis and sample skewness are both one-dimensional variables. Whereas, if the data X 1 , X 2 , ,   X n are arranged in order, it is unlikely to lose any information to get the order statistics X ( 1 ) X ( 2 ) X ( n ) [100]. To determine if the order statistics of X j are well associated with expected standard normative order statistics, it is necessary to take into account the expectations of Z j and the correlation of X ( 1 ) ,   X ( 2 ) , ,   X ( n ) . Whereas a correlation substantially less than 1 would indicate non-normality, a correlation close to 1 would indicate a significant fit to normality. If a constant is added to all the X j , it is then added to their order statistics, as well as to X ¯ , leaving X ( j ) X ¯ and s x unchanged [101]. The ratios ( X ( j ) X ¯ ) s x and the correlation will remain unchanged if all X j are multiplied by a positive constant. Therefore, the correlation will have the same distribution regardless of the location μ or scale σ of the X j if the X j are independent, identically distributed, and normal. There are several symmetry properties in the Z ( j ) and their expectations m j . The Shapiro–Francia statistic [102] is a test statistic for normality that employs the squared correlation of X ( j ) with m j , whereas the more well-known Shapiro–Wilk statistic uses both the means and covariances of the normal order statistics Z ( j ) . Given an ordered random sample, the original Shapiro–Wilk test statistic is defined by
W = j = 1 n a j X ( j ) 2 j = 1 n ( X j X ¯ ) 2
as in the paper of Shapiro and Wilk [98]. The value of W lies between zero and one. A value of one indicates that the data are normally distributed, but small values of W lead to the rejection of normality [99]. There are also many other commonly used normality tests, such as the Anderson–Darling test [103], Cramer–von Mises test [104], and Kolmogorov–Smirnov test [105,106]. While the Anderson–Darling and Cramer–von Mises tests are based on a weighted integral of the squared difference, the Kolmogorov–Smirnov test statistic is the maximum absolute difference between the cumulative distribution function and normal cumulative distribution function. The normality test p-values are frequently included in the statistical software output, and a small p-value is interpreted as evidence that the sample is not from a normal distribution. Generally, because many statistical methods (such as t-tests and analysis of variance) assume that variables are normally distributed, this test of a parametric hypothesis is related to nonparametric statistics. If they are not, nonparametric methods might be needed.
To determine if there are statistically significant differences between two or more groups of an independent variable, the Kruskal–Wallis test, a rank-based nonparametric test, was used. The Kruskal–Wallis test is named after Kruskal and Wallis, who jointly developed it in 1952 [107]. When the assumptions for one-way ANOVA are not fulfilled, the nonparametric Kruskal–Wallis test is used. In ANOVA, a normal distribution of each group with approximately equal variance in the scores is assumed. The Kruskal–Wallis test is a nonparametric method for comparing k independent samples [108] and is used as a test of equality of medians or even means [109]. If a random sample of size N comes from a large population consisting of k 2 disjoint groups or categories, which are adequately represented in the sample, it is necessary compare the k groups of sizes n 1 ,   n 2 , ,   n k with i = 1 k n i = N , in accordance with a continuous response variable Y [110]. The Kruskal–Wallis test is performed by ranking all the observations individually and comparing the sum of the ranks for each group when the precise category assignment is specified. If r j is the rank of Y in the entire sample, and Z i j = 1 is specified as an indicator variable, the Kruskal-Wallis test statistic is
H = 12 N ( N + 1 ) i = 1 k R i 2 n i 3 ( N + 1 )
where n i = j = 1 N Z i j and R i = j = 1 N Z i j r j [95]. The Kruskal-Wallis test statistic for the total number of observations throughout all samples approximately follows a chi-square distribution and has k 1 degrees of freedom, where n i should be greater than 5 [96]. In general, a small p-value assumes that some among the k samples’ medians are different, if H χ α 2 , where χ α 2 , with k 1 degrees of freedom is the tabled value derived from the chi-square table for a given α . However, the Kruskal–Wallis test result shows if there are differences among the medians of some of the k groups, but it does not show which groups are different from other groups.
The Bonferroni adjustment can be used to identify the groups that differ from each other. Due to its simplicity, the Bonferroni method is the most popular method for adjusting for multiplicity. The method originally put forth by Neyman and Pearson [111] to aid decisions in studies involving repetitive sampling provided the basis for the Bonferroni adjustment, named after the Italian statistician Carlo Bonferroni. However, the method is often applied in research papers to adjust probability values when performing many statistical tests in any context, and this application is primarily associated with Dunn [112]. It has grown in popularity and is frequently applied in various experimental contexts, such as contrasting disparate groups at baseline, evaluating the relationship between variables, and assessing several endpoints in clinical trials [113]. The Bonferroni correction was developed to solve the problem that as the number of tests increases, so does the likelihood of a type I error, assuming the existence of a significant difference when one is not extant. Generally, the error rate is
α = 1 ( 1 α ) T
where α is the critical value and T is the total number of tests conducted. As an approximation to the previous calculation, the α T adjusted significance level is applied in practice [114]. As a result, to maintain a level across all tests at 0.05, the Bonferroni adjustment is applied to the probability values related to each individual test.

4. Results and Discussion

Indebtedness indicators monitor the extent of use of owned and foreign resources. In general, the share of equity and debt financing primarily affects the financial stability of a firm. While a high proportion of equity makes the company stable and independent, with a low share the firm is, on the contrary, unstable. However, more debt may not necessarily be a negative characteristic for a firm; it can enhance overall profitability and, in turn, the firm’s market value. At the same time, it raises the danger of financial instability. In a consolidated market environment, equity is more expensive compared to debt. The connection between the indebtedness and liquidity of a firm is also crucial because as debt levels rise, so does the amount that has to be repaid. The firm must generate sufficient profit to be able to continue to finance its operation and development, as well as to repay its debts, including interest.
Generally, several debt indicators can be used to assess corporate indebtedness, but the following ratios have been selected to meet the objective of this paper: total indebtedness ratio, self-financing ratio, current indebtedness ratio, non-current indebtedness ratio, debt-to-equity ratio, interest coverage ratio, interest burden ratio, debt-to-cash flow ratio, equity leverage ratio, and financial independence ratio. Table 4 summarizes the average value of various indicators for enterprises operating in individual countries of the Visegrad Group over the monitored time horizon of 6 years.
The total indebtedness ratio is fundamental in determining the financial risk of an enterprise and is one of the groups of debt or leverage ratios included in financial ratio analysis. Generally, a certain level of indebtedness is necessary for a firm, while according to Ayaz et al. [115], it is more than required for them to guard the upper limit of the share of debts in the total capital. The indicator in the case of enterprises operating in Slovakia, reached an average value of 0.623, which means that EUR 0.632 of total debt correspond to EUR 1 of total assets. In the context of firms operating in Slovakia, many authors have dealt with the monitoring of total indebtedness [116,117]. Virglerova et al. [118] state that the growth of the total indebtedness indicator is associated with an increased risk of corporate insolvency. In the conditions of the Czech Republic, the average value of the total indebtedness ratio in the monitored period was 49.6%. According to Topyan [119], a ratio less than 0.5 shows that equity covers a significant percentage of an asset of the enterprise, which provides more flexibility for them. In Poland, the average total indebtedness reached 51.6%, which means that every EUR 1 of total assets of Polish enterprises is covered by EUR 0.516 of total liabilities. However, the level of total indebtedness depends primarily on the industry in which the firm operates because some sectors can use more debt financing than others. The total indebtedness ratio in Hungarian conditions indicates that EUR 1 of total assets is covered by EUR 0.533 of total liabilities. In general, a high risk level combined with a high debt ratio expresses that the enterprise has taken on a significant amount of risk. According to Domokos et al. [120], a firm is considered highly leveraged in Hungary if its debt ratio is over 50%. A high total indebtedness ratio may indicate that the enterprise will have difficulty borrowing money or that it will only be able to borrow money at a higher interest rate compared to a business with a lower ratio [121]. A complementary indicator can be considered the self-financing ratio, whose value, according to Mazanec and Bartosova [122], should not fall below the level of 20–30%. If the value of this indicator decreases over time, it indicates that the economic situation of the firm is becoming increasingly tense [123]. In Slovakia, the average value of this indicator reached 36.7%, which can be considered a generally optimal value from the authors’ point of view. Under Czech Republic conditions, the self-financing ratio reached an average of 51.6%. Czech enterprises primarily use equity financing to finance their business activities. In the conditions of Poland, the indicator reached an average value of 47.4%, and in Hungary, it reached 46.6%. This ratio generally depicts the proportion of total assets created through the issuance of equity shares compared to debt. Because the total indebtedness ratio and the self-financing ratio are mutually complementary indicators, it is true that if the total indebtedness of the firm decreases, the coefficient of self-financing will increase, and vice versa [124]. The current indebtedness ratio and non-current indebtedness ratio, whose calculation and evaluation have already been discussed by many authors, should be used to monitor the capital structure if the firm is significantly dependent on debt. During the monitored period, Slovak enterprises were financed with 46.9% short-term debt and 15.4% long-term debt. If the ratio of short-term debt to total assets is particularly high, it may indicate that the enterprise has a liquidity problem [125,126], which lowers its debt rating [127]. In the other countries of the Visegrad Group, firms in the monitored period preferred to finance their business activities primarily through short-term debt, the average level of which was more than double the value of long-term debt. Dangl and Zechner [128] point to the fact that individual business entities operating in the market prefer to finance their activities through short-term debt primarily due to the time frame for its repayment and the interest to be paid for its use. According to Batrancea [129], the debt-to-equity ratio may be used to monitor the level to which the firm is indebted. In Slovakia, the debt-to-equity ratio reached a value of 2.546 on average. A debt-to-equity ratio of one is typically seen as relatively safe, whereas values of two or more may be considered risky [130]. It is clear from the calculated results that the average value of the indicator is slightly above the optimal value in the conditions of Slovak enterprise. In general, the debt-to-equity ratio is a measurement of the ability of the enterprise to pay down its debt. In the Czech Republic, EUR 1 of shareholder funds is covered by EUR 1.318 of corporate debt. According to Boshnak [131], a suitable debt-to-equity ratio is around 1 to 1.5, while it is true that the higher the value of corporate debt, the higher the value of the monitored ratio will be. Ghardallou [132] states that in most industries, a value between 0.5 and 1.5 is considered optimal, which kept the firms operating in Poland in the monitored period in the optimal range. Nukala and Rao [133] claim that a value between 0 and 2.5 is ideal, whereas a value higher than that is unfavorable. Under Hungarian conditions, EUR 1 of shareholder funds corresponds to EUR 1.460 of corporate debt. However, because some sectors use more debt financing than others, the appropriate debt-to-equity ratio may differ by industry. One of the most crucial debt indicators is the interest coverage ratio because it reflects how often a firm can cover interest on its debt after paying all expenditures related to its operations [134]. A value of 5 is considered optimal, but, significantly, the value does not fall below 3 [135]. According to Kordsachia [136], a ratio greater than one shows that an enterprise can pay its debts with its earnings. Moreover, a value of 1.5 could be considered sufficient. Firms need to generate more than enough earnings to cover interest payments to survive future, maybe unanticipated, financial difficulties [137]. The indicator reached an average value of 14.351 in Slovakia. In general, the higher the ratio, the lower the chances of default [138], although this may differ significantly depending on the industry in which the firm operates. The ability to pay the interest on debt in the Czech Republic is greater than 24 times in an accounting year because the ratio reached an average value of 24.659 in the monitored period. In Poland, the indicator reached an average value of 21.103, and in Hungary, the value was 27.159, so the ability to pay the interest on debt is more than 27 times greater in an accounting year. The inverted indicator of the interest coverage ratio is the interest burden ratio. According to Guariglia et al. [139], the long-term value of the monitored indicator must be lower than 100%, while enterprises operating in Slovakia reach an average value of 12.6%, thus being in the optimal range. According to Sedlacek and Nemec [140], the optimal range is level 1, but in the conditions of the Czech Republic, this indicator reached an average value of 0.107, which means that EUR 1 of EBIT corresponds to EUR 0.107 of interest paid. A high value of the ratio generally indicates that a firm does not use its debt correctly, but in Poland, enterprises reach an average value of 10.9%, which puts them in the recommended range. Even in the conditions of Hungary, the average value of the monitored indicator reached 8.7%. The debt-to-cash flow ratio expresses how many years the enterprise would need to pay off its debts [141], and a value between 3 and 4 is considered optimal [142]. From the calculated values, it is clear that it would take Slovak enterprises an average of 7.331 years to pay off their debt if they used all of their generated cash flow to repay it. It would take around six years for business entities operating in the other countries of the Visegrad Group to repay their debt. Monitoring the equity leverage ratio is essential for every business entity. When business activities are financed by debt at a level of 75%, a value of 4 is considered optimal [143]. In the case of Slovak firms, the average value of the monitored indicator is 3.853, mainly due to the lower share of equity of the majority of monitored enterprises. It is also clear from the results that EUR 1 of shareholder funds is covered by EUR 2.402 of the total assets of Czech enterprises. Because Polish companies use a combination of equity and debt to finance their business activities, it is also necessary to monitor the equity leverage ratio for these companies, the average value of which is 2.618. According to Tousek et al. [144], the indicator points to the part of assets covered by equity, which is the inverted value of the self-financing coefficient. The higher this indicator is, the higher the share of foreign sources in total financing is [145]. In Hungary, the results indicate that EUR 1 of shareholder funds of a firm is covered by EUR 2.602 of its total assets. Generally, a firm with more equity can be considered stable and independent, which creates a precondition for greater financial independence [146]. Firms must additionally monitor the financial independence ratio. This indicator measures the degree of organizational independence concerning third-party resources and monitors the adequacy of corporate indebtedness [147]. From the calculated results, it is clear that per EUR 1 of a firm’s total debt, there is EUR 0.829 in Slovakia and EUR 1.439 in Czech shareholder funds. In the case of Polish and Hungarian enterprises, the average value of the calculated indicator was close to 1.2. In general, monitoring this indicator is necessary not only for creditors but also for the shareholders of a firm due to its ability to settle corporate liabilities [148].
The main objective of a more detailed debt analysis of enterprises operating in the Visegrad Group countries was to determine if there were statistically significant differences in the individual indebtedness ratios depending on the firm sizes (small, medium-sized, large, and very large enterprises) and legal forms (private limited enterprise, public limited enterprise, partnerships, and other legal forms) or whether the individual values of the indicators differ significantly.
Firstly, the normality of the dataset had to be confirmed using the Kolmogorov–Smirnov and Shapiro–Wilk tests, even though the results of the tests rejected the assumption that the data had a normal distribution. The Kruskal–Wallis test was used to determine whether there were statistically significant differences between the calculated ratios relating to firm size and legal form because it does not require a normal distribution of the dataset, unlike an analogous one-way ANOVA, and it is also unstable to outliers. Table 5 summarizes the results of the Kruskal–Wallis test, which examined statistically significant differences in debt ratios concerning firm size. Based on the results, there are statistically significant differences between all indicators of indebtedness in Slovakia, except for the total indebtedness ratio. In the conditions of the Czech Republic and Poland, it can be pointed out that there are differences between all monitored debt ratios. In Hungary, there are statistically significant differences between all indicators of indebtedness except for the non-current indebtedness ratio.
Due to the statistically significant differences between several indebtedness ratios, a post hoc analysis was conducted as the next step. The post hoc analysis results identified which individual debt ratios concerning the firm sizes are the most statistically significant. The results of the pairwise comparison of size are summarized in the following tables (Table 6, Table 7, Table 8 and Table 9). In Slovakia, there are statistically significant differences between small and medium-sized enterprises, specifically between all nine variables that were carefully analyzed, and between small and large enterprises. In the conditions of the Czech Republic, it is possible to point out the existence of statistically significant differences mainly between medium-sized and very large enterprises and also between small and very large enterprises, and in Poland, there are differences mainly between small and medium-sized enterprises, between small and large enterprises, and between small and very large enterprises. According to the pairwise comparison results, there are statistically significant differences in Hungary primarily observed between medium-sized and very large enterprises, medium-sized and large enterprises, and small and very large enterprises.
Firm size plays a significant role in securing loans. The higher the size of the enterprise, the easier it is to secure a loan, and vice versa. There is no consensus on the dependence between firm size and corporate debt in theory or among the authors of empirical studies. According to Rajan and Zingales [149], corporate debt is more beneficial in larger firms than in smaller ones because it diversifies risk across more sources and reduces susceptibility to financial distress. Hasanuddin et al. [150] state that debt is cheaper in larger companies and confirm this with a positive correlation. Jaworski and Czerwonka [151] also confirm the positive relationship between firm size and indebtedness in all monitored years. Both quantile regression analysis and descriptive statistical analysis were used to interpret the data in the study by Quintella and Coelho [152]. Their results indicate that some quantiles are significantly affected by characteristics such as firm size and asset structure to determine how enterprises adopt unique capital structures. The findings also show a positive correlation between firm size and overall debt level for the 25th quantile of the sample. On the contrary, the theory of hierarchical order holds that the bigger the company, the bigger the profits, so debt is not so necessary, and the result is a negative relationship between these variables [153]. Firm size clearly determines corporate financial structure in Slovakia as well. Small enterprises have a limited opportunity to obtain a bank loan or additional funds through the issue of shares or bonds [154]. Small businesses generally raise less debt or raise debt at a higher cost than large enterprises, which may be reflected in their lack of interest in external financing. The reason for the lower indebtedness of small businesses can be their striving for higher liquidity in times of financial difficulty [155]. Several authors [156,157,158] state in their research that there is a positive relationship between the size of a firm and its level of indebtedness in the form of long-term liabilities, bank loans, and other external financing. They argue that the larger the firm, the more inclined it is to finance its activities through debt financing. On the contrary, there is a negative relationship between short-term liabilities and firm size. The larger the company, the lower the share of short-term liabilities in its total assets [159]. Large enterprises borrow more debt due to better debt diversification and a lower risk of corporate bankruptcy [160].
Banking institutions consider such businesses to be less risky, and therefore their access to credit is generally better. Belas et al. [161] conducted a similar study in the Czech Republic, and their research results pointed to the fact that securing the appropriate capital structure is one of the fundamental assumptions for each successful business activity of a firm in both market and transitive economies. The larger the firm, as measured by the number of employees, the greater the inclination to choose debt financing. According to the findings, predicting the capital structure of medium-sized enterprises in the Czech Republic is challenging because preferences for domestic and foreign capital are spread evenly. In the conditions of the Czech Republic, Dvoulety and Blazkova [162] dealt with this issue and focused on the relationship between firm size and indebtedness. The primary objective of their research was to determine the factors influencing the corporate debt and productivity of Czech firms, with a primary focus on firm size, firm age, legal form, and sectoral affiliation of the company itself. According to Kajurova and Linnert [163] and Syrova and Spicka [164], large enterprises are more likely to fund their business activities using debt financing.
Financial leverage appears to be positively related to firm size under Polish conditions. This fact appears to be consistent with theoretical predictions that large firms are more diversified, less prone to bankruptcies, face fewer problems with asymmetric information, and therefore find it easier to finance debt. This observation makes more sense in banking-oriented economies, as banks find it easy and convenient to lend to larger firms with substantial asset bases. Trade-off theory suggests that large, mature firms with good market reputations, diverse portfolios, and little chance of failing will have reduced agency costs and benefit from leverage. Many authors in Poland have examined whether there is a relationship between a firm’s size and its debt level. Vintila et al. [165], as well as Mirota and Nehrebecka [166], identified a strong positive relationship between firm size and capital structure. According to the findings of their research, small and medium-sized enterprises often have a lower debt ratio than large firms, which is related to corporate indebtedness. Koralun-Bereznicka and Ciolek [167] discussed the determinants influencing the debt financing of enterprises in Poland. The main question of their study was whether the use of debt financing depends on the industry in which an enterprise operates and its firm size. Because there is a positive link between the variables studied, the leverage effect is influenced not only by firm size but also by industry classification. The findings suggest that the size of an enterprise has a notable influence on its level of indebtedness. The positive relationship between the size of an enterprise and the degree of its indebtedness in the conditions of companies operating in Poland was pointed out by Jaworski et al. [168], Jedrzejczak-Gas [169], Kedzior [170], and many others.
Even in Hungary, many international studies indicate that leverage is related to firm size. Due to tax-deductible interest payments, debt financing is substantially less expensive and is therefore preferred, especially for large enterprises. Generally, a company must generate sufficient cash flows to pay interest payments on debt financing. Indeed, in this context, large enterprises are diversifying their sources of financing more. Although firm size can affect the probability of failure, small and medium-sized enterprises are more likely to fail than large ones. Size may also be a proxy for enterprise asset volatility because small businesses are more likely to be growing enterprises in rapidly developing and hence intrinsically volatile industries. Larger firms are likely to have less information asymmetry and have greater access to debt markets with lower borrowing costs. Fenyves et al. [171] explored the search for a statistically significant relationship between firm size and level of debt in Hungary. The authors concluded that the overall association may be primarily influenced by the type of debt. When debt is divided into short-term and long-term debt, the authors found a positive link between firm size and short-term debt but a negative relationship between firm size and long-term debt. Ulbert et al. [172] and Hernadi and Ormos [173] also agree with these results in Hungarian conditions.
Table 10 summarizes the Kruskal–Wallis test results for statistically significant differences in debt ratios related to the legal form of the enterprise. The null hypothesis of the same median values is rejected for nine debt indicators in Slovakia and the Czech Republic, eight debt ratios in Poland, and only five debt indicators in Hungary.
In the next step, a post hoc analysis was performed, and its results revealed which debt ratios had the most statistically significant differences based on the legal form of the enterprise. The following tables (Table 11, Table 12, Table 13 and Table 14) summarize the results of the pairwise comparison of the legal forms of the enterprises. In Slovakia, the Czech Republic, and Poland, there are statistically significant differences primarily between public limited companies and partnerships, private limited companies and partnerships, and public limited companies and private limited companies. It is clear from the results of the pairwise comparison that there are statistically significant differences in Hungary, especially between private limited companies and partnerships.
The choice of the legal form of an enterprise has a significant impact not only on performance but also on access to debt financing. Because the legal form is clearly observable from a suffix within the business name in many countries, this provides outside lenders with a low-cost instrument for distinguishing low-quality from high-quality borrowers when screening costs are appropriately high [174]. The most common form of business entity is the private limited company, which is privately owned. Private companies may have shareholders and issue stock, but their shares do not trade on public markets and are not issued through an initial public offering [175]. The high costs of conducting an initial public offering are one of the reasons why many smaller firms remain private. However, public companies are also required to provide more information and must release financial statements and other files on a regular basis [176]. The company’s finances are distinct from the owners’ and are taxed separately. All earnings belong to the enterprise, which also pays taxes on them, distributes some as dividends to shareholders, and keeps the remainder as working capital [177]. According to Khan et al. [178], the shares of private companies are less liquid, and determining their values is more challenging. In addition, a public limited company can obtain equity loan financing from existing and potential investors, making it easier for the firm to access debt financing than for a private limited company. According to Rashid [179], the main advantage of establishing a public limited company is that it provides the opportunity to raise capital by issuing public shares. It is more likely to have better access to money to invest in the firm when compared to a private limited company [180]. The modern corporate landscape is dominated by the corporate legal structure that arises from the legal fragmentation of firms into multiple business entities [181]. Debt financing is likely the most significant external source of funding for enterprises. The ability to obtain debt financing has also been related to higher earnings and employment, as well as a longer survival time [182]. Furthermore, unlike equity financing, it does not require giving up ownership control [183] and can be less expensive after tax [184]. According to Valaskova et al. [96], the legal form of an enterprise significantly influences decisions concerning the debt financing of its activities and may be regarded as another critical determinant of indebtedness. In Slovakia, starting a business is simple if the appropriate legal form of firm is chosen, and one of the most common business structures is the private limited company [185]. According to Lukacka [186], credit conditions and access to financing for private limited companies in Slovakia have improved in recent years, as evidenced not only by an increase in the volume of existing and new bank loans but also by a decrease in the average interest rate. Financial instruments developed to support firms throughout the COVID-19 pandemic also played a crucial role in keeping the number of non-performing loans low. According to published data, the volume of unpaid business loans has been increasing since 2013. According to Kristofik and Slampiakova [187], private limited companies and public limited companies operating in Slovakia primarily choose debt financing. On the contrary, companies with the legal form of a partnership or other legal forms have capital structures composed primarily of equity financing.
In the Czech Republic, the private limited company, which may be started by either a natural person or a legal person, is the most frequent type of entrepreneurship. Generally, the private limited company form is primarily used by small and medium-sized enterprises. In the case of the Czech Republic, Divila [188] points out that a private limited company can incur a number of debts, including those incurred as a result of entering into a contract. In most cases, members of a private limited company cannot be legally held liable for a breach of contract. On the contrary, a public limited company may raise funds by selling public shares, making it easier to raise capital than in the case of a private limited corporation [189]. The preference of debt financing over equity financing is typical for private limited companies, and this research paper result is in accordance with many other authors [190]. Even in the Czech Republic, when checking the credit reliability of a firm, potential providers are primarily interested in compliance with the basic financing rules. In principle, the firm is not required to follow the specific financing rules, but the credit providers must have faith in the firm’s ability to pay corporate debts. A lower level of indebtedness and timely financing improve the assessment of credit reliability and give the company a chance to obtain very favorable loans [191]. On the contrary, a lower level of indebtedness, primarily associated with equity financing, is also largely preferred in partnerships.
The problem of ownership structure and its impact on the financial condition of enterprises has also been studied in Poland, where the most common type of legal form is a private limited company. Capital increases, shareholder loans, and transfer pricing laws are the most commonly used methods of inter-company financing for business activities [192]. Almost every firm, including private limited companies, requires additional financial support at some point. Private limited company loans may be considered by businesses for several reasons, from short-term cash flow concerns to funding significant growth. In their study, Miszczynska and Miszczynski [193] focused on comparing the financial performance of public hospitals according to ownership and size. According to their findings, many public hospitals are in debt, and their ownership structure does not affect their financial condition. The study did not, however, support a significant relationship between the ownership or size of the hospitals and their financial performance. Kubiak [194], Allen et al. [195], and many others have also discussed the relationship between ownership structure and financial performance in Poland.
Even scientific research papers published in Hungary do not point to the legal form as a significant determinant of the indebtedness of firms operating in the market [196,197], which may be mainly due to the fact that there are no very significant statistical differences between the legal forms of enterprises; this statement is also in line with our paper. The authors pointed to differences among the five examined debt indicators, especially between private limited companies and partnerships. Similar to the other Visegrad Group countries, debt financing is significantly preferred in private limited companies, whereas partnerships primarily use equity financing to fund their business activities.
Finally, the results achieved in this study can be summarized as follows: while it is obvious from the results of the research paper that there are statistically significant differences between all monitored debt ratios with regard to firm size, with the exception of the total indebtedness ratio in Slovakia and Poland and the non-current indebtedness ratio in the conditions of Hungary, financial leverage appears to be positively related to firm size. In general, a firm’s legal form has a considerable influence not only on corporate performance but also on its ability to obtain debt financing. Statistically significant differences can be observed between all the monitored indebtedness indicators, except for the interest burden ratio in Slovakia and the debt-to-cash flow ratio in the Czech Republic. In Poland, a statistically significant difference does not exist between the total indebtedness ratio and the financial independence ratio, and in Hungary, the exceptions to the existence of statistical differences are primarily the total indebtedness ratio, the non-current indebtedness ratio, the interest coverage ratio, the interest burden ratio, and the debt-to-cash flow ratio.

5. Conclusions

Every firm must be aware of its financial situation in order to compete in the market. Financial analysis is used to determine financial performance, and its main objective is to examine not only the strengths and weaknesses of an enterprise but also the level of its financial health. The analysis uses ratios, which provide more detailed information about the financial health of an enterprise and are used to determine the level of indebtedness or the reason for its financial difficulties. The primary use of corporate debt to finance a firm’s business operations is the focus of a comprehensive debt analysis. In the real economy, it is not possible for large companies to finance all of their assets with equity or only with debt. The main objective of debt analysis is to determine the ideal combination of equity and debt financing. However, for the overall assessment of the capital structure, the most important thing is to choose an adequate ratio between owned sources of financing and foreign sources of financing, which is a fundamental condition for the high-quality development of a firm and its healthy financial development. There have been several studies conducted on debt financing preferences; however, the results are often contradictory. Debt financing is an attractive alternative for enterprises to finance their activities, but there is a risk of potential distress if the balance sheet is weaker. Furthermore, managers should carefully consider the level of corporate debt, as increased leverage might affect earnings, which mostly reflect actual corporate performance.
It has been proven that corporate debt is influenced by several determinants that affect the composition of the corporate capital structure in various ways. This paper used analysis of variance to examine the impacts of the firm size and legal form of enterprises operating in the Visegrad Group countries on the debt ratio itself in the period 2016–2021 and to determine if there were statistically significant differences in the individual indebtedness ratios depending on the firm sizes (small, medium-sized, large, and very large enterprises) and legal forms (private limited enterprise, public limited enterprise, partnerships, and other legal forms) or if the individual values of the indicators differed significantly. The Kruskal–Wallis test confirmed the effect of firm size on debt ratios, even though there are statistically significant differences in the calculated indebtedness indicators concerning the size of the enterprises operating in the Visegrad Group countries. Due to the statistically significant differences between several indebtedness ratios, post hoc analysis results identified that the most statistically significant differences in individual debt ratios exist between small and medium-sized enterprises, small and large enterprises, and medium-sized and very large enterprises. One of the most significant factors affecting capital structure is firm size. It should be emphasized, therefore, that there is no theory that would contribute to predicting the effect of a company’s size on its leverage. The Kruskal–Wallis test also revealed statistically significant differences in debt ratio values related to the legal forms of the firms operating in Visegrad Group countries, and a post hoc analysis pointed to the differences, especially those between public limited companies and partnerships, private limited companies and partnerships, and public limited companies and private limited companies. Many authors argue in their studies that firm size and legal form are the most important determinants of corporate debt, and this paper confirmed those findings. Thus, the main practical implication of the study is the finding, that also in the Visegrad Group, a cultural and political alliance of four Central European countries, the firm size and legal form of enterprises do play a significant role in terms of corporate indebtedness level, which is an important measure in conditions of debt financing. A significant level of corporate indebtedness not only jeopardizes a firm’s financial stability but also affects the performance of the enterprise itself, which is the most important theoretical conclusion of the study. Despite the contribution of this paper to the existing literature, the following limitation needs to be emphasized. The scope of the paper (i.e., the focus only on the cultural and political alliances of four Central European countries) limits the extent of the generalizability of the findings. Future research should examine this phenomenon in more alliance countries (using panel data analysis) or over a longer time horizon than the one set for this research to determine whether there will be differences in the findings and allow for greater generalization and applicability.

Author Contributions

Conceptualization D.G. and K.V.; methodology, K.V. and D.G.; software, T.K.; validation, D.G., K.V. and M.K.; formal analysis, M.K. and K.V.; investigation, T.K. and D.G.; resources, T.K.; data curation, M.K.; writing—original draft preparation, D.G. and K.V.; writing—review and editing, D.G. and K.V.; visualization, D.G.; supervision, K.V.; project administration, T.K.; funding acquisition, M.K. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this research paper are available on request from the corresponding authors.

Acknowledgments

This paper is an output of the project NFP313010BWN6 “The implementation framework and business model of the Internet of Things, Industry 4.0 and smart transport”.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Descriptive statistics of analyzed indebtedness ratios (6-year average values).
Table A1. Descriptive statistics of analyzed indebtedness ratios (6-year average values).
Slovakia
Avg.Med.Std. Dev.Min.Max.CV
Total indebtedness ratio0.6230.6290.2260.0441.4990.363
Self-financing ratio0.3670.3450.194−0.3831.0770.529
Current indebtedness ratio0.4690.4520.230−0.0101.3930.490
Non-current indebtedness ratio0.1540.1090.149−0.0090.6660.968
Debt-to-equity ratio2.5461.8822.226−5.00610.3940.874
Interest coverage ratio14.3518.26318.488−48.44581.0091.288
Interest burden ratio0.1260.1050.140−0.4040.6411.111
Debt-to-cash flow ratio7.3315.9356.003−12.01627.0670.819
Equity leverage ratio3.8533.0832.514−4.18712.0620.652
Financial independence ratio0.8290.6160.677−0.9213.3290.817
Czech Republic
avg.med.std. dev.min.max.CV
Total indebtedness ratio0.4960.4930.2080.0571.3790.419
Self-financing ratio0.5040.5020.220−0.3091.4790.437
Current indebtedness ratio0.6490.3130.2150.0021.2960.331
Non-current indebtedness ratio0.1590.1180.147−0.0220.6810.925
Debt-to-equity ratio1.3180.9921.024−1.7604.9290.777
Interest coverage ratio24.65912.89730.603−73.830137.3451.241
Interest burden ratio0.1070.0820.112−0.2810.4841.047
Debt-to-cash flow ratio5.9304.9254.840−10.44522.6190.816
Equity leverage ratio2.4022.0401.150−1.0456.2510.479
Financial independence ratio1.4361.1271.064−0.2145.0430.741
Poland
avg.med.std. dev.min.max.CV
Total indebtedness ratio0.5160.5120.1890.0461.1340.366
Self-financing ratio0.4740.4650.185−0.1371.1160.390
Current indebtedness ratio0.3710.3510.1890.0011.1090.509
Non-current indebtedness ratio0.1450.1130.1210.0000.5840.834
Debt-to-equity ratio1.4321.1151.031−2.0215.1430.720
Interest coverage ratio21.10312.64924.098−56.478101.9481.142
Interest burden ratio0.1090.0880.102−0.2820.4860.936
Debt-to-cash flow ratio6.2265.1415.139−10.94623.1180.825
Equity leverage ratio2.6182.2221.277−2.0897.5660.488
Financial independence ratio1.2470.9900.880−0.1324.5160.706
Hungary
avg.med.std. dev.min.max.CV
Total indebtedness ratio0.5330.5210.1880.0881.3440.353
Self-financing ratio0.4660.4590.170−0.0411.0740.365
Current indebtedness ratio0.4030.3720.1870.0231.2700.464
Non-current indebtedness ratio0.1300.0980.1140.0000.5020.877
Debt-to-equity ratio1.4601.1900.955−0.4764.9600.654
Interest coverage ratio27.15916.91928.785−50.024118.5501.060
Interest burden ratio0.0870.0710.089−0.2330.3851.023
Debt-to-cash flow ratio6.2015.2554.421−8.81620.7280.713
Equity leverage ratio2.6022.2731.1220.5236.4640.431
Financial independence ratio1.1140.9470.6620.0293.0820.594
Source: own elaboration.

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Table 1. Firm-specific features of the sample.
Table 1. Firm-specific features of the sample.
COUNTRYSKCZPLHU
FIRM SIZE
Small enterprise35.35%9.84%11.94%4.18%
Medium-sized enterprise54.20%48.52%54.53%48.26%
Large enterprise8.83%31.86%27.14%38.03%
Very large enterprise1.62%9.78%6.39%9.53%
LEGAL FORM AND OWNERSHIP STRUCTURE
Private limited companies87.53%64.15%66.89%97.29%
Public limited companies8.50%29.95%12.57%0.54%
Partnerships3.90%5.41%19.27%2.09%
Other legal form0.07%0.49%1.27%0.08%
FIRM AGE
<106.33%2.77%5.76%2.56%
10–2049.97%27.12%31.32%22.08%
20–3035.83%47.11%38.17%42.68%
30–405.87%19.50%16.83%29.12%
40–501.36%2.64%1.97%0.70%
50–600.23%0.55%0.70%0.62%
>600.41%0.31%5.25%2.25%
ECONOMIC SECTOR (NACE CLASSIFICATION)
A. Agriculture, forestry, and fishing8.52%10.95%3.30%6.51%
B. Mining and quarrying0.26%0.37%0.57%0.46%
C. Manufacturing21.35%34.87%30.59%33.85%
D. Electricity, gas, steam, and air conditioning supply1.62%2.58%2.86%1.01%
E. Water supply; sewerage, waste management, etc.1.12%1.85%5.66%1.55%
F. Construction9.16%7.75%6.83%4.18%
G. Wholesale and retail trade, repair of motor vehicles/motorcycles26.55%20.73%27.68%28.35%
H. Transportation and storage8.93%5.72%5.22%7.75%
I. Accommodation and food service activities2.05%0.37%1.56%1.32%
J. Information and communication2.33%2.64%2.41%2.79%
K. Financial and insurance activities0.15%0.06%0.68%0.70%
L. Real estate activities4.79%3.51%4.44%4.03%
M. Professional, scientific, and service activities6.70%4.92%2.70%3.02%
N. Administrative and support service activities3.94%1.48%1.79%2.79%
O. Public administration and defense; compulsory social security0.03%0.00%0.10%0.08%
P. Education0.13%0.25%0.47%0.08%
Q. Human health and social work activities1.42%1.35%2.52%0.46%
R. Arts, entertainment, and recreation0.51%0.25%0.39%0.62%
S. Other service activities0.43%0.37%0.23%0.46%
Total100%100%100%100%
Source: own elaboration.
Table 2. Descriptive statistics of the input data of analyzed indebtedness ratios (6-year average values).
Table 2. Descriptive statistics of the input data of analyzed indebtedness ratios (6-year average values).
Slovakia
avg.*med.*std. dev.*min.*max.*CV
TOAS6129.7461210.14257,011.987213.9843642,422.1679.301
SHFD2366.946378.85725,916.224−19,016.3621672,280.00010.949
NCLI1345.800123.96624,524.139−7.7681761,986.66718.223
CULI2181.142504.09511,287.856−1.8574739,759.9785.175
EBIT281.15860.4552533.427−10,576.746109,545.1679.011
EAT187.21035.3581922.727−12,091.12785,627.50010.270
DEPR332.52469.5012374.216−646.840104,690.8007.140
INTE35.1648.697161.885−0.1474909.2214.604
Czech Republic
avg.*med.*std. dev.*min.*max.*CV
TOAS54,198.2235135.853759,814.853225.44129,558,304.54914.019
SHFD23,949.3392577.397258,671.160−760.9399103,585.44910.801
NCLI12,247.723476.811247,499.895−39.2269776,086.02720.208
CULI17,715.8331344.139268,870.4495.76210,678.633.07415.177
EBIT2878.458304.97923,992.221−7006.405748,223.7568.335
EAT2149.851215.80916,363.877−9223.372471,897.9907.612
DEPR2652.034239.58038,793.916−460.9801510,900.84914.628
INTE407.69627.2796661.265−65.484258,412.72416.339
Poland
avg.*med.*std. dev.*min.*max.*CV
TOAS52,958.0043978.320547,171.953222.77317,579,560.91010.332
SHFD25,905.1171770.963297,996.581−2071.82310,327,818.63011.503
NCLI11,441.559434.297125,559.6550.0004321,778.87210.974
CULI15,138.3251285.880128,725.4603.0824578,111.4048.503
EBIT3582.865262.77543,858.707−38,664.6271824,420.90712.241
EAT2375.954191.63029,728.460−38,049.5521374,400.28312.512
DEPR2777.178145.43633,560.1710.3701224,737.43512.084
INTE387.29526.8153706.1940.3469223.3729.569
Hungary
avg.*med.*std. dev.*min.*max.*CV
TOAS42,920.5827092.801440,821.116237.77214,914,156.42010.271
SHFD19,173.0803045.824209,067.473−291.4727020,953.80810.904
NCLI8002.876644.849107,841.4230.0003679,378.27613.475
CULI15,231.7932410.578126,839.52029.2454213,824.3408.327
EBIT2944.493412.43330,684.805−6183.5971001,354.87310.421
EAT2513.098343.61925,094.547−9043.023804,419.5119.986
DEPR2611.767257.37536,882.1790.9511254,015.17514.122
INTE269.27328.7243466.5780.350108,262.33312.874
Note: TOAS—Total Assets, OCAS—Other Current Assets, DEBT—Debtors, NCLI—Non-Current Liabilities, CULI—Current Liabilities, EBIT—Earnings before Interest and Taxes, SHFD—Shareholders Funds, INTE—Interest Paid; * values are given in thousands of euros. Source: own elaboration.
Table 3. Summarized formulas of indebtedness indicators.
Table 3. Summarized formulas of indebtedness indicators.
RatioAlgorithm
Total indebtedness ratio (TI)Current and non-current liabilities to total assets
Self-financing ratio (SF)Shareholder funds to total assets
Current indebtedness ratio (CI)Current liabilities to total assets
Non-current indebtedness ratio (NCI)Non-current liabilities to total assets
Debt-to-equity ratio (DE)Current and non-current liabilities to shareholders funds
Interest coverage ratio (IC)Earnings before interest and taxes to interests paid
Interest burden ratio (IB)Interests paid to earnings before interest and taxes
Debt-to-cash flow ratio (DCF)Current and non-current liabilities to cash-flow
Equity leverage ratio (EL)Total assets to shareholders funds
Financial independence ratio (FI)Shareholder funds to current and non-current liabilities
Source: Valaskova et al. [96].
Table 4. 6-year average values of indebtedness indicators for enterprises operating in the Visegrad Group countries.
Table 4. 6-year average values of indebtedness indicators for enterprises operating in the Visegrad Group countries.
RatioSKCZPLHU
Total indebtedness ratio0.6230.4960.5160.533
Self-financing ratio0.3670.5040.4740.466
Current indebtedness ratio0.4690.6490.3710.403
Non-current indebtedness ratio0.1540.1590.1450.130
Debt-to-equity ratio2.5461.3181.4321.460
Interest coverage ratio14.35124.65921.10327.159
Interest burden ratio0.1260.1070.1090.087
Debt-to-cash flow ratio7.3315.9306.2266.201
Equity leverage ratio3.8532.4022.6182.602
Financial independence ratio0.8291.4361.2471.114
Source: own elaboration.
Table 5. The output of the Kruskal–Wallis test concerning firm size.
Table 5. The output of the Kruskal–Wallis test concerning firm size.
Slovakia
TISFCINCIDE
Kruskal–Wallis H3.04532.19321.92310.72613.247
Asymp. Sig.0.3850.0000.0000.0130.004
ICIBDCFELFI
Kruskal–Wallis H196.13529.61435.9548.51117.882
Asymp. Sig.0.0000.0000.0000.0000.000
Czech Republic
TISFCINCIDE
Kruskal–Wallis H21.54822.380100.65990.19826.805
Asymp. Sig.0.0000.0000.0000.0000.000
ICIBDCFELFI
Kruskal–Wallis H59.17815.89433.97521.83933.532
Asymp. Sig.0.0000.0010.0000.0000.000
Poland
TISFCINCIDE
Kruskal-Wallis H26.42642.640123.44784.90132.291
Asymp. Sig.0.0000.0000.0000.0000.000
ICIBDCFELFI
Kruskal–Wallis H95.56426.72230.88051.36639.911
Asymp. Sig.0.0000.0000.0000.0000.000
Hungary
TISFCINCIDE
Kruskal–Wallis H39.49679.26734.2001.52870.722
Asymp. Sig.0.0000.0000.0000.6760.000
ICIBDCFELFI
Kruskal–Wallis H25.3598.90113.71692.06366.627
Asymp. Sig.0.0000.0310.0030.0000.000
Source: own elaboration.
Table 6. The output of the pairwise comparison of the size of the Slovak enterprises.
Table 6. The output of the pairwise comparison of the size of the Slovak enterprises.
Slovakia Test
Statistic
Std. ErrorStd. Test StatisticSig.Adj. Sig.
SFLarge–Small380.62384.4704.5060.0000.000
Large–Very large−658.415191.881−3.4310.0010.004
Medium-sized–Small191.05648.5393.9360.0000.000
CISmall–Medium sized−215.98548.539−4.4500.0000.000
NCIMedium-sized–Small133.47448.5392.7500.0060.036
DESmall–Medium-sized−148.46848.539−3.0590.0020.013
IBLarge–Small304.61284.4703.6060.0000.002
Medium sized–Small230.39148.5394.7470.0000.000
ICSmall–Medium-sized−634.84048.539−13.0790.0000.000
Small–Large−685.98984.470−8.1210.0000.000
Small–Very large−989.044180.375−5.4830.0000.000
DCFSmall–Medium-sized−200.57748.539−4.1320.0000.000
Small–Large−426.94484.470−5.0540.0000.000
Small–Very large−503.983180.375−2.7940.0050.031
Medium-sized–Large−226.36781.481−2.7780.0050.033
ELVery large–Medium-sized517.448178.9952.8910.0040.023
Very large–Large701.457191.8813.6560.0000.002
Small–Medium-sized−262.34148.539−5.4050.0000.000
Small–Large−446.35084.470−5.2840.0000.000
FILarge–Small270.09684.4703.1980.0010.008
Medium-sized–Small164.91248.5393.3980.0010.004
Source: own elaboration.
Table 7. The output of the pairwise comparison of the size of the Czech enterprises.
Table 7. The output of the pairwise comparison of the size of the Czech enterprises.
Czech Republic Test
Statistic
Std. ErrorStd. Test StatisticSig.Adj. Sig.
TIMedium-sized–Very large−181.38040.816−4.4440.0000.000
Small–Very large−168.53152.578−3.2050.0010.008
Large–Very large−121.80342.569−2.8610.0040.025
SFVery large–Large134.36442.5693.1560.0020.010
Very large–Small185.99352.5783.5380.0000.002
Very large–Medium-sized186.05340.8164.5580.0000.000
CISmall–Medium-sized−184.81740.710−4.5400.0000.000
Small–Large−330.01442.467−7.7710.0000.000
Small–Very large−440.35652.578−8.3750.0000.000
Medium-sized–Large−145.19726.552−5.4680.0000.000
Medium-sized–Very large−255.53940.816−6.2610.0000.000
NCIVery large–Medium-sized168.61140.8144.1310.0000.000
Very large–Small363.52152.5756.9140.0000.000
Large–Medium-sized158.38326.5515.9650.0000.000
Large–Small353.29342.4658.3200.0000.000
Medium-sized–Small194.91040.7084.7880.0000.000
DEMedium-sized–Very large−206.64640.816−5.0630.0000.000
Small–Very large−181.01552.578−3.4430.0010.003
Large–Very large−146.82242.569−3.4490.0010.003
ICSmall–Medium-sized−213.02040.710−5.2330.0000.000
Small–Large−301.60742.467−7.1020.0000.000
Small–Very large−333.57552.578−6.3440.0000.000
Medium-sized–Large−88.58726.552−3.3360.0010.005
Medium-sized–Very large−120.55540.816−2.9540.0030.019
IBLarge—Small168.77842.4673.9740.0000.000
Medium-sized–Small123.14040.7103.0250.0020.015
DCFMedium-sized–Large−88.22926.552−3.3230.0010.005
Medium-sized–Very large−220.07240.816−5.3920.0000.000
Large–Very large−131.84342.569−3.0970.0020.012
ELMedium-sized–Very large−176.58240.816−4.3260.0000.000
Small–Very large−170.57952.578−3.2440.0010.007
FIVery large–Large156.17042.5693.6690.0000.001
Very large–Medium-sized224.45740.8165.4990.0000.000
Very large–Small229.35552.5784.3620.0000.000
Source: own elaboration.
Table 8. The output of the pairwise comparison of the size of the Polish enterprises.
Table 8. The output of the pairwise comparison of the size of the Polish enterprises.
Poland Test
Statistic
Std. ErrorStd. Test StatisticSig.Adj. Sig.
SFLarge–Medium-sized187.98642.0904.4660.0000.000
Large–Small466.53378.7915.9210.0000.000
Very large–Small377.53787.8204.2990.0000.000
Medium sized–Small278.54774.9253.7180.0000.001
CISmall–Medium-sized−774.78074.925−10.3410.0000.000
Small–Large−813.94578.791−10.3300.0000.000
Small–Very large−887.25087.820−10.1030.0000.000
NCILarge–Very large−202.65562.211−3.2580.0010.007
Large–Small709.28978.7919.0020.0000.000
Medium-sized–Small614.54974.9258.2020.0000.000
Very large–Small506.63487.8205.7690.0000.000
DESmall–Medium-sized−338.87574.925−4.5230.0000.000
Small–Large−381.01878.791−4.8360.0000.000
Small–Very large−486.49287.820−5.5400.0000.000
ICSmall–Very large−516.39287.820−5.8800.0000.000
Small–Medium-sized−599.34874.925−7.9990.0000.000
Small–Large−759.16378.791−9.6350.0000.000
Very large–Large242.77162.2113.9020.0000.001
Medium-sized–Large−159.81542.090−3.7970.0000.001
IBLarge–Small398.58078.7915.0590.0000.000
Medium-sized–Small295.06274.9253.9380.0000.000
Very large–Small261.37687.8202.9760.0030.018
DCFMedium-sized–Very large−302.84457.236−5.2910.0000.000
Large–Very large−195.17862.211−3.1370.0020.010
ELSmall–Medium-sized−313.75774.925−4.1880.0000.000
Small–Very large−409.19387.820−4.6590.0000.000
Small–Large−517.77378.791−6.5710.0000.000
Medium-sized–Large−204.01642.090−4.8470.0000.000
FIVery large–Medium-sized194.73957.2363.4020.0010.004
Very large–Small505.74187.8205.7500.0000.000
Large–Small419.18078.7915.3200.0000.000
Medium-sized–Small311.00374.9254.1510.0000.000
Source: own elaboration.
Table 9. The output of the pairwise comparison of the size of the Hungarian enterprises.
Table 9. The output of the pairwise comparison of the size of the Hungarian enterprises.
Hungary Test
Statistic
Std. ErrorStd. Test StatisticSig.Adj. Sig.
TIMedium-sized–Very large−230.76436.785−6.2730.0000.000
Small–Very large−204.94560.861−3.3670.0010.005
Large–Very large−187.20137.592−4.9800.0000.000
SFVery large–Small215.43360.8613.5400.0000.002
Very large–Medium-sized251.21336.7856.8290.0000.000
Large–Medium-sized163.10922.4997.2500.0000.000
CISmall–Very large−227.64460.861−3.7400.0000.001
Medium-sized–Very large−207.02536.785−5.6280.0000.000
Large–Very large−150.93137.592−4.0150.0000.000
DEMedium-sized–Large−119.86222.499−5.3270.0000.000
Medium-sized–Very large−281.99736.785−7.6660.0000.000
Small–Very large−242.57960.861−3.9860.0000.000
Large–Very large−162.13537.592−4.3130.0000.000
ICSmall–Very large−200.21460.861−3.2900.0010.006
Small–Large−208.82653.452−3.9070.0000.001
Medium-sized–Large−84.10222.499−3.7380.0000.001
IBLarge–Medium-sized63.36422.4992.8160.0050.029
DCFMedium-sized–Large−61.51222.499−2.7340.0060.038
Medium-sized–Very large−113.39936.785−3.0830.0020.012
ELMedium-sized–Large−183.60022.499−8.1600.0000.000
Medium-sized–Very large−254.78336.785−6.9260.0000.000
Small–Large−146.32853.452−2.7380.0060.037
Small–Very large−217.51160.861−3.5740.0000.002
FIVery large–Large160.97937.5924.2820.0000.000
Very large–Small269.03260.8614.4200.0000.000
Very large–Medium-sized273.45536.7857.4340.0000.000
Source: own elaboration.
Table 10. The output of the Kruskal–Wallis test concerning the legal form.
Table 10. The output of the Kruskal–Wallis test concerning the legal form.
Slovakia
TISFCINCIDE
Kruskal–Wallis H82.649114.76371.71511.406122.473
Asymp. Sig.0.0000.0000.0000.0100.000
ICIBDCFELFI
Kruskal–Wallis H94.6302.57822.172117.077109.817
Asymp. Sig.0.0000.4610.0000.0000.000
Czech Republic
TISFCINCIDE
Kruskal–Wallis H34.42532.88957.35310.21449.510
Asymp. Sig.0.0000.0000.0000.0170.000
ICIBDCFELFI
Kruskal-Wallis H17.16012.9772.81336.59037.986
Asymp. Sig.0.0010.0050.4210.0000.000
Poland
TISFCINCIDE
Kruskal–Wallis H6.55111.48717.94330.24710.976
Asymp. Sig.0.0880.0090.0000.0000.012
ICIBDCFELFI
Kruskal–Wallis H110.85426.11585.09912.4168.987
Asymp. Sig.0.0000.0000.0000.0060.059
Hungary
TISFCINCIDE
Kruskal–Wallis H9.0819.0559.3864.97812.197
Asymp. Sig.0.0580.0290.0250.1730.007
ICIBDCFELFI
Kruskal–Wallis H7.5573.0063.8819.80011.128
Asymp. Sig.0.0560.3910.2750.0200.011
Source: own elaboration.
Table 11. The output of the pairwise comparison of the legal forms of the Slovak enterprises.
Table 11. The output of the pairwise comparison of the legal forms of the Slovak enterprises.
Slovakia Test StatisticStd. ErrorStd. Test StatisticSig.Adj. Sig.
TIPartnerships–Public limited enterprise958.377137.2946.9800.0000.000
Partnerships–Private limited enterprise1044.826116.1648.9940.0000.000
SFPrivate limited enterprise–Public limited enterprise−283.21580.667−3.5110.0000.003
Private limited enterprise–Partnerships−1185.354116.164−10.2040.0000.000
Public limited enterprise–Partnerships−902.139137.294−6.5710.0000.000
CIPartnerships–Public limited enterprise722.228137.2945.2600.0000.000
Partnerships–Private limited enterprise835.460116.1648.0530.0000.000
Public limited enterprise–Private limited enterprise213.23280.6672.6430.0080.049
NCIPrivate limited enterprise–Public limited enterprise−256.45480.667−3.1790.0010.009
DEPartnerships–Public limited enterprise993.051137.2947.2330.0000.000
Partnerships–Private limited enterprise1241.726116.16410.6890.0000.000
Public limited enterprise–Private limited enterprise248.67680.6673.0830.0020.012
ICPartnerships–Public limited enterprise764.503137.2945.5680.0000.000
Partnerships–Private limited enterprise1046.338116.1649.0070.0000.000
Public limited enterprise–Private limited enterprise281.83680.6673.4940.0000.003
DCFPartnerships–Public limited enterprise524.743137.2943.8220.0000.001
Private limited enterprise–Public limited enterprise−304.54180.667−3.7750.0000.001
ELPartnerships–Public limited enterprise837.856137.2946.1030.0000.000
Partnerships–Private limited enterprise1172.942116.16410.0970.0000.000
Public limited enterprise–Private limited enterprise335.08680.6674.1540.0000.000
FIPrivate limited enterprise–Partnerships−1191.009116.164−10.2530.0000.000
Public limited enterprise–Partnerships−999.755137.294−7.2820.0000.000
Source: own elaboration.
Table 12. The output of the pairwise comparison of the legal forms of the Czech enterprises.
Table 12. The output of the pairwise comparison of the legal forms of the Czech enterprises.
Czech Republic Test
Statistic
Std.
Error
Std. Test StatisticSig.Adj. Sig.
TIPartnerships–Public limited enterprise185.16054.3873.4050.0010.004
Partnerships–Private limited enterprise267.78952.1215.1380.0000.000
Public limited enterprise–Private limited enterprise82.62925.7693.2070.0010.008
SFPublic limited enterprise–Private limited enterprise−77.12725.769−2.9930.0030.017
Private limited enterprise–Partnerships−274.69252.121−5.2700.0000.000
Public limited enterprise–Partnerships−197.56554.387−3.6330.0000.002
CIPartnerships–Public limited enterprise312.59054.3875.7480.0000.000
Partnerships–Private limited enterprise384.88452.1217.3840.0000.000
Public limited enterprise–Private limited enterprise72.29325.7692.8050.0050.030
NCIPublic limited enterprise–Partnerships−148.81854.384−2.7360.0060.037
DEPartnerships–Public limited enterprise230.13854.3874.2320.0000.000
Partnerships–Private limited enterprise329.92952.1216.3300.0000.000
Public limited enterprise–Private limited enterprise99.79025.7693.8720.0000.001
ICPartnerships–Private limited enterprise178.04952.1213.4160.0010.004
IBPrivate limited enterprise–Partnerships−177.76152.121−3.4110.0010.004
Public limited enterprise–Partnerships−148.66454.387−2.7330.0060.038
ELPartnerships–Public limited enterprise194.95454.3873.5850.0000.002
Partnerships–Private limited enterprise282.97252.1215.4290.0000.000
Public limited enterprise–Private limited enterprise88.01825.7693.4160.0010.004
FIPrivate limited enterprise–Public limited enterprise−86.63725.769−3.3620.0010.005
Private limited enterprise–Partnerships−288.15752.121−5.5290.0000.000
Public limited enterprise–Partnerships−201.52054.387−3.7050.0000.001
Source: own elaboration.
Table 13. The output of the pairwise comparison of the legal forms of the Polish enterprises.
Table 13. The output of the pairwise comparison of the legal forms of the Polish enterprises.
Poland Test
Statistic
Std.
Error
Std. Test StatisticSig.Adj. Sig.
SFPartnerships–Public limited enterprise212.77064.9623.2750.0010.006
CIPublic limited enterprise–Partnerships−262.27764.962−4.0370.0000.000
Private limited enterprise–Partnerships−127.42946.324−2.7510.0060.036
NCIOther legal forms–Public limited enterprise442.483166.6792.6550.0080.048
Partnerships–Private limited enterprise149.41246.3243.2250.0010.008
Partnerships–Public limited enterprise342.27167.9625.2690.0000.000
Public limited enterprise–Private limited enterprise−192.85955.081−3.5010.0000.003
DEPublic limited enterprise–Partnerships−187.19064.962−2.8820.0040.024
ICPublic limited enterprise–Other legal forms−515.783166.679−3.0940.0020.012
Public limited enterprise–Partnerships−573.09264.962−8.8220.0000.000
Private limited enterprise–Partnerships−434.91246.324−9.3890.0000.000
IBPartnerships–Public limited enterprise205.62364.9623.1650.0020.009
Partnerships–Private limited enterprise230.19846.3244.9690.0000.000
DCFOther legal forms–Public limited enterprise478.972166.6792.8740.0040.024
Other legal forms–Private limited enterprise522.073160.3373.2560.0010.007
Partnerships–Public limited enterprise362.95464.9625.5870.0000.000
Partnerships–Private limited enterprise406.05546.3248.7660.0000.000
ELPublic limited enterprise–Partnerships−224.05364.962−3.4490.0010.003
Source: own elaboration.
Table 14. The output of the pairwise comparison of the legal forms of the Hungarian enterprises.
Table 14. The output of the pairwise comparison of the legal forms of the Hungarian enterprises.
Hungary Test
Statistic
Std.
Error
Std. Test StatisticSig.Adj. Sig.
SFPrivate limited enterprise–Partnerships−197.01172.517−2.7170.0070.040
CIPartnerships–Private limited enterprise198.96472.5172.7440.0060.036
DEPartnerships–Private limited enterprise228.49572.5173.1510.0020.010
ELPartnerships–Private limited enterprise211.93472.5172.9230.0030.021
FIPrivate limited enterprise–Partnerships−205.83172.517−2.8380.0050.027
Source: own elaboration.
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Gajdosikova, D.; Valaskova, K.; Kliestik, T.; Kovacova, M. Research on Corporate Indebtedness Determinants: A Case Study of Visegrad Group Countries. Mathematics 2023, 11, 299. https://doi.org/10.3390/math11020299

AMA Style

Gajdosikova D, Valaskova K, Kliestik T, Kovacova M. Research on Corporate Indebtedness Determinants: A Case Study of Visegrad Group Countries. Mathematics. 2023; 11(2):299. https://doi.org/10.3390/math11020299

Chicago/Turabian Style

Gajdosikova, Dominika, Katarina Valaskova, Tomas Kliestik, and Maria Kovacova. 2023. "Research on Corporate Indebtedness Determinants: A Case Study of Visegrad Group Countries" Mathematics 11, no. 2: 299. https://doi.org/10.3390/math11020299

APA Style

Gajdosikova, D., Valaskova, K., Kliestik, T., & Kovacova, M. (2023). Research on Corporate Indebtedness Determinants: A Case Study of Visegrad Group Countries. Mathematics, 11(2), 299. https://doi.org/10.3390/math11020299

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