1. Introduction
Ownership structure plays a vital role in the smooth running of the banking sector, which seeks to achieve its goals through the appropriate use of knowledge-based capital (
Ika and Widagdo 2021). The knowledge-based infrastructure is critical for businesses to ensure survival at present and in the upcoming competitive world with the best use of traditional tangible resources (
Oppong and Pattanayak 2019;
Shchepkina et al. 2022). According to the resource-based view, firms’ value creation largely depends on the desired use of visible and invisible resources (
Wernerfelt 1984). IC can bring value to firms by fostering knowledge creation, sharing and increasing capital, and labor market efficiency (
Al-Omoush et al. 2022;
Guthrie et al. 2001;
Maniruzzaman and Hossain 2019;
Rabiul Islam and Hossain 2018). To maximize the wealth of shareholders, managers must understand the value of knowledge and information (
Appuhami and Bhuyan 2015). Banks are service-oriented enterprises and vital catalysts of an economy that collect deposits from servers, provide credit to people and firms and also to diversified operations, such as supplying information to clients on trade and economy, advising them on recent economic matters, and boosting global business by opening letters of credit and negotiating bills of exchange. Like other companies, bank leadership is separate from its ownership. However, such owners are expressed in governance and managerial activities to utilize all the organization’s resources.
A robust banking system is the driving power of a country’s economy, especially in an emerging market like Bangladesh (
Nabi et al. 2020;
Rabiul Islam 2017). However, among many other causes, banks in Bangladesh presently suffer from diverse crises, such as management problems, poor supervision, poor loan recovery, growing defaults, mounting classified advances, and ownership complexities (
Mujeri and Mujeri 2020). In Bangladesh, corporations that do business with the country’s banks and non-banking financial institutions (NBFIs) are again the owners of these financial institutions. It induces problems in many cases. For instance, Islami Bank Bangladesh Limited, the largest private sector bank in the country, fell into a severe monetary crisis just 15 months after the change of ownership in January 2017 due to mismanagement and mutual conflicts (
The Daily Prothom Alo 2018). Such complications boost non-performing loans (NPL) in banks. Increasing NPL is likely to decrease the operating performance of banks. The NPL rate against total disbursed loans was 8.9 percent in 2013, and stood at 10.3 percent in 2018 and 9 percent in 2022 (
Bangladesh Bank 2023).
Additionally, increasing NPL is likely to harm a bank’s operating performance. The return on assets (ROA) of Bangladeshi banks has also declined chronologically. In 2015, the ROA of banks was 3.27 percent, and it continuously decreased over the period. It came down to 2.57 percent only in 2022 (
Bangladesh Bank 2023). The rate of decline in ROE is also remarkable. While the return on equity (ROE) grew by 10.73 percent in 2013, it declined to 9.37 percent in 2022 (
Bangladesh Bank 2023). This report also showed that the net interest margin (NIM) rate gradually decreased from 3.56 percent in 2014 to 2.4 percent in 2022 (
Bangladesh Bank 2023). To solve these problems, it is necessary to develop skilled personnel, properly utilize knowledge resources, improve efficient institutional structures, and increase the relationship with all parties related to the organization. To do so, the owner should actively select proper management bodies to run their business efficiently. The role of owners should impact a firm’s visible and invisible resource utilization.
Limited studies have been conducted in this respect.
Bohdanowicz and Urbanek (
2012) studied the impact of ownership patterns on IC of publicly traded companies in Poland and documented that sponsor and institutional ownership has a substantial positive effect on VAIC, HCE, and SCE on VAIC, HCE, and SCE. In contrast, foreign ownership has substantial adverse effects on VAIC, HCE, and SCE.
Zanjirdar (
2011) studied the association between OS and ICE, adopting the VAIC model to gauge IC efficiency. He found that institutional and managerial ownership has a negative but significant impact on VAIC, and public ownership could not play an important role.
Al-Sartawi (
2018) found that managerial and general public ownership significantly and adversely impacted IC efficiency.
Abor and Biekpe (
2007) and
Demsetz and Lehn (
1985) revealed a positive association between firm performances and managerial ownership. These studies demonstrated mixed outcomes. So, further investigation is necessary to explore the actual situation in the Bangladeshi context. Now, the following questions arise: Is ownership structure associated with a bank’s IC performance and tangible resources? If so, does it influence a bank’s IC performance?
To answer these questions, the study explores the association between OS and banks’ tangible and invisible resources and how much it affects them.
This study is unique in respect of several perspectives. It is the first study in Bangladesh to address the impact of ownership structure on intellectual capital, especially in the banking sector. The modified value-added intellectual coefficient (MVAIC) model measures IC efficiency rather than the VAIC model for finding the effect of relational capital efficiency.
There are six parts to this article. The
Section 1 contains the introduction,
Section 2 forms the literature review,
Section 3 deals with the study methodology,
Section 4 depicts the results and arguments,
Section 5 presents the study’s concluding remarks.
4. Results and Discussion
4.1. Descriptive Statistics
We used StataSE version 14.2 to expose descriptive statistics as mean, maximum, minimum, and standard deviation. All of these can help perform basic comparisons across variables.
Table 2 shows the descriptive statistics from 2017 to 2021 among different variables. The average percentage of sponsor director ownership was 39.6678 percent, which fluctuated between 5.92 percent and 90.19 percent. Institutional investors owned one-fifth (about 20.25 percent) of the shares of banks in Bangladesh. Around one-third (34.518 percent) of banks’ shares were owned by the general public, with a maximum limit of 70 percent. Foreign owners were likely small investors in Bangladeshi banks, with an average shareholding of below 5 percent. However, sometimes, they became the concentrated share owners in the bank.
Ulum et al. (
2014) prescribed a standard for measuring intellectual capital. They showed that organizations with an MVAIC of 3.5 or more are called top performers, termed outstanding quality institutions. A score between 2.5 and 3.5 is considered that of a good performer, and between 1.5 and 2.5 is that of an average performer. Moreover, a score of less than 1.5 denotes a bad performer.
In practice, the average MVAIC of banks in Bangladesh is 3.279, which suggests a good performer. This value is a maximum of 9.57 and a minimum of 1.08, which indicates that some banks have utilized intellectual resources efficiently, and some have suffered severely. The organizations’ average human capital efficiency score is 2.61, which suggests Bangladeshi banks can generate more than two and a half times value-added from their investment in employee expenses. The average efficiency of banks in OC is 46.63 percent, i.e., nearly half of the value added by banks was from their investments in structural capital. However, some banks suffered due to adding more value to SCE with negative efficiency. Banks achieved a small extent of RC, about 10.2 percent of total value-added on their relational activities, which needs to increase the performance of the banks. However, relational activities should create more value for the organization. The average CEE of Bangladeshi banks is approximately 10.44 percent, coincident with RC. Banks can add only one-tenth the value from the tangible capital they invest. Banks in Bangladesh use an average of BDT 349,583.7 million in assets. This amount varies from bank to bank, ranging from BDT 11,240.14 to 1,635,993 million. Therefore, the value of the standard deviation is very high. The minimum leverage value is −2.1276, indicating that the bank had negative equity capital during that period. The average leverage ratio of banks in Bangladesh is 13.72975 times of their equity capital. In this case, the banks provide more than thirteen and a half times their equity capital through loan funds. It is the most dangerous because companies focus more on sustaining their business with debt funds or later money rather than relying on their own money. Therefore, it will be challenging for the banks to survive if any emergency arises.
4.2. Pearson Correlation Matrix
Table 3 shows that the dependent variables of MVAIC, HCE, SCE, RCE, and CEE were correlated with independent and control variables. Results indicate that SDO significantly reduced all components of intellectual efficiency, i.e., MVAIC, HCE, SCE, and CEE, except RCE. The higher presence of institutional owners enhances SCE efficiency but reduces RCE. The increasing shares of foreign owners positively and significantly augment the bank’s MVAIC and HC efficiency. Public ownership is only positively related to SCE while assisting in reducing RCE. The most exciting association was that between banks’ tangible and intellectual capital. The result indicates that more investment in tangible assets (total assets) leads to lower intellectual efficiency. Almost the same results were evident between banks’ leverage and intellectual efficiency. They correlate negatively with MVAIC, HCE, and SCE but act positively with RCE and CEE. From this table, we also find that the correlation of HCE with MVAIC is 0.991, which is nearly one. Again, SCE also correlated with this variable with more than 82 percent. It indicates that HCE and SCE are mainly converted to MVAIC.
4.3. Diagnostic Test
Prior to selecting a suitable econometric model, we conducted multiple tests. We started by performing a panel unit root test. Due to the balanced panel data, we considered the Fisher-type unit-root test based on Phillips–Perron (PP) tests. The results for all of the deployed variables confirmed that all of the variables (except for RCE and TA, whose
p-values are significant at the 5 percent level) were significant at the 1 percent level of significance. The variables did not have unit roots, and the results suggested that at least one panel was stationary in the variables. Secondly, we applied a correlation matrix and VIF test for detecting multicollinearity problems.
Table 3 shows that no independent variables were correlated by over 80 percent.
Kennedy (
1998) stated that multicollinearity existed when independent variables correlated by more than 0.80. This study showed a positive correlation between MVAIC, HCE, and SCE variables of more than 0.80. However, it was not affected by the multicollinearity problem. Because this variable has not been used in the same model as the independent variable, it is unrelated to the multicollinearity problem.
We also tested multicollinearity using the variable inflation factor (VIF) test. The results from
Table 3 reflected and asserted that the limit of VIF value ranges from 1.68 to 8.76. Generally, multicollinearity exists if the VIF value is more than 10 and the minimum value is 1 (
Gujarati and Porter 2009). The study found that the average value of VIF is 5.42. So, we asserted that the multicollinearity problem had not affected our data and expected to predict reliable output from regression analysis. Before further analysis, several researchers conducted these two types of tests (
Shahzad et al. 2022;
Weqar and Haque 2022;
Yao et al. 2019).
We then used the pooled OLS and random-effects regression techniques. The Breusch and Pagan Lagrangian multiplier (LM) test served as the basis for the technique selection. The significant result (
p < 0.05) of the LM test’s statistics suggested that we use RE as the best regression model over pooled OLS. After running the FE regression model, the estimation was matched with the RE model using the Hausman (DWH) test. FE was chosen as the best model to determine the systematic difference in coefficients (
p < 0.05) of the Hausman test. If not, the RE model was picked. After that, the modified Wald test was applied to perceive a group-wise heteroskedasticity issue. The findings of this test, which were significant (
p < 0.05), supported the presence of the heteroskedastic issue. The Durbin–Watson test was carried out to detect the issues with autocorrelation. To resolve these two problems (heteroskedasticity and autocorrelation), we finally used the robust FE regression model (where appropriate) (
Yao et al. 2019).
4.4. Regression Results
Table 4,
Table 5,
Table 6,
Table 7 and
Table 8 show that LM test results guided us to avoid the pooled OLS due to rejecting the null hypothesis, which means that all of the models had random effects. Hausman test (DWH) results from
Table 4 and
Table 5 showed that the robust FE method were suitable over RE which except for
Table 6 (whose
p-value failed to reject the null hypothesis). So, we used the robust RE model to reflect the effects of OS on SCE. Again,
Table 7 and
Table 8 also eligible for FE method are best fit due to Hausman test results. We performed a modified Wald test using the fixed model to detect the group-wise heteroskedasticity problem. Results indicate that all of the models suffered from heteroskedastic problems because the chi-square of the Wald test (
p < 0.05) rejected the null hypothesis. Again, the Durbin–Watson test scored below 2 (ranging from 0.6626531 to 1.313379), indicating that all of the models had autocorrelation problems. So, we considered the robust fixed-effect regression output of various dimensions of ownership structure in the models to mitigate the unequal residual variance across measured values. Also, the F-Stat (Wald chi-square for RE model) results from
Table 4,
Table 5,
Table 6,
Table 7 and
Table 8 were statistically significant (
p < 0.05), implying that all of the regression models were fit for analysis. R
2 values from
Table 4,
Table 5,
Table 6,
Table 7 and
Table 8 ranged from 0.0601 to 0.1917, which showed that the changes in one unit of the employed independent and control variables could change only less than one-fifth of the dependent variables at best. In this case, the combination of OS was likely to have a lower influence on IC and its elements.
The regression results from
Table 4,
Table 5,
Table 6,
Table 7 and
Table 8 exhibited that SDO has significant positive effects on MVAIC and HCE (coef. = 6.589908,
t-value 2.96 and coef. = 6.276399,
t = 3.16 respectively,
p < 0.01), which implies that the sponsor director owners help to enhance IC performance by utilization of human resources. Further, we also found that SDO has no significant effects on SCE (beta value = −0.06595,
z-value = −0.51,
p > 0.10), RCE (
t-value = −1.38,
p > 0.10), and CEE (
t-value = 1.25,
p > 0.10). So, we concluded from this situation that SDO only enhances human efficiency rather than other intellectual and tangible resources (SCE, RCE, and CEE) of banking companies in Bangladesh. Thus, our hypothesis 1 is partially accepted, agreeing with the
Nassar et al. (
2018) study and contradicting the
Bohdanowicz and Urbanek (
2012) study.
Similar results were evident in the case of institutional ownership. More investment from institutions only fosters uplifted human resources and overall IC efficiency but not organizational, relational, and employed capital. Regression results show that the impact of IO on IC performance influenced only HCE at a 10 percent significance level (β = 4.929286,
t-value = 1.91), which led to overall IC effectiveness through MVAIC (coef. = 5.459298,
t-value = 1.83,
p < 0.10). The positive effect of IO and the positive relationship with IC performance implied that the IO presence fosters the utilization of HC. Results also revealed that other IC elements like SCE (
z-value = 0.185,
p > 0.10), RCE (
t-value = −0.96,
p > 0.10), and CEE (
t-value = 0.65,
p > 0.10) were not affected significantly. However, among them, RCE was impacted negatively. So, our second hypothesis is proved partially. These findings support the prior studies of
Al-Musalli (
2012);
Al-Sartawi (
2018); and
Bohdanowicz and Urbanek (
2012) but not with the
Zanjirdar (
2011) study.
FO showed a significant positive impact on bank MVAIC (
t-value = 3.77,
p < 0.01), HCE (
t-value = 3.62,
p < 0.01), SCE (
z-value = 0.208,
p > 0.10), and CEE (
t-value = 5.85,
p < 0.01) but negatively impacted RCE (
t-value = −3.26,
p < 0.01). The results revealed the massive influencing power exhibited by foreign owners so that the banks could utilize their IC resources. More investment by foreign investors promotes the efficiency of banks’ tangible and intangible resources, which assists banks in operating smoothly in the long term. However, the presence of foreign ownership failed to utilize the relational resources of Bangladeshi banks. So, our third hypothesis is proved partially. These results support the prior study from (
Orazalin et al. 2015) but not with the
Al-Musalli (
2012) and
Tjendani et al. (
2018) studies.
Public owners have almost no power to influence banks’ operations directly. Nevertheless, their indirect role assists banks in utilizing resources efficiently. The study results found that PO positively influences MVAIC (
t-value = 2.98,
p < 0.01), HCE (
t-value = 3.04,
p < 0.01), SCE (
z-value = 0.20,
p > 0.10), and CEE (
t-value = 2.34,
p < 0.05) and negatively influences RCE at the 1 percent significance level (
t-value is −3.01). The results revealed that more public owners significantly influence banks’ overall IC performance, human resources, and tangible capital. However, they are unable to utilize relational opportunities. Hence, our fourth hypothesis is proved partially. These results support the prior studies of
Orazalin et al. (
2015) and
Zanjirdar (
2011) and contrary to the findings of the studies of
Al-Musalli (
2012);
Bohdanowicz and Urbanek (
2012) and
Tjendani et al. (
2018).
The study’s two control variables exhibited a negative affinity with the banks’ overall IC, HCE, and SCE performance, meaning that the assets led to a decline in IC efficiency of banks in Bangladesh. Additionally, higher leverage, i.e., debt capital, decreased IC efficiency except for RCE. However, regression results showed that total assets could enhance the banks’ intellectual efficiency for all cases except for SCE, which was affected negatively and insignificantly (t-value > 0.10). In contrast, higher leverage insignificantly reduced banks’ MVAIC, HCE, and CEE performance. The leverage of banks significantly uplifts RCE performance but insignificantly affected SCE.
5. Conclusions
Owners and managers generally act in different roles in a company. The owners appoint managers as their agents to run their businesses effectively. Institutional and concentrated family owners’ decisions have more importance in using a firm’s resources. Thus, the ownership structure is vital for the productive use of the firm’s resources. IC appraisal techniques depend heavily on the knowledge and competency of the top management and board. Corporate managers should be capable of using all of the business resources effectively and efficiently. The concentrated/controlling owners make the board decisions regarding their business operations. They are responsible for choosing the agent to execute the general functions of their firms. Nevertheless, the controlling owners choose their firms’ managers from among themselves or are closely related to their surroundings. In most cases, managers played the dual role of agents and owners in their companies. That is why sponsor directors’ ownership has more control over the firm for thriving operations.
The study explored the idea that SDO and IO can only utilize their human resources rather than other IC resources such as SCE, RCE, and tangible capital efficiency (CEE), whereas more involvement of FO and PO significantly and positively enhances a bank’s intellectual efficiency as HCE, SCE, and CEE but reduces RCE. The study findings suggest that the sponsor directors and institutional owners of banks in Bangladesh failed to utilize invisible resources except human resources. Hence, the study suggests reducing the ratio of managers to sponsor/institutional stockholders. As the foreign and public owners extend IC efficiency, the banks should retain them.
The study contributes to the existing IC literature by extending the affinity between OS and IC efficiency, using all four types of ownership combinations (SDO, IO, FO, and GPO). The outcome of this study helps policymakers of banks regarding ownership combinations for optimum utilization of banking resources (both tangible and IC). Management can evaluate IC efficiency to manage, supervise, and utilize the knowledge resources to increase a bank’s profitability. Also, prevailing and potential investors will make desired decisions regarding their investments.
Further study is essential for manufacturing, service, and tech companies separately or through random sampling combining all sectors to generalize the concept. Also, a comparative study might be conducted based on different countries, economies, markets, etc. Moreover, with the ability to accommodate the persistence and clustering frequently found in real-world data, generalized autoregressive conditional heteroscedasticity (GARCH) models can be considered a potent tool for comprehending and predicting the dynamic behavior of financial time series volatility for future research.