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Article

The Relationship between Intellectual Capital and Audit Fees

by
Mahmoud Lari Dashtbayaz
*,
Amjed Hameed Mezher
,
Khalid Haitham Khalid Albadr
and
Bashaer Khudhair Abbas Alkafaji
Department of Economics and Administrative Sciences, Ferdowsi University of Mashhad, Mashhad 9177948974, Iran
*
Author to whom correspondence should be addressed.
J. Risk Financial Manag. 2023, 16(2), 93; https://doi.org/10.3390/jrfm16020093
Submission received: 3 December 2022 / Revised: 12 January 2023 / Accepted: 31 January 2023 / Published: 5 February 2023
(This article belongs to the Special Issue Accounting and Auditing during the World Crisis)

Abstract

:
The present study investigates whether intellectual capital (IC) is related to audit fees and financial statement restatements in companies listed on the Iraq Stock Exchange (ISE). The present study is a pioneer investigation of this topic in emerging markets. Using a sample of all listed companies on the ISE from 2014 to 2020, the research hypotheses are tested with multiple regression based on panel data and the fixed-effects model. The results demonstrate that intellectual capital is positively and significantly related to normal and abnormal audit fees. Moreover, findings indicate direct and significant relationships between intellectual capital components and normal and abnormal audit fees. This means investment in IC components is likely to determine the auditors’ evaluation of a given client’s riskiness. Thus, an efficient IC investment level might be considered a key factor that companies are expected to consider. The findings of this study provide valuable implications for users of financial statements, analysts, and policymakers with information regarding IC, risk determinants, and audit fees. Policymakers can improve market efficiency by implementing regulations that foster IC disclosure as a risk-determinant factor.

1. Introduction

Owing to the financial reporting scandals, such as Enron and WorldCom in the U.S., Lernout and Hauspie in Belgium, and Parmalat in Italy, in which auditors also played a role (Vanstraelen and Zou 2020), and the high complexity of transactions, effective auditing must take into account the different structures of organizations, the incentives of the information providers, the occurrences of agency problems, organization size, and the ability or inability of stakeholders and investors to directly access all the information of firms. Because financial statements presented a particular part of the required information for investors, creditors, and other firm users, the need for an independent professional to give credibility to financial reports was felt more than ever, which led to the emergence of the audit profession (Salehi 2020). Moreover, considering the importance of audit services, the factors influencing audit workload must be identified to properly determine audit fees, which has become one of the main concerns of managers, audit clients, and audit firms (Kanakriyah 2020; Kirana and Ramantha 2020; Visvanathan 2017).
Audit fees are the fees paid to the audit firm for all the services provided to the audit client and can be affected by client size, complexity, audit risk, and generally, audit effort and litigation risk (Simunic 1980; Salehi et al. 2022a). Prior research has examined the effects of different factors on audit fees, such as ownership structure (Tee 2018; Shan et al. 2019; Liang et al. 2021), corporate governance and its mechanisms (Salehi et al. 2018a; Al-Najjar 2018), a firm’s intangible assets (Datta et al. 2020; Prabhawa and Nasih 2021), and organizational capital (Habib et al. 2020).
In the present era, there is a trend of global growth and a shift from industrial to knowledge-based economies. Firms attempt to create value and competitive advantage by managing knowledge resources and intangible assets, such as intellectual capital. They are more willing to value work and increase their intellectual assets. Corvino et al. (2019) state that intellectual capital includes an organization’s ability to innovate and introduce new goods and services to the market and build a lasting relationship with customers and suppliers. Increasing a firm’s intellectual capital or intangible assets leads to firm growth. However, it is also associated with an increased complexity of operational assessments, and thus an increase in the auditor’s work pressure and higher risk (Salehi et al. 2022c), leading to greater auditing task complexity and litigation risk (Visvanathan 2017; Salehi et al. 2022b). Assessing intellectual capital requires more time and effort (Simunic 1980; Salehi and Zimon 2021). Intellectual capital comprises human capital, structural capital, and relational capital. The stronger the human capital or the workforce’s expertise, the greater the auditor concentration needed to assess this type of capital, which is directly related to higher audit fees. Furthermore, an organization’s structural capital, such as technology, inventions, databases, etc., increases the level of auditor concentration (Salehi et al. 2020b). Intangible assets, including patents and copyright, can be infringed by others, even unintentionally, and thus, the firm and the auditor may be engaged in protracted litigation (Datta et al. 2020).
Furthermore, firm growth depends on investment in relationships with customers and foreign firms, leading to increased auditor concentration, and consequently, higher audit costs or fees (Lotfi et al. 2022). Therefore, since intellectual capital as an intangible asset affects firm performance (Ramírez et al. 2021), auditors monitor, assess, review, and give credibility to the firm’s information. Thus, it is expected that the valuation of these assets requires more time and greater auditor concentration, which leads to higher audit fees. This is the first study examining intellectual capital’s effect on audit fees. Therefore, the current research seeks to answer whether there is a significant relationship between intellectual capital and audit fees.
The purpose of the empirical findings in any research is to help different stakeholders in different ways, and the present study is no exception. Considering that Iraq’s economy has difficult financial conditions and crises caused by inflation, this research seeks to determine whether intellectual capital in a country similar to Iraq, known as a developing country, can have a relationship with the audit fee. The point discussed in this research is that if the companies use the real potential of their intellectual capital, this process can increase the audit fee. This means that the presence of dynamic and skilled intellectual capital in companies may reduce the challenges in the audit process. Therefore, such companies may face a lower audit risk than other companies, and usually, less effort is needed from the auditors, which decreases the auditors’ fees. In this case, it can be said that because the auditors pay attention to intellectual capital, the research results can act as a guideline to determine the amounts of their audit fees. Hence, this study provides analysts, legal entities, and the firms’ quantitative and qualitative information with valuable insights into intellectual capital and its components and their effects on audit fees.
The current study extends the intellectual capital and auditing literature to some extent. Firstly, this study is among the pioneer investigations conducted in developing countries. As previous studies have primarily focused on markets considering the intellectual capital components as a means of risk element assessment and audit pricing (Duff 2018; Demartini and Trucco 2016), this paper, conducted in the Iraq business environment, may shed more light on risk rectifier elements in the literature. However, a similar study was conducted in Iran (Tarighi et al. 2022), in which the auditing specifications of Iran and Iraq were found to differ significantly. For example, Iranian companies are entirely audited by their domestic national audit institutions, the standards of which are based on national auditing and accounting standards, whereas Iraq has adopted the IFRS, and international auditors, such as Big N instead, audit the listed companies. Therefore, the audit pricing behavior of these two countries fundamentally differs; the international pricing scales are applicable for Iraq, and the authors expect that international audit firms, such as Big N, are likely to evaluate the intellectual capital components differently from Iranian domestic and national auditors. Secondly, Iraq, which was mostly engaged in the ISIS crisis, is also unique regarding intellectual capital components investment and audit pricing behavior. It is also expected that the negative impact of ISIS on Iraq’s economy and the financial market may alter auditors’ estimations of intellectual capital components (Salehi et al. 2023, 2021). This aspect of Iraq may suggest further contributions for academic bodies, practitioners, and policymakers.
The rest of the paper is structured as follows. Section 2 is dedicated to the literature review and hypothesis development. Section 3 contains a methodology and a statistical population. In Section 4, descriptive and empirical findings are reported. Finally, the conclusions and discussion in Section 5.

2. Literature Review and Hypothesis Development

2.1. Variable Definition

2.1.1. Audit Fees

In the present era, due to the development of society and the economy, the crucial topic of the separation of ownership and management, and agency conflict between controlling and non-controlling shareholders, the evaluation of the provided reports by managers to shareholders is one of the most important topics.
The European Commission called on member states to exercise independent oversight of financial reporting in the eighth revised directive (2006).
According to professional auditing standards, auditors must conduct audits to ensure that financial statements are free from material misstatement. Zimmerman and Nagy (2016) state that hiring an independent auditor can indicate that management fulfils its obligations to investors. Audit fees can be considered a cost paid by the client to the auditor for fulfilling these obligations. According to the contract or agreement, audit fees are costs paid to the audit firm or the auditor for their services (Salehi 2020). Identifying and controlling the factors affecting audit fees can help to reduce audit fees; furthermore, by identifying these factors, auditors can price their services properly. Habib et al. (2018) suggest that several factors, such as the required time, services, and workforce for completing the audit process, affect audit fees. Other studies (Ghadhab et al. 2019; Januarti and Wiryaningrum 2018) find that the main factors affecting audit fees are the characteristics of the audit client, such as firm size, risk, and complexity. Habib et al. (2020) suggest that agency problems and intangible assets cause risk and firm complexity.

2.1.2. Intellectual Capital

Today, intellectual capital is considered the primary capital in organizations because it is the basis of innovation and renewal and the driving force of organizational change and creativity. This capital relates to the quality of an individual’s performance, service, or other superior strategies (Alnassafi 2022). Some researchers believe that the economic wealth of organizations comes from intangible assets, such as intellectual capital and proper management (Peces Prieto and Trillo Holgado 2019).
Intellectual capital (IC) includes non-monetary resources or intangible assets, such as innovation, employee training, knowledge, research and development, customer satisfaction, etc. (Salvi et al. 2020; Salehi et al. 2022d). It shows that the firm’s value-creation processes rapidly become essential inputs for investment decisions (Vitolla et al. 2019).
Intellectual capital represents the knowledge and creative and innovative ideas belonging to the institution that help increase its ability to face crises. Therefore, organizations have realized that they should pay more attention to intellectual capital (Ibarra Cisneros et al. 2020).
IC is a crucial pillar forming the foundation of an organization and can guarantee the creation and maintenance of competitive advantages and the achievement of business goals and future benefits (Abdulaali 2018). Since intellectual capital is a valuable tool for companies and can influence many organizational factors, it has attracted more attention from companies, managers, and researchers, which is why organizations care about intellectual capital (Lee and Lin 2019; Dabić et al. 2018). Through IC, firms can rapidly adapt to changes and stay competitive in markets (Abdulaali 2018). The benefits of IC are illustrated by the shift from an industrial economy to a knowledge-based economy in developed countries (Forte et al. 2019). Therefore, developing countries, such as Iraq, must acquire and extend this knowledge to transform their economy. Thus, firms must pay attention to their knowledge and skills to improve performance (Smriti and Das 2018). Such situations have highlighted the value of IC information.
Because traditional financial disclosures cannot capture IC, stakeholders have long requested that firms voluntarily disclose information concerning their intangible assets to enable proper assessment of firm performance and value-creation mechanisms (Salvi et al. 2020). Firms have provided information on their IC through annual, environmental, and corporate social responsibility (CSR) reports and IC statements (Vitolla et al. 2019). Researchers focusing on IC disclosure have such documents (Salvi et al. 2020).
In this respect, while providing for the inclusion of IC information (De Villiers and Sharma 2017), including structural, human, and relational capital, the accounting framework still cannot demonstrate how IC information combines with tangible assets or affects the value creation processes of firms.
According to Amin et al. (2018), IC comprises three main elements, namely, human, structural, and relational capital. Bontis (1998) suggests that human capital consists of the individuals of a firm. Swart (2006) states that human capital is a strategic source of creativity and innovation. Moreover, human capital consists of social competence, professional competence, leadership ability, employee motivation, and experience and expertise gained in a business and over the employees’ careers (Abdulaali 2018).
Structural capital includes non-physical infrastructures (i.e., patents, tools, information systems, databases, technological knowledge, etc.) that a firm has acquired over the years. Structural capital includes knowledge and intangible assets acquired from the processes that are the property of an organization and remain in the organization when employees leave (Bueno et al. 2011). Moreover, structural capital consists of infrastructural assets that provide activities and codified knowledge, such as databases, documents, and intellectual property rights. Bueno et al. (2011) define relational capital as skills embedded in an organization and its individuals. De Pablos (2004) defines relational capital as skills (including individual training and knowledge), attitudes (behavioral factors, such as incentive and leadership characteristics), and intellectual agility (including the ability of the members of the organization to innovate, engage, and adapt to new situations).

2.2. Hypothesis Development

Determining the Relationship between Intellectual Capital and Audit Fees

Financial reporting is a tool that connects different groups in a company with stakeholders (Rahim et al. 2017; Ningsih et al. 2020). Financial reports provide information about the financial statements, quality, and economic conditions of the company so that they can be used for decision-making (Amin and Anwar 2020). Auditing is a systematic method that follows various techniques commonly used to analyze accounting records during the audit process (Muhaimin et al. 2019). The time that can be spent on the audit process depends on the complexity and size of the company, which leads to the determination and receipt of fees by the auditor for audit services according to the type of audit work (Muslim et al. 2020).
One of the most critical topics that usually occupy the minds of business owners and auditors and is always discussed between them is the fee for auditing services. The audit fee includes all the amounts paid to the auditor or the auditing firm for audit services per the contract or agreement with the auditor (Amran et al. 2021). According to Simunic (1980), audit fees are a function of audit hours, and the risk premium the auditor considers due to litigation risk and likely future losses of the client (Kirana and Ramantha 2020) is of great importance to audit clients, audit firms, policymakers, and regulators. Factors leading to litigation and client business risk affect audit fees since they require more auditing effort.
According to the resource-based theory (RBT), firms can achieve a competitive advantage if they have superior resources, which can be tangible and intangible assets (Sari and Astika 2021). The future advantages of intangible assets are measured less often than tangible assets. The effectiveness of intangible assets, such as IC, is not usually presented in the balance sheet and financial statements (Spiceland et al. 2017). This leads to information asymmetry and higher audit risk caused by valuing intellectual capital; thus, auditing efforts increase due to auditor concentration on valuing tangible assets, which results in higher audit fees. Auditing intangible assets pose different challenges than auditing tangible assets, such as property, plants, and equipment. On the one hand, tangible assets require physical verification, which may be time-consuming and costly, while intangible assets do not. On the other hand, the valuation of tangible assets might be easier than intangible assets. Thus, auditors need more time to value intangible assets. Zimmerman and Nagy (2016), Visvanathan (2017), and Akhtaruddin and Ohn (2016) indicate a significant relationship between IC and intangible assets and audit fees. An increase in intangible assets and IC positively affects the acceptable audit risk. Because an audit is “labor-consuming” and conducted by the workforce, the more complex the audit of the client, the higher the need for a workforce with more experience and expertise, leading to higher costs associated with supplying an experienced and expert workforce. Thus, the auditor demands higher fees to meet the associated higher costs.
As valuing intangible assets is more complicated than valuing tangible assets, and because investments in intangible assets are more difficult to verify or liquidate (Sim et al. 2013), they involve higher complexity and audit risk. Therefore, when determining audit fees, auditors consider complexities associated with intangible assets that lead to higher audit effort and litigation risk (Datta et al. 2020). Therefore, looking at international research, we can see that since companies with more effective intellectual capital have better financial performance, they are less likely to engage in earnings management activities, and have lower audit risks (Jaya et al. 2021). Furthermore, auditors receive abnormal fees in addition to normal fees. Abnormal audit costs include abnormal profits and more audit effort. The existence of IC leads to more audit effort and auditor concentration. Consequently, auditors demand higher audit fees in relation to IC. Thus, we expect a significant relationship between IC and audit fees. Studies have investigated the relationship between intangible assets, such as intellectual capital and its components, with risk and audit fees, and can be mentioned as follows. Visvanathan (2017) found that there is a significant relationship between intangible assets and audit fees. Prabhawa and Nasih (2021) suggest that the greater the IC of a firm, the higher the audit fees its auditor requests. Datta et al. (2020) suggest a positive and significant relationship between audit fees and intangible assets. They also show that firms with greater intangible assets are linked to greater audit efforts, and litigation risk for auditors is reflected in higher audit fees. Habib et al. (2020) find a positive and significant relationship between organizational capital and audit fees. Alrashidi et al. (2021) demonstrate that finance providers consider audit and non-audit fees as signals of high-quality audits that increase the creditability of financial statements and positively affect firms’ access to finance. Tarighi et al. (2022) found that companies with high intellectual capital reduce audit risk and fees to a negligible amount. Mohammadzadeh (2020) showed a positive and significant relationship between the company’s audit fee and the ratio of intangible assets, and there is a negative and significant relationship between the audit fee and intellectual capital.
As argued above, an increase in IC investment probably rectifies agency conflicts, as IC is proposed as a tool for generating and applying a corporations’ assets to improve its competitiveness in the market and create value for its owners. The elements of the IC, efficient and effective IC management may enhance the quality and quantity of generated services and goods in the competitive markets, resulting in an ameliorated performance and enhanced value for a firm (De Silva et al. 2014), particularly in competitive markets, depending on the riskiness of managerial behavior (Salehi et al. 2020a). Additionally, since the nature of IC, particularly human capital, is dynamical and changeable, its effectiveness may empower companies to promote their positions over their competitors in the market (Jordão and de Almeida 2017). Therefore, IC efficiency can mitigate agency issues between owners and managers. Additionally, according to the recommendations of auditing literature, auditors typically consider audit risk factors, such as the risk of issuing a going concern opinion, when determining their fees. In addition, Salehi et al. (2019b) reveal audit quality as an important factor in the market that also determines audit fees, besides client characteristics, such as size (Daemigah 2020). Salehi et al. (2020) demonstrate that IC may reduce the observed risk of auditors by enhancing organizational operations. In light of the presented arguments, it is generally expected that further investment in IC within a firm may lead to lower audit risk, and subsequently, lower audit fees through rectified agent–principal agency issues.
To be more precise, previous studies argue that human capital positively contributes to firm development (Tran and Vo 2020) and efficiency and effectiveness (Smriti and Das 2018) through enhanced use of tangible assets, skilled human resources, and knowledge within a company (Schultz 1961). Therefore, enhanced human capital informs auditors that there is a reduced number of agency problems in the client firms and a lower audit risk (Watts and Zimmerman 1990), which in turn requires lower effort and workforce as well as audit fees (Gul et al. 2018). Chao et al. (2020) also believe that human capital, spiritual capital, rules, systems, and norms within the client firms are markedly correlated with audit fees, because these factors are likely to assist companies in managing difficult situations and distress, both of which have been documented as determinants of audit quality and fees (Salehi et al. 2019a).
Alternatively, firms with well-organized operational structures may pay lower audit fees, since they have improved operational processes and performance. In this sense, Mohammadi and Taherkhani (2017) find that organizational capital is linked with cost stickiness, which reveals that influential organizational capital is likely to enhance the processes within firms by managing administrative and operational costs. Salehi et al. (2018b) indicate a significant relationship between administrative, sale, material, labor, and overhead costs and financial reporting. In addition, Martín-de-Castro et al. (2006) discuss that organizational capital provides firms with a competitive advantage in the market. Furthermore, Chen et al. (2012) state that human and organizational capital is critical for organizational commitment. Consequently, it is expected that an increase in organizational capital may lead to a decrease in audit risk through the enhancement of organizational processes and performance (Stoel and Muhanna 2011). Additionally, a lower audit charge is expected by auditors when they are informed of adequate organizational capital in the client firms.
The other component of IC, structural capital, has been identified as a critical factor in firm riskiness. Ahmad et al. (2019) reveal that structural capital is significantly related to firms’ business performance. AlQershi et al. (2021) argue that strategic innovation positively impacts performance, and structural capital moderates their association. Sarwenda (2020) states that structural capital increases the competitive advantage of firms in the market by reducing business risk. They argue that developed structural capital and operational procedures may promote the efficiency and effectiveness of internal controls. Hence, it is probable that structural capital leads to lower audit fees by mitigating agency problems, due to better internal controls and business performance.
Finally, it is argued that companies establishing an effective and strong relationship with their stakeholders, such as their customers, are likely to pay lower audit charges. Krishnan et al. (2019) state that firms with loyal customers pay lower audit fees. Their argument is in accordance with the notion that audit efforts are able to be lowered due to effectiveness in the audit process, particularly in the case of loyal customers. Thi Mai Anh et al. (2019) argue that relational capital may optimize the sharing of information in order to achieve innovation. Namagembe’s (2020) results also suggest that relational capital affects financial performance positively. Liu et al. (2022) argue that intellectual capital improves the financial performance of SMEs, and physical and human capital are the main contributors. In addition, the impact of intellectual capital and its elements on the financial performance of Chinese manufacturing SMEs is different in different types of industries. Specifically, capital-intensive SMEs show a greater impact of IC on financial performance than labor- and technology-intensive SMEs; labor-intensive SMEs have a higher efficiency of physical capital, while technology-intensive SMEs have higher human capital efficiency. The results of Xu and Wang (2018) show that intellectual capital positively impacts financial performance and companies’ sustainable growth. In addition, companies’ performance and sustainable growth are positively related to physical capital, human capital, and relational capital. Relational capital is found to be the most influential factor. Finally, innovative capital captures additional information on structural capital, which negatively affects the performance of Korean manufacturing companies. Xu and Li (2022) identify that intellectual capital can enhance firm performance in China’s manufacturing sector. Overall, earnings are affected by physical capital, human capital, and structural capital, and profitability and productivity are influenced by physical capital, human capital, structural capital, and relational capital. Physical capital is the most influential contributor to firm performance. Xu and Li (2019) also reveal a significant difference in intellectual capital between high-tech and non-high-tech SMEs. The results further indicate a positive relationship between relational capital and the financial performance of high-tech and non-high-tech SMEs. Specifically, intellectual capital is positively associated with firms’ earnings, profitability, and operating efficiency. Additionally, capital efficiency, human capital efficiency, and structural capital efficiency are found to be the most influential value drivers for the performance of two types of SMEs. In contrast, relational capital efficiency possesses less importance. Accordingly, we expect relational capital to reduce audit fees by decreasing firms’ riskiness and increasing business performance. Therefore, the research hypotheses are stated as follows.
H1: 
There is a significant relationship between IC and audit fees.
H2: 
There is a significant relationship between IC and abnormal audit fees.

3. Research Methodology

The statistical population of the present study comprises all the companies listed on the ISE from 2014 to 2020.

3.1. Sampling Method

The final sample is presented in Table 1.

3.2. Data Collection Method and Tools

The data required for testing the research hypotheses were collected from the ISE database and the reports presented by the Iraqi securities commission.

3.3. Data Analysis Method

A multiple linear regression model was used to test the research hypotheses, and descriptive and inferential statistical methods were used to analyze the obtained data. At the inferential level, the F-Limmer test, Hausman test, normality test, and multiple linear regression were used to test the research hypotheses.

3.4. Research Model

The following multiple regression models were used to test the research hypotheses. Model (1) was used to test the first hypothesis, and model (2) was used to test the second hypothesis.
Model (1)
LNAFEE i , t = β 0 + β 1 INCAP i , t + β 2 INVERC i , t + β 3 A   Type i , t + β 4 ARL i , t + β 5 AUDIT   Tenure i , t + β 6 SIZE i , t   + β 7 INTSALES   i , t + β 8 LOSS i , t + β 9 LEV i , t + β 10 ROA i , t + β 11 MTB i , t + β 12 AGE i , t   + β 13 AUDIT   CHANGE i , t + β 14 S P E C i , t + β 15 OPINION i , t + + β 16 Industry i , t + β 17 Year i , t + ε i , t
Model (2)
A B A F E E i , t = β 0 + β 1 INCAP i , t + β 2 INVERC i , t + β 3 A   Type i , t + β 4 ARL i , t + β 5 AUDIT   Tenure i , t + β 6 SIZE i , t + β 7 INTSALES i , t + β 8 LOSS i , t + β 9 LEV i , t + β 10 ROA i , t + β 11 MTB i , t + β 12 AGE i , t   + β 13 AUDIT   CHANGE i , t + β 14 S P E C i , t + β 15 OPINION i , t + + β 16 Industry i , t + β 17 Year i , t + ε i , t
To obtain better results, we tested the research hypotheses with IC components using Models 3 and 4:
Model (3)
LNAFEE i , t = β 0 + β 1 SCE i , t + β 2 HCE i , + β 3 CCE i , t + β 4 INVERC i , t + β 5 A   Type i , t + β 6 ARL i , t + β 7 AUDIT   Tenure i , t   + β 8 SIZE i , t + β 9 INTSALES i , t + β 10 LOSS i , t + β 11 LEV i , t + β 12 ROA i , t + β 13 MTB i , t + β 14 AGE i , t   + β 15 AUDIT   CHANGE i , t + β 16 S P E C i , t + β 17 OPINION i , t + + β 18 Industry i , t + β 19 Year i , t + ε i , t
Model (4)
A B A F E E i , t = β 0 + β 1 SCE i , t + β 2 HCE i , + β 3 CCE i , t + β 4 INVERC i , t + β 5 A   Type i , t + β 6 ARL i , t + β 7 AUDIT   Tenure i , t   + β 8 SIZE i , t + β 9 INTSALES i , t + β 10 LOSS i , t + β 11 LEV i , t + β 12 ROA i , t + β 13 MTB i , t + β 14 AGE i , t   + β 15 AUDIT   CHANGE i , t + β 16 S P E C i , t + β 17 OPINION i , t + + β 18 Industry i , t + β 19 Year i , t + ε i , t

3.5. Research Variables and Measurement Method

3.5.1. Dependent Variable

Audit fees (LNAFEE) were measured through the natural log of audit fees.
Abnormal audit fees (ABAFEE) were measured by the adjusted model of Blankley et al. (2012) as follows.
LNAFEE i , t = β 0 + β 1 SIZE i , t + β 2 CR i , t + β 3 C A _ T A + β 4 A R I N V i , t + β 5 ROA i , t + β 6 LOSS i , t + β 7 LEV i , t + β 8 O P I N I O N i , t + β 9 Industry   i , t + β 10 Year i , t + ε i , t
where CR is the current assets divided by current liabilities and SIZE is the proxy for firm size, measured by the natural logarithm of total assets. The ratio of current assets to total assets is calculated as CA_TA. ARINV is measured by the sum of accounts receivable and inventory divided by total assets. ROA is the net income divided by total assets. LOSS is a dummy variable, if a firm report is lost, it equals 1; otherwise, 0; long-term debt divided by total assets measures LEV. OPINION is a dummy variable that equals 1 if the audit opinion is qualified; otherwise, 0. The industry refers to the category in which a firm is included based on its activity and mass production type according to ISE proposed category. The year is the dummy variable of the year.

3.5.2. Independent Variable

INCAP: This study employed the Value Added Intellectual Coefficient (VAIC) developed by Pulic (2000) and adjusted by Chang (2007) to measure IC. According to Pulic’s model, Value Added (VA) is the difference between the output and the input.
VA = OUT-IN
Added Value = Output − Input
Salary costs are not included in the input due to the active role of employees in the value-creation process. Therefore, employee costs are not considered as costs but as investments.
VA = OP + EC + D + A
Value Added = operating profit + employee cost + depreciation of fixed assets + amortization of intangible assets
Human capital efficiency (HCE):
Chang’s human capital efficiency measurement means how much value-added has been gained for one salary.
HC = IHR
Investment in human resources = human capital
HCE = VA ÷ HC
Human capital efficiency = value-added ÷ human capital
Human capital includes direct salary expenses, indirect salaries, and the salary expenses of sales, marketing, and administration sections.
Structural capital efficiency (SCE):
This coefficient shows the value created by the processes and structures in a firm. What percentage of the firm’s value-added is due to structural capital (Chang 2007)? Pulic states that there is a proportionate inverse relationship between structural capital and human capital; thus, structural capital and structural capital efficiency are calculated as follows:
SC = VA − HC
Structural capital = value-added − human capital
SCE = SC ÷ VA
Structural capital efficiency = structural capital ÷ value-added
Nazari (2010), using the model of Edvinsson and Malone (1997), suggests that structural capital consists of the customer and organizational capital. Therefore, the efficiency of structural capital comprises customer capital efficiency (CCE) and organizational capital efficiency (OCE), which is calculated as follows:
SCE = (CC ÷ VA) + (OC ÷ VA)
Structural capital efficiency = (customer capital ÷ value-added) + (organizational capital ÷ value-added)
Then, the following equations are used to calculate customer and organizational capital.
OC = D&S
Customer capital = marketing and advertising cost
CC = SC − OC
Organizational capital = structural capital − customer capital
CCE = CE ÷ VA
Relational capital efficiency = relational capital ÷ value added
INCAP = HCE + SCE + CCE

3.5.3. Control Variables

LAT is the log of end-of-year total assets; this variable is added since prior studies document that the company’s size is correlated with audit fees (Moradi et al. 2021; Zimon et al. 2021; Daemigah 2020).
ROA is net income divided by total assets (Mohammadzadeh 2020).
LEV is long-term debt divided by total assets, which is used to control the risk of stakeholders and creditors (Zimon et al. 2021).
OPINION equals 1 if the audit opinion is qualified; otherwise, 0.
ARL is between a firm’s fiscal year-end and the audit report date. OPINION and ARL are applied to control the risk of audit reports, which may impact audit fees (Alkebsee et al. 2022).
AGE is the time difference between the current year and the firm’s establishment. It is added since previous findings show that older firms are less risky (Moradi et al. 2021; Zimon et al. 2021).
MTB is the ratio of the market value of equity to the book value; this variable is added to observe the firm economic growth opportunities impacting the future risk of firms (Mohammadzadeh 2020).
Audit tenure equals the years the audit client has hired the auditor.
Audit change equals 1 if the firm’s auditor has changed; otherwise, 0. The audit tenure and change are added in order to observe the potential risk of auditors’ switch (Mohammadzadeh 2020).
SPEC: Habib and Bhuiyan’s (2011) model calculates auditor specialization. This variable was added since prior researchers have documented that specialized auditors are likely to demand greater audit fees (Daemigah 2020)
t h e   s u m   o f   t h e   a s s e t s   o f   a l l   t h e   c l i e n t s   o f   a   g i v e n   a u d i t   f i r m   i n   a   g i v e n   i n d u s t r y t h e   s u m   o f   t h e   a s s e t s   o f   a l l   t h e   a u d i t   c l i e n t s   i n   a   g i v e n   i n d u s t r y
If the value obtained from the above equation is greater than [1/the number of firms × 1.2], the auditor industry specialization is confirmed. Then, the value 1 is allocated to industry-specialist audit firms, and 0 is allocated to other audit firms.
INTSALES is calculated by subtracting the previous year’s sales from the current year’s sales and dividing the difference by the previous year’s sales. This variable was added to control the growth sale opportunity showing the efficiency of firms (Zimon et al. 2021).
ATYPE: If the audit firm is one of the big firms, it equals 1; otherwise, 0. As big auditors require greater fees, we added this variable (Mohammadzadeh 2020).
Industry: The industry refers to the category in which a firm is included based on its activity and mass production type. In this regard, the categories defined in the ISE are used.
Year: The dummy variable of the year. Industry and Year are added to the control for potentially omitted variables of a firm’s specific characteristics, which are not observed by other control variables (Ahmed and Duellman 2007).

4. Data Analysis

4.1. Descriptive Statistics

As shown in Table 2, the lowest mean with a value of −6.43 belongs to ABAFEE, and the greatest mean with a value of 124.09 belongs to MTB. Additionally, INVREC has the smallest standard deviation, with 0.304 and MTB, with a value of 271.096, has the greatest standard deviation. INCAP has the lowest value, equal to −15.870, and MTB has the greatest value, equal to 970.772. Among the model’s variables, audit firm type (ATYPE), the firm’s loss (LOSS), auditor change (AUDIT CHANGE), auditor specialization (SPEC), and audit opinion (OPINION) are qualitative in nature and dummy variables. The information related to these variables is presented in Table 3.
Table 3 contains descriptive statistics of the employed dummy variables. ATYPE’s statistics show that, on average, 0.63 of firms are audited by big N audit firms, in which big auditors audit 147 firm-year observations. Moreover, on average, 0.26 of investigated companies reported a loss in their income statements. On average, 0.38 and 0.71 companies, respectively, changed their auditors and employed the services of specialized auditors. Finally, the OPINION shows that more than 0.63 companies received a modified audit opinion.

4.2. Normality Test

Considering the normality test results reported in Table A1, all the variables except MTB, LNAFEE, and ABAFEE follow a normal distribution. Different methods can be used to normalize these variables, but applying them causes the relationships between the variables to be broken; thus, their coefficients will not be significant. Moreover, the small number of years of observation mean that other normality tests cannot be used. Furthermore, according to the central limit theorem (CLT), regardless of the population’s distribution, if the number of sample observations is more than 30, the selected sample will have an approximately normal distribution. Thus, parametric tests, such as t-test, F-test, and z-test can test the research hypotheses.

4.3. Multicollinearity

Considering the obtained statistics in Table A2, the VIF for all four models’ variables is less than 10, and there is no multicollinearity among the variables of these models. Therefore, multicollinearity does not cause a problem in these regressions.

4.4. The Results of the Integration Test

Considering the integration test results reported in Table A3, the calculated F-statistics for the research Models 1–4 equal 3.49, 3.62, 0.57, 0.58, 3.09, and 3.50, respectively. The null hypothesis suggests that all four models reject the pooled data at 99%. Therefore, the panel data method should estimate the coefficients of models 1, 2, 3, and 4.

4.5. The Results of the Hausman Test

The results of the Hausman test are presented in Table A4. The Hausman test statistics for Models 1, 2, 3, and 4 equal 7.80, 4.84, 9.25, and 6.87. Considering the χ 2 statistics for Models 1, 2, 3, and 4, the null hypothesis suggesting the appropriateness of the random-effects model is not rejected.

4.6. The Correlation Matrix

The correlation matrix shows the correlations between pairs of variables in models, as shown in Table A5. The diagonal elements of this matrix are always equal to 1 because each variable is perfectly correlated. The closer the correlation coefficient is to 1, the stronger the direct correlation between the two variables, and correlation coefficients equal to zero indicate no correlation. The negative correlation coefficients show an inverse correlation.

4.7. Model Estimation and Results Interpretation

4.7.1. The First Model Estimation

Considering Table 4, the intercept of this model equals 9.795, which is significant at 99%. The coefficient of IC equals 0.099. Therefore, if INCAP increases by 1%, LNAFEE increases by 0.099% at 99%.
Among the control variables of the first model, OPINION and INVERC at 99%, ROA at 95%, and TENURE at 90% are the causes of an increase in LNAFEE. In contrast, the variable LOSS is the cause of a decrease in LNAFEE at 99%. Among the years of the research data, 2016 had the greatest mean LNAFEE at a 95% confidence level.
Variables ATYPE, ARL, SIZE, INTSALES, LEV, MTB, AGE, ACHANGE, and SPEC and all the year and industry dummies are insignificant and do not affect the variable LNAFEE.
After estimating the model using the random-effects method, the normality of residuals was tested. According to the obtained results, the calculated p-value for this test equals 0.958. Thus, the residuals of the first model follow a normal distribution. Therefore, parametric tests, such as z-test, t-test, and F-test, could be used.
Considering that the first model is estimated with the robust random-effects method, the four regression assumptions, including no multicollinearity among variables, exogeneity of explanatory variables, homogeneity of variance, and no autocorrelation among residuals, are verified.

Additional Estimations of the First Regression Model

The first model’s additional regressions were estimated, including the panel data fixed-effects regression and the ordinary least squares (OLS) regression.
Table 5 shows that the intercept of this model equals 11.032, which is significant at 99%. The coefficient of INCAP is equal to 0.060. Therefore, if INCAP increases by 1%, LNAFEE increases by 0.060% at 99%.
Among the control variables, TENURE and INVERC at 90% and ROA and OPINION at 99% cause an increase in LNAFEE. In contrast, the variable LOSS causes a decrease in LNAFEE at the 99%
Variables ATYPE, ARL, SIZE, INTSALES, LEV, MTB, AGE, ACHANGE, and SPEC, and all the year and industry dummies are insignificant and do not affect the variable LNAFEE.
As presented in Table 6, the intercept of this model equals 9.896, which is significant at 99%. The coefficient of INCAP is equal to 0.084. Therefore, if INCAP increases by 1%, LNAFEE increases by 0.084% at 99%.
Among the control variables, OPINION, INVERC, ROA, and TENURE cause an increase in LNAFEE at 99%. In contrast, the variable LOSS causes a decrease in LNAFEE at 99%. Among the years of the research data, 2016 had the greatest mean LNAFEE at the 99% confidence level.
Variables ATYPE, ARL, SIZE, INTSALES, LEV, MTB, AGE, ACHANGE, and SPEC, and all the year and industry dummies are insignificant and do not affect the variable LNAFEE.
Then, considering the selected variables, the model specification test was used to check for the omitted variable bias in the model. The results of this test are presented in Table A7.
As presented in Table 6, the F-statistic of Ramsey’s RESET test equals 0.49, smaller than the F-statistic in the Table. Thus, the null hypothesis suggesting that the model has no omitted variables is not rejected.

4.7.2. The Second Model Estimation

The dependent variable of the second model is ABAFEE. The intercept of this model is not significant. The coefficient of INCAP is equal to 0.045. Thus, if INCAP increases by 1%, ABAFEE increases by 0.045% at the 99% confidence level which the results are presented in Table 7.
Among the model’s control variables, ATYPE, OPINION, and INVERC are the causes of an increase in ABAFEE at 99%. In contrast, the variables ACHANGE and MTB are the causes of a decrease in ABAFEE at 99% and 95%, respectively.
Variables SPEC, AGE, SIZE, ROA, TENURE, ARL, LEV, LOSS, SIZE, and INTSALES, and all the year and industry dummies are not significant and do not affect the variable ABAFEE.
After estimating the model with the random-effects method, the normality of the residuals was tested. Based on the obtained results, the p-value equals 0.807; thus, the model’s residuals follow a normal distribution. Therefore, parametric tests such as z-test, t-test, F-test, etc., could be used.
After estimating the model, the homogeneity of residual variances was tested. Considering the results in Table A8, the χ2 statistic equals 5.27, which is greater than the χ2 in Table, and the null hypothesis suggests the homogeneity of variance is rejected at 99%. Thus, the residual variances are heterogeneous.
Considering that the second model is estimated with the robust random-effects method, the four assumptions of regression, including no multicollinearity among variables, exogeneity of explanatory variables, homogeneity of variance, and no autocorrelation among residuals, do not cause a problem.

Additional Estimations of the Second Model Regression

To ensure the obtained results, the additional regressions of the second model, including the panel data fixed-effects regression and the feasible generalized least squares (FGLS) regression, were also estimated.
According to the results presented in Table 8, the intercept of this model equals 0.158, which is not significant. The coefficient of INCAP equals 0.043. Therefore, if INCAP increases by 1%, ABAFEE increases by 0.043% at the 99% confidence level.
Among the model’s control variables, ATYPE, OPINION, and INVERC cause an increase in ABAFEE at 99% and 95%, respectively. In contrast, the variables MTB and ACHANGE cause a decrease in ABAFEE at 99%. Variables SPEC, AGE, SIZE, ROA, TENURE, ARL, LEV, LOSS, SIZE, and INTSALES, and all the year and industry dummies are not significant and do not affect ABAFEE.
Then, due to the heterogeneity of residual variances in the second model, this model is also estimated with the FGLS method, and the results are presented in Table 9.
The intercept of this model is equal to −0.618 and is not significant.
The coefficient of INCAP equals 0.845. Therefore, if INCAP increases by 1%, ABAFEE increases by 0.845% at the 99.
Among the model’s control variables, ATYPE, OPINION, and INVERC are the causes of an increase in ABAFEE at 95% and 99%, whereas the variables MTB and ACHANGE are the causes of a decrease in ABAFEE at 99%. Variables SPEC, AGE, SIZE, ROA, TENURE, ARL, LEV, LOSS, SIZE, and INTSALES, and all the year and industry dummies are not significant and do not affect the variable ABAFEE.
Then, considering the selected variables, the model specification test is used to check for the omitted variable bias in the model. The results of this test are presented in the Table below.
Table A9 shows that the F-statistic of Ramsey’s RESET test equals 0.93, which is less than the F-statistic in the Table. Therefore, the null hypothesis suggesting that the model has no omitted variables is not rejected.

4.7.3. The Third Model Estimation

Table 10 results show that the model’s intercept is 9.946, significant in the 99% confidence level. The coefficient of structural capital efficiency is 0.016, so with a 1% increase in the SCE variable, the auditor’s fee at a 99% confidence level increased by 0.016%. Moreover, with a one percent increase in the variable of HCE, the auditor’s fee at 95% confidence will increase by 0.012% and by a one percent increase in CCE, the auditor’s fee at 99% level will increase by 0.063%.
Among the control variables of the model, the variables of INVERC and ROA at 99% and 95% confidence levels are the factors for an increase in auditing variables. In contrast, the LOSS variable at a 90% confidence level is the reductive factor for LNAFEE.
SPE, INTSALES, ACHANG, AGE, MTB, ATYPE, SIZE, TENURE, ARL, LEV, and OPINION are dummy industry variables; dummy variables are not significant and do not affect LNAFEE.
After estimating the model by the random effects method, the normality of the disruptive component has also been assessed. According to the results, the obtained probability level for the test is 0.845, so model residuals enjoy normal distribution, and we can utilize the conventional tests of Z, t, and F.
After estimating the model, the heterogeneity variance of disruptive components is assessed. Given the obtained results in Table A10, the chi-square is 3.44, higher than the same value in the Table, so the null hypothesis concerning variance homogeneity at 99% of confidence is rejected, and the disruptive components of the variance model are heterogeneous.
Since the third model is estimated as robust using the random effects method, the obtained results from four classic regression assumptions, including collinearity among variables, exogeneity of descriptive variables, homogeneity variance and existence of heterogeneity variance, and serial autocorrelation.

Additional Estimations of Third Model Regression

Given the results in Table 11, the model’s intercept is 10.959, significant at 99%. The coefficient of structural capital efficiency is 0.012, so with a 1% increase in the SCE variable, the auditor’s fee at a 99% confidence level increases by 0.012%. Moreover, by a one percent increase in the variable of HCE, the auditor’s fee at 95% increases by 0.013%, and by a one percent increase in CCE, the auditor’s fee at 99% increases by 0.045%.
Among the control variables of the model, the variables of INVERC and ROA at 99% and 90% confidence levels are the factors for an increase in auditing variables. In contrast, the LOSS variable at a 99% confidence level is the reductive factor for LNAFEE. Among the years of the study, 2016, at 99%, had a mean audit fee larger than other years.
SPEC, INTSALES, ACHANG, AGE, MTB, ATYPE, SIZE, TENURE, ARL, LEV, and OPINION are dummy industry variables; dummy variables are insignificant and do not affect LNAFEE.
Next, due to heterogeneity variance in the first model, the model is also estimated using the FGLS method; the results are reported in Table 12. The model intercept is 10.196, significant with a 99% level. The coefficient of structural capital efficiency is 0.234, so with a 1% increase in the SCE variable, the auditor’s fee at a 95% confidence level increases by 0.234%. Moreover, with a one percent increase in the variable of HCE and CCE, the auditor’s fee at 99% of confidence increases by 0.001% and 0.062%, respectively.
Among the control variables of the model, the variables of INVERC and ROA at 99% and 95% confidence levels are the factors for an increase in auditing variables. In contrast, the LOSS variable at a 99% confidence level is the reductive factor for LNAFEE.
SPEC, INTSALES, ACHANG, AGE, MTB, ATYPE, SIZE, TENURE, ARL, LEV, and OPINION are dummy industry variables; dummy variables are insignificant and do not affect LNAFEE.
The model specification test is used to assess omitted variables in the model and the main results regarding the selected variables. Table A11 displays the results.
As seen in the Table, the F statistic of the Ramsey-Reset test is 1.53, which is smaller than the same value in the Table, so the null hypothesis concerning the absence of omitted variables in Table 12 is not rejected.

4.7.4. The Fourth Model Estimation

The dependent variable of the fourth model is ABAFEE. According to Table 13, the intercept of this model is equal to 0.560, which is not significant. The coefficient of SCE equals 0.062. Thus, if SCE increases by 1%, ABAFEE increases by 0.062% at the 99% confidence level. Additionally, if HCE and CCE increase by 1%, at the 95% confidence level, ABAFEE increases by 0.051% and 0.077%, respectively.
Among the control variables of the model, variables INVERC, ATYPE, OPINION, and LEV are the causes of an increase in ABAFEE at 99%, 95%, 99%, and 95%, respectively. In contrast, the variable MTB is the cause of a decrease in ABAFEE at the 99% confidence level.
Variables INTSALES, SPEC, ACHANGE, AGE, SIZE, ROA, LOSS, TENURE, and ARL, and all the year and industry dummies significantly do not affect the variable ABAFEE.
After estimating the model with the random-effects method, the normality of the model’s residuals is tested. Based on the obtained results, the p-value for this test equals 0.902. Thus, the residuals of the model follow a normal distribution. Therefore, parametric tests such as z-test, t-test, F-test, etc., can be used.
After estimating the model, the homogeneity of residual variances is tested. Based on the obtained results in Table A12, the χ2 statistic equals 12/42, which is greater than the χ2 in the table. The null hypothesis suggests the homogeneity of variance is rejected at 99%. Thus, the residual variances are heterogeneous.
Considering that the fourth model is estimated with the robust random-effects method, the four regression assumptions include no multicollinearity among variables, exogeneity of explanatory variables, homogeneity of variance, and no autocorrelation among residuals, which do not cause a problem.

Additional Estimations of the Fourth Regression Model

In addition to the panel data random-effects regression, the fourth model’s additional regressions, including the panel data fixed-effects regression and feasible generalized least squares regression (FGLS), are estimated.
According to Table 14, the intercept of this model equals 0.222, which is not significant. The coefficient of SCE is equal to 0.013. Therefore, if SCE increases by 1%, ABAFEE increases by 0.013% at the 95% confidence level. Additionally, if HCE and CCE increase by 1%, ABAFEE increases by 0.084% and 0.023% at the 99% confidence level.
Among the control variables of the model, variables INVERC, ATYPE, OPINION, and LOSS are the causes of an increase in ABAFEE at the 90%, 95%, 99%, and 99% confidence levels, respectively. In contrast, the variable MTB is the cause of a decrease in ABAFEE at the 99% confidence level.
Variables INTSALES, SPEC, ACHANGE, AGE, SIZE, ROA, LEV, TENURE, and ARL, and all the year and industry dummies are insignificant and do not affect the variable ABAFEE. Then, due to the heterogeneity of variance in the fourth model, this model is also estimated with the FGLS method.
As shown in Table 15, the intercept of this model equals 10.885, which is not significant. The coefficient of SCE is equal to 0.072. Thus, if SCE increases by 1%, ABAFEE increases by 0.072% at 99%. Additionally, if HCE and CCE increase by 1%, ABAFEE increases by 0.052% and 0.042%, respectively, at the 99% confidence level.
Among the control variables of the model, the variable INVERC at the 95% confidence level and variables ATYPE and LOSS at the 99% confidence level cause an increase in ABAFEE, whereas the variables MTB at the 90% confidence level and OPINION at the 99% confidence level cause a decrease in ABAFEE.
Variables INTSALES, SPEC, ACHANGE, AGE, SIZE, ROA, LEV, TENURE, and ARL, and all the year and industry dummies are insignificant and do not affect the variable ABAFEE.
Then, considering the selected variables, the model specification test is used to test the existence of omitted-variable bias in the model. The results of this test are presented in Table A13.
According to the results presented in Table A13, the F-statistic of Ramsey’s RESET test equals 0.88, which is less than the F-statistic in the Table. Therefore, the null hypothesis suggesting that the model has no omitted variables is not rejected.

5. Discussion

The present study investigates the relationships between intellectual, human, and structural capital efficiency and normal and abnormal audit fees in the companies listed on the ISE.
The study results indicate that intellectual, human, relational, and structural capital is significantly and positively associated with audit fees. That is, the greater the IC and its components, the higher the audit fees because the existence of intangible assets increases audit risk. Consequently, audit fees increase, which is consistent with the results of the studies by Zimmerman and Nagy (2016), Visvanathan (2017), Akhtaruddin and Ohn (2016), and Prabhawa and Nasih (2021), suggesting that the greater the IC of a firm, the higher the audit fees its auditor requests.
Moreover, rapid technological advances have changed how people communicate and economic activities and have accelerated information processing, updating, and transmission. Undeniably, the competition between companies is the competition between their human capital. Human capital affects the process of preparing financial reports; that is, stronger and better human capital results in fewer human errors, more accurate annual reports, and higher-quality financial reports, and thus, enhanced audit quality, which is one of the reasons for higher audit fees. Therefore, based on the results and theoretical arguments, it can be concluded that human capital leads to an increase in audit fees, consistent with the results of Akhtaruddin and Ohn (2016).
High levels of structural capital increase individuals’ value to the organization’s overall value, leading firms to hire higher-quality auditors to improve their value and position in society and ensure the quality of annual financial reports. It provides the users with timely audited financial statements because firms with greater IC seek to achieve a good position and fulfil their social responsibilities (Dal Mas 2019). As audit fees are determined based on audit quality, higher-quality auditors are expected to request higher fees. Thus, enhanced structural capital leads to higher audit fees, which is indirectly consistent with Chao et al. (2020) and Akhtaruddin and Ohn (2016).
Relational capital can be seen as structural capital and provides a favorable condition for human capital to function. Relational capital is an organization’s key external relationships, and accounting firms mainly consider the characteristics of the relationship with clients. Long-term cooperation improves the communication of both sides in relationships, and auditors need time to increase their client-specific knowledge (Stanley and DeZoort 2007). Auditor tenure might positively affect audit quality.
The results suggest a positive relationship between relational capital and audit fees, which is consistent with the theoretical underpinnings and the results of Wang and Zhu (2018) and Akhtaruddin and Ohn (2016).
Furthermore, the results demonstrate that intellectual, human, relational, and structural capital is significantly and positively related to abnormal audit fees. Greater IC induces higher abnormal audit fees, since identifying and measuring intangible assets requires time and expertise. The study of Datta et al. (2020) shows that firms with greater intangible assets face challenges in the audit process because they are linked to higher audit risk and usually require more audit efforts; thus, there is a strong positive relationship between intangible assets and audit fees.
Vanstraelen and Zou (2020) suggest that the long-term auditor–client relationship is related to a higher likelihood of an unqualified opinion, and thus, lower audit quality. The long-term auditor–client relationship increases audit risk and the possibility of fraud being committed by both sides. Thus, the authors believe that abnormal audit fees increase to cover the illegal activities of the client, which is consistent with the results obtained in this study and the studies of Vanstraelen and Zou (2020) and Stanley and DeZoort (2007), suggesting that the greater relational capital, the higher the abnormal audit fees.
Relational capital can be seen as the continuation of structural capital and enables human capital to perform its function. Therefore, the study results indicating that an increase in human and structural capital leads to higher abnormal audit fees are consistent with the theoretical underpinnings and the findings of Vanstraelen and Zou (2020) and Stanley and DeZoort (2007). Furthermore, these results confirm the findings of Wang and Zhu (2018), suggesting that mandatory audit firm rotation positively affects audit quality and reduces abnormal audit fees.

6. Conclusions

Considering the obtained results, there are several implications for company authorities, stakeholders, auditors, and policymakers. As the stockholders’ agents, firm managers and boards of directors are aware that inefficient investment in IC may intensify the agency problems between them and the principals. Therefore, making a balance between physical capital and IC, as well as adjusting investment among the IC components, may play a significant role in determining firm risk-levels as well as audit pricing behavior. Additionally, for auditors, the findings suggest that an in-depth analysis of firms’ IC components may reveal other aspects of risk, increasing their understanding of a given client and the audit effort needed to compensate for the potential risks. Policymakers can improve market efficiency by designing and implementing regulations that force companies to disclose their IC investments; the IC components are recognized as risk-determinant factors based on the findings of our study.
Researchers face limitations in most research, and the current research is no exception. Considering the large number of control variables in this research, other variables, such as the sensitivity of financial statements, were not used. Future researchers can consider the relevant variables in their research.

7. Further to the Study

Conducting a study comparing concepts between Iraq and Iran, as two neighbouring countries, may contribute to the market efficiency in the Middle East by exploring different aspects of market specifications regarding auditor appointment and pricing behavior. In addition, measuring the cultural and social differences between an Arab nation and a Persian nation may also explain the different volumes of investment in physical capital and IC investment that result in varied financial and social responsibility performances.

Author Contributions

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

Funding

This research received no external funding.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. The test results for the normality of variables.
Table A1. The test results for the normality of variables.
VariableLevelVariableLevel
ROA0.128SCE0.295
MTB0.024HCE0.733
AGE0.109INTSALES0.794
CEE0.123LOSS1
INVERC0.341LEV0.395
ATYPE1ARL0.323
INCAP0.351TENURE0.982
SIZE0.244LNAFEE0.001
ABAFEE0.058SPEC1
ACHANGE1
OPINION0.001
Table A2. The VIF test of the first model.
Table A2. The VIF test of the first model.
VariableVIFVIF/1VariableVIFVIF/1
Y161.060.943ATYPE3.220.31
SPEC3.380.295INVERC2.120.471
AGE1.170.852INCAP1.130.885
SIZE1.90.526MTB1.270.786
LOSS1.310.762ROA1.480.676
OPINION1.250.799ARL1.230.81
TENURE1.650.605ATYPE3.220.31
ACHANGE1.640.772
MEAN VIF1.64
ATYPE3.20.312ROA1.470.679
SPEC3.370.296LEV1.660.601
AGE1.170.853ARL1.210.823
ACHANGE1.290.777MTB1.270.787
SIZE1.90.527INTSALES1.160.859
LOSS1.310.765INCAP1.130.888
OPINION1.240.804INVERC2.120.471
TENURE1.650.605
MEAN VIF1.68
Y161.070.937INTSALES1.190.843
SPEC3.420.292LEV1.660.602
AGE1.260.795ARL1.230.811
HCE1.380.726CCE6.290.158
ACHANGE1.310.763MTB1.310.762
SIZE1.910.524SCE6.240.16
LOSS1.40.713ATYPE3.280.305
OPINION1.270.785INVERC2.130.468
TENURE1.720.528ROA1.480.675
MEAN VIF2.2
OPINION1.270.789INTSALES1.180.486
SPEC3.410.293LEV1.660.602
AGE1.260.795ARL1.210.824
ROA1.470.678CCE6.290.158
ACHANGE1.30.769MTB1.310.763
SIZE1.90.525SCE6.240.16
TENURE1.710.583ATYPE3.250.307
INVERC2.130.468
MEAN VIF2.26
Table A3. The integration test results.
Table A3. The integration test results.
StatisticsProbability Level
The first model3.490
The second model3.620
The third model3.090
The fourth model3.50
Table A4. The Hausmann test results.
Table A4. The Hausmann test results.
Calculated StatisticsProbability Level
The first model7.80.954
The second model4.840.099
The third model9.250.953
The fourth model6.870.986
Table A5. The correlation matrix results of research model variables.
Table A5. The correlation matrix results of research model variables.
L~EEA~EEINCAPSCEHCECCEI~RCA~PEARLT~RESIZEIN~ESLOSSLEVROAMTBAGEA~GESPECO~ON
L~EE1
A~EE0.8561
INCAP0.021−0.0011
SCE0.090.010.7841
HCE−0.055−0.0150.474−0.0231
CCE0.027−0.0270.8050.907−0.0761
I~RC−0.092−0.028−0.183−0.083−0.198−0.0641
A~PE0.1480.1310.0850.0570.1640.048−0.1471
ARL0.040.0320.0540.0270.0110.0280.226−0.0931
T~RE0.092−0.090−0.0500.007−0.072−0.040−0.053−0.259−0.0691
SIZE−0.0620−0.0240.022−0.0490.0150.535−0.1100.0110.0911
IN~ES0.0540.0450.053−0.0250.166−0.042−0.0380.057−0.033−0.038−0.0201
LOSS−0.06−0.000−0.0690.027−0.3000.112−0.016−0.0310.003−0.095−0.109−0.2201
LEV−0.073−0.0460.0350.087−0.0960.0940.533−0.0690.267−0.0440.3490.0010.0571
ROA0.06200.013−0.0230.085−0.0420.125−0.0870.102−0.0920.350.253−0.3280.0561
MTB−0.023−0.036−0.059−0.035−0.1600.022−0.0390.137−0.1520.1640.1190.1270.134−0.0910.0021
AGE−0.022−0.011−0.0760.041−0.2490.0380.02−0.0320.163−0.1590.0650.0150.1320.1870.1050.0471
A~GE0.0960.057−0.0362−0.0160.018−0.0400.1140.1420.052−0.4240.0460.074−0.0900.0810.157−0.0660.0151
SPEC0.1320.1210.1050.0970.0870.101−0.1270.809−0.089−0.331−0.2080.0180.074−0.017−0.1780.051−0.0520.1461
O~ON0.0690.0090.0950.0690.1470.012−0.0760.0760.1170.2040.0930.02−0.0160.1550.055−0.1360.047−0.1040.0391
Table A6. The results of the variance heterogeneity test of the first model.
Table A6. The results of the variance heterogeneity test of the first model.
TestStatistics X2p-Value
Breusch–Pagan test1.9900.158
Table A7. The specification test results of the first model.
Table A7. The specification test results of the first model.
TestStatistics Fp-Value
Ramsey RESET test 10.4900.691
Table A8. The results of the variance heterogeneity test of the second model.
Table A8. The results of the variance heterogeneity test of the second model.
TestStatistics X2p-Value
Breusch–Pagan test5.2700.021
Table A9. The results of the second model specification test.
Table A9. The results of the second model specification test.
TestStatistics Fp-Value
Ramsey RESET test0.9300.429
Table A10. The results of the third model variance heterogeneity test.
Table A10. The results of the third model variance heterogeneity test.
TestStatistics X2p-Value
Breusch–Pagan test3.4400.063
Table A11. The specification test results of the third model.
Table A11. The specification test results of the third model.
TestStatistics Fp-Value
Ramsey RESET test1.5300.208
Table A12. The results of the fourth model variance heterogeneity test.
Table A12. The results of the fourth model variance heterogeneity test.
TestStatistics X2p-Value
Breusch–Pagan test12.4200.000
Table A13. The results of the specification test of the fourth model.
Table A13. The results of the specification test of the fourth model.
TestStatistics Fp-Value
Ramsey RESET test0.8800.450

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Table 1. The number of companies in the statistical community and application of conditions for sample selection.
Table 1. The number of companies in the statistical community and application of conditions for sample selection.
Number of Companies Listed on the Iraqi Stock ExchangeNumber of CompaniesSelected Companies
Number of banking companies39
Number of insurance companies5
Number of investment companies9
Number of service companies106
Number of industrial companies2515
Number of hotel and tourism companies108
Number of agricultural companies66
telecommunication2
Financial delivery company17
Total company samples12335
Table 2. The Descriptive statistics.
Table 2. The Descriptive statistics.
SymbolVariableAverageStandard DeviationMinMax
LNAFEEAudit fees10.791.2166.85116.48
ABAFEEExtraordinary auditor fee−6.431.063.5723.983
INCAPIntellectual capital3.6617.145−15.8727.289
INVERCAuditor complexity0.3540.3040.0051.303
ARLDelay in issuing audit reports4.7660.6061.0986.716
TENUREAudit tenure3.452.729111
SIZEsize of the company0.8661.3470.0310.131
INTSALESThe ratio of total sales to industry sales0.3911.603−0.9996.879
LEVFinancial leverage0.4170.5830.0012.808
ROAReturn on assets0.2430.661−0.694.937
MTBThe ratio of market value to book value124.09271.096−0.569907.772
AGECompany age3313.051273
CCEEfficiency—customer capital0.6373.189−8.10613.685
HCEEfficiency—human capital2.1622.587−2.77810.322
SCEEfficiency—structural capital0.6221.97−3.9718.662
Table 3. The descriptive statistics of dummy variables.
Table 3. The descriptive statistics of dummy variables.
SymbolVariableAverageStandard DeviationNumber of ZeroNumber of One
ATYPEType of auditing firm0.6360.48284147
LOSSCompany losses0.2640.44117061
ACHANGEChange of auditor0.3850.48714289
SPECAuditor specialization0.7140.45266165
OPINIONAuditor’s opinion0.6360.48284147
Table 4. The results of estimating the first model by the stochastic effects method.
Table 4. The results of estimating the first model by the stochastic effects method.
VariableCoefficientDeviation StandardZ Statisticsp-Value
INCAP0.0990.0128.220
INVERC0.0140.0034.130
ATYPE0.3360.3390.990.322
ARL0.180.151.20.231
TENURE0.0140.0071.890.058
SIZE−0.0130.058−0.230.818
INTSALES−0.0050.039−0.150.881
LOSS0.0020−3.310.001
LEV0.0220.146−0.150.879
ROA0.020.0090.520.026
MTB9.6600.040.965
AGE−0.0030.010.130.724
ACHANGE0.0870.1920.040.65
SPEC0.0512720.190.851
OPINION−0.1990.074−2.690.007
Y20160.3330.1322.520.012
CONS9.7951.0049.750
R20.036
Wald Test41.98
Normality of Resid 0.958
Table 5. The results of estimating the first model using the fixed-effects method.
Table 5. The results of estimating the first model using the fixed-effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
INCAP0.060.0193.090.002
INVERC1.020.6121.670.096
ATYPE0.0441.2040.040.097
ARL0.1590.151.060.292
TENURE0.0110.0061.660.097
SIZE−0.0860.09−0.960.34
INTSALES−0.0220.05−0.450.652
LOSS−0.0480.018−2.610.009
LEV0.1070.2350.460.648
ROA0.020.0063.010.003
MTB000.0260.511
AGE−0.0410.0410.0590.322
ACHANGE0.0530.170.0310.755
SPEC0.10.4820.210.836
OPINION−0.1070.0091.180
Y20160.3440.2061.670.096
CONS 11.0320.5336.970
R20.61
Wald Test7.78 0
Table 6. The results of estimating the first model by the OLS method.
Table 6. The results of estimating the first model by the OLS method.
VariableCoefficientDeviation StandardT Statisticsp-Value
INCAP0.0840.0273.120.002
INVERC0.2310.0544.240
ATYPE0.2810.2990.940.348
ARL0.1880.1471.280.202
TENURE0.0810.0263.090.002
SIZE0.010.0820.120.902
INTSALES0.0170.0540.320.751
LOSS−0.0060.002−2.880.004
LEV−0.0690.004−0.390.696
ROA0.0620.00313.720
MTB−0.0010.0060.520.603
AGE−0.0020.0180.530.708
ACHANGE0.1210.3270.160.518
SPEC0.0120.0340.370.709
OPINION0.7190.021−2.690.007
Y160.0260.0683.830
CONS 9.8960.70312.790
Obs231
Table 7. The results of estimating the second model by the stochastic effects method.
Table 7. The results of estimating the second model by the stochastic effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
INCAP0.0450.0057.740
INVERC0.0380.0057.590
ATYPE0.0220.0054.310
ARL0.0940.14160.670.503
TENURE−0.0210.029−0.730.468
SIZE0.0450.0520.860.388
INTSALES0.0290.0320.910.361
LOSS0.0950.2250.420.671
LEV0.1190.0981.210.226
ROA−0.0420.06−0.660.509
MTB−0.0170−2.330.02
AGE−0.0040.009−0.440.658
ACHANGE−0.1110.012−9.150
SPEC−0.120.331−0.360.716
OPINION0.3040.02611.650
CONS−0.4951.016−0.490.626
R20.315
Wald Test33.71 0.003
Normality of Resid0.807 0
Table 8. The results of estimating the second model by the method of fixed effects.
Table 8. The results of estimating the second model by the method of fixed effects.
VariableCoefficientDeviation StandardT Statisticsp-Value
INCAP0.0430.0162.70.007
INVERC0.0520.0232.170.03
ATYPE0.0990.0214.610
ARL0.070.130.540.589
TENURE−0.0310.043−0.710.477
SIZE0.0070.0790.010.992
INTSALES0.0220.0430.50.614
LOSS0.1250.1830.680.497
LEV0.3060.2061.490.139
ROA−0.0380.132−0.290.774
MTB−0.0150.005−2.640.008
AGE−0.0230.036−0.660.511
ACHANGE−0.0130.012−10.540
SPEC−0.1790.422−0.420.672
OPINION0.2740.0396.940
CONS 0.2741.3830.110.909
R20.038
Wald Test64.65 0
Table 9. The results of estimating the second model by the FGLS method.
Table 9. The results of estimating the second model by the FGLS method.
VariableCoefficientDeviation StandardT Statisticsp-Value
INCAP0.8450.0273.120.002
INVERC0.0160.0053.190.001
ATYPE0.0170.0072.40.0166
ARL0.1190.1240.960.337
TENURE−0.0160.032−0.520.605
SIZE0.0710.071.020.31
INTSALES0.040.0460.870.383
LOSS0.0560.1770.320.75
LEV−0.1310.151−0.860.387
ROA−0.040.125−0.320.749
MTB−0.0480.016−0.230.004
AGE−0.0010.005−9.920.816
ACHANGE−0.1360.0130.420
SPEC0.1170.27810.510.673
OPINION0.290.027−0.960
CONS−0.6180.643 0.336
LOG LIKELIHOOD−336.95
Wald Test155.32 0
Table 10. The results of estimating the third model by the stochastic effects method.
Table 10. The results of estimating the third model by the stochastic effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.0160.0034.620
HCE0.0120.0052.340.019
CCE0.0630.0144.230
INVERC0.0110.00110.510
ATYPE0.3530.3950.890.372
ARL0.1920.1381.390.164
TENURE−0.1330.041−0.320.751
SIZE0.0060.079−0.080.934
INTSALES0.0050.0490.10.919
LOSS−0.0620.007−7.810
LEV−0.0180.197−0.090.927
ROA0.0470.0222.080.037
MTB000.070.946
AGE−0.0050.01−0.540.592
ACHANGE0.0560.1650.340.731
SPEC0.0430.3870.110.911
OPINION0.1610.2030.790.427
Y20160.5650.02522.090
CONS9.9460.80612.340
R20
WALD TEST32.03 0
Normality of Resid0.845
Table 11. The results of estimating the third model using the fixed-effects method.
Table 11. The results of estimating the third model using the fixed-effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.0120.0042.990.003
HCE0.0130.0062.010.044
CCE0.0450.0067.080
INVERC0.0110.0042.730.007
ATYPE0.0771.2090.060.949
ARL0.170.1521.1120.265
TENURE−0.0170.05−0.340.734
SIZE−0.0770.091−0.850.399
INTSALES−0.0160.051−0.320.749
LOSS−0.0950.022−4.260
LEV0.1080.2360.460.648
ROA0.0170.0091.840.066
MTB000.690.488
AGE−0.0390.041−0.940.348
ACHANGE0.0370.1710.220.827
SPEC0.1230.4870.250.8
OPINION−0.1990.233−0.850.394
Y20160.4260.03811.10
CONS 10.9591.5956.870
R2−0.55
WALD TEST1.76 0.02
Table 12. The results of estimating the third model by the FGLS method.
Table 12. The results of estimating the third model by the FGLS method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.2340.0962.440.015
HCE0.0620.0163.90
CCE0.0010.0027.510
INVERC0.010.0042.540.011
ATYPE0.3590.2841.260.206
ARL0.2110.1381.530.127
TENURE−0.0270.036−0.760.448
SIZE0.0140.0770.190.849
INTSALES0.0310.0510.60.547
LOSS−0.0460.022−2.10.036
LEV0.0680.167−0.410.681
ROA0.0230.0141.650.099
MTB00−0.510.612
AGE−0.007 1.150.25
ACHANGE0.0590.0060.330.74
SPEC0.0360.1770.120.906
OPINION0.1240.309−0.70.483
Y20160.3930.17714.250
CONS 10.1960.02714.920
LOGLIKELIHOOD−360.059
WALD TEST26.46 0.089
Table 13. The results of estimating the fourth model by the stochastic effects method.
Table 13. The results of estimating the fourth model by the stochastic effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.0620.0173.560
HCE0.0510.0212.370.018
CCE0.0770.0362.140.032
INVERC0.01010.210
ATYPE0.0690.0332.080.039
ARL0.1040.120.870.385
TENURE−0.020.0370.540.587
SIZE0.0490.07−0.70.481
INTSALES0.0270.0420.630.529
LOSS0.1180.1740.680.498
LEV0.4330.085.520
ROA0.0370.1250.30.765
MTB−0.0240.009−2.60.009
AGE0.0040.01−0.390.693
ACHANGE0.010.143−0.070.944
SPEC0.0760.3470.220.827
OPINION0.030.0132.320.02
CONS 0.560.7190.320.436
R20.39
WALD TEST81.6 0
Normality of Resid0.902
Table 14. The results of estimating the fourth model using the fixed-effects method.
Table 14. The results of estimating the fourth model using the fixed-effects method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.0130.0062.250.024
HCE0.0840.0126.840
CCE0.0230.0092.520.012
INVERC0.0210.0121.760.087
ATYPE0.0820.0372.190.028
ARL0.090.1320.680.496
TENURE−0.0250.044−0.570.569
SIZE0.0030.080.040.969
INTSALES0.0150.0440.340.737
LOSS0.0970.0214.550
LEV0.3030.2071.460.145
ROA−0.0310.132−0.240.81
MTB−0.0460.015−3.080.002
AGE−0.0280.036−0.790.433
ACHANGE−0.0190.15−0.130.896
SPEC−0.1260.427−0.30.768
OPINION0.0240.0073.470.001
CONS0.2221.3960.160.873
R20.376
WALD TEST73.83 0
Table 15. The results of estimating the fourth model by the FGLS method.
Table 15. The results of estimating the fourth model by the FGLS method.
VariableCoefficientDeviation StandardT Statisticsp-Value
SCE0.0720.0088.810
HCE0.0520.0271.890.059
CCE0.0420.0094.580
INVERC0.0170.0091.930.054
ATYPE0.1490.1640.910.363
ARL0.1470.180.810.415
TENURE0.0630.0441.430.151
SIZE0.4020.057.90
INTSALES−0.9010.369−2.440.015
LOSS0.0770.160.480.631
LEV0.0590.0222.640.009
ROA−0.1130.412−0.270.784
MTB0.0010.0130.150.88
AGE−0.0070.005−1.420.157
ACHANGE0.1270.2030.630.531
SPEC0.1340.150.890.374
OPINION0.3550.142.540.011
Y2014−0.0440.022−20.046
Y2015−0.0830.024−3.40.001
CONS 10.8851.1299.640
LOGLIKELIHOOD−309.971
WALD TES36.1 0.01
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MDPI and ACS Style

Dashtbayaz, M.L.; Hameed Mezher, A.; Khalid Albadr, K.H.; Alkafaji, B.K.A. The Relationship between Intellectual Capital and Audit Fees. J. Risk Financial Manag. 2023, 16, 93. https://doi.org/10.3390/jrfm16020093

AMA Style

Dashtbayaz ML, Hameed Mezher A, Khalid Albadr KH, Alkafaji BKA. The Relationship between Intellectual Capital and Audit Fees. Journal of Risk and Financial Management. 2023; 16(2):93. https://doi.org/10.3390/jrfm16020093

Chicago/Turabian Style

Dashtbayaz, Mahmoud Lari, Amjed Hameed Mezher, Khalid Haitham Khalid Albadr, and Bashaer Khudhair Abbas Alkafaji. 2023. "The Relationship between Intellectual Capital and Audit Fees" Journal of Risk and Financial Management 16, no. 2: 93. https://doi.org/10.3390/jrfm16020093

APA Style

Dashtbayaz, M. L., Hameed Mezher, A., Khalid Albadr, K. H., & Alkafaji, B. K. A. (2023). The Relationship between Intellectual Capital and Audit Fees. Journal of Risk and Financial Management, 16(2), 93. https://doi.org/10.3390/jrfm16020093

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