1. Introduction
The relationship between profitability and capital intensity has emerged as a critical focus in corporate finance, offering insights into the strategic decisions firms make regarding resource allocation, investment planning, and financial performance. Capital intensity refers to the degree to which a firm relies on fixed assets, such as machinery, property, and equipment, to generate revenue (
Darsani & Sukartha, 2021;
F. A. Sumantri et al., 2022;
Widyastuti et al., 2022;
Hendayana et al., 2024). Firms operating in capital-intensive industries, such as manufacturing, energy, and infrastructure, often face unique challenges due to their reliance on substantial fixed investments (
R. I. Sumantri & Kurniawati, 2023;
Padhi, 2024). These challenges necessitate an intricate balance between generating adequate returns and managing the operational costs associated with such investments. As a result, understanding the interaction between profitability and capital intensity is essential for navigating these complexities and achieving long-term financial stability.
Capital-intensive firms generally exhibit higher operating leverage, as they have significant fixed costs relative to variable costs. This structure makes their profitability highly sensitive to fluctuations in revenue. In periods of strong market demand, high capital intensity can amplify returns, enabling firms to reap significant economies of scale. However, during periods of economic downturn or reduced demand, the same high fixed costs can erode profitability, leaving firms vulnerable to financial distress (
Oeta et al., 2019;
Maxim, 2021;
Muthusamy & Kannan, 2023;
Tran & Nguyen, 2023). Consequently, the profitability of capital-intensive firms is often a double-edged sword, heavily influenced by market dynamics and managerial decisions.
Debt financing adds a layer of complexity to this relationship, acting as both a facilitator and a potential constraint. Debt is a crucial component of a firm’s capital structure, enabling firms to access the financial resources required for large-scale investments in fixed assets (
Stoiljković et al., 2024;
Zhang et al., 2024). For capital-intensive firms, debt financing can provide a competitive advantage by allowing them to fund growth initiatives, modernize infrastructure, and achieve operational efficiency. However, debt also introduces financial risk in the form of fixed interest obligations and principal repayments, which can strain a firm’s cash flow and profitability, particularly during economic downturns (
Modigliani & Miller, 1958;
Jensen, 1986;
Atichasari et al., 2023;
Odhiambo et al., 2025).
The dual role of debt financing—as a lever for growth and a source of risk—underscores its moderating influence on the relationship between profitability and capital intensity. Firms that manage debt effectively can harness its benefits to support capital-intensive operations while mitigating its risks. Conversely, excessive reliance on debt can exacerbate the vulnerabilities associated with high capital intensity, leading to financial instability. This nuanced interplay highlights the need for a deeper understanding of how debt financing influences the profitability of capital-intensive firms.
Capital intensity is often associated with industries that require substantial investments in fixed assets to produce goods or services. Examples include sectors such as manufacturing, mining, transportation, and utilities, where the cost of acquiring and maintaining physical assets constitutes a significant portion of operational expenses. The high fixed costs inherent in these industries create a reliance on economies of scale to achieve profitability. Firms must generate sufficient revenue to cover their fixed costs before realizing profits, making revenue growth a critical determinant of financial performance (
Myers, 1977).
Profitability, on the other hand, is a measure of a firm’s ability to generate returns on its investments and is often evaluated using metrics such as return on assets (ROA), return on equity (ROE), and net profit margin. For capital-intensive firms, profitability is influenced by several factors, including the efficiency of asset utilization, market conditions, and the cost structure of the firm. Efficient management of fixed assets can enhance profitability by improving operational efficiency and reducing costs. However, inefficiencies in asset utilization can erode profitability, as the high fixed costs associated with capital intensity leave little room for error (
Rajan & Zingales, 1995).
Debt financing plays a pivotal role in the capital structure of firms, particularly in capital-intensive industries. By providing access to external funds, debt enables firms to invest in large-scale projects, expand operations, and modernize infrastructure. The use of debt is often justified by the tax shield it provides, as interest payments on debt are tax-deductible, reducing the overall cost of capital (
Modigliani & Miller, 1958). Moreover, the discipline imposed by debt can encourage managerial efficiency, as firms must generate sufficient cash flows to meet their debt obligations (
Jensen, 1986). However, the benefits of debt financing are accompanied by significant risks. High levels of debt increase financial leverage, which can amplify both profits and losses. In favorable market conditions, leverage can enhance returns to equity holders by enabling firms to achieve greater operational scale. In contrast, during periods of economic uncertainty or declining revenues, high leverage can magnify losses, leading to financial distress or even bankruptcy (
Myers, 1977). The balancing act between the benefits and risks of debt financing is particularly pronounced in capital-intensive firms, where the fixed costs of operations and the fixed obligations of debt create a “double fixed cost” structure that heightens financial vulnerability.
The moderating role of debt financing in the relationship between profitability and capital intensity is rooted in its ability to influence both the costs and benefits associated with capital investments. On one hand, debt provides the financial resources necessary for firms to undertake capital-intensive projects and achieve economies of scale. On the other hand, the fixed obligations associated with debt can exacerbate the risks of high capital intensity, particularly in volatile market conditions. Research has shown that the impact of debt financing on profitability varies depending on factors such as the cost of debt, the maturity structure of debt, and the firm’s operational efficiency (
Rajan & Zingales, 1995;
Maxim, 2021;
Hendayana et al., 2024). For instance, firms with access to low-cost debt and favorable repayment terms are better positioned to leverage debt financing to enhance profitability. Conversely, firms burdened by high-cost debt or short-term repayment obligations may find that debt financing constrains their financial flexibility and erodes profitability.
Empirical studies have highlighted the complex interplay between profitability, capital intensity, and debt financing. For example,
Kusuma and Firnanti (
2023) and
Oeta et al. (
2019) found that capital-intensive firms in the manufacturing sector benefit from moderate levels of debt financing, which enable them to invest in productivity-enhancing technologies. However, excessive debt levels were associated with declining profitability, as the financial burden of debt outweighed the benefits of capital investment. Similarly,
Maxim (
2021) observed that the relationship between profitability and capital intensity is contingent on the firm’s leverage ratio. Firms with moderate leverage ratios were able to achieve higher profitability by effectively utilizing their fixed assets, while firms with high leverage ratios experienced diminishing returns due to increased financial risk. These findings underscore the importance of debt management in capital-intensive industries, where the balance between leverage and profitability is particularly delicate.
Building on the above discussion, this study aims to examine the relationship between capital intensity and firm profitability among non-financial firms in Oman over the period 2012–2022, with particular attention to the moderating role of debt financing. Accordingly, the study addresses the following key research questions:
What is the nature of the relationship between capital intensity and profitability in Omani non-financial firms?
How does debt financing affect firm profitability?
Does debt financing strengthen or weaken the relationship between capital intensity and profitability?
Are these effects consistent across firms of different sizes and sectors?
This study makes several significant contributions to the literature on capital intensity, debt financing, and firm profitability. First, it extends the existing body of knowledge by examining the nuanced relationship between capital intensity and profitability, emphasizing how debt financing moderates this relationship in the context of non-financial firms in Oman. Unlike previous studies that focus on developed economies, this research sheds light on the dynamics within an emerging market, thereby providing valuable insights into how capital structure decisions influence firm performance in a developing economy. Second, the study’s focus on firm size and sectoral differences offers a deeper understanding of the heterogeneity in the impact of capital intensity and debt financing on profitability. By highlighting that larger firms benefit more from debt financing due to better access to financial resources, the study underscores the structural advantages of size in capital allocation and utilization. In contrast, smaller firms, which face constraints in accessing capital, demonstrate the challenges of leveraging debt to enhance profitability. This finding emphasizes the need for policy interventions to address capital access disparities among firms of different sizes. Third, the industry-specific analysis reveals that capital-intensive sectors, such as Energy and Industrials, experience a stronger positive effect of capital intensity on profitability compared to less capital-intensive sectors. This contribution is particularly relevant for policymakers and practitioners seeking to optimize financial strategies across various industries, as it highlights the differential impacts of capital structure decisions based on sectoral characteristics. Furthermore, the study incorporates the effects of the COVID-19 pandemic, providing a timely analysis of how exogenous shocks influence the profitability dynamics of firms with varying levels of debt exposure. This aspect not only enriches the understanding of the pandemic’s economic consequences but also underscores the importance of resilience in capital structure strategies, particularly for sectors with significant debt financing. Finally, the findings of this study have practical implications for financial policymakers, corporate managers, and investors. By advocating tailored financial policies that enhance access to capital for smaller firms and optimize debt financing strategies across industries, the research provides actionable insights to improve firm performance and sustainability in emerging markets. Overall, this study contributes to the ongoing discourse on capital structure and firm profitability, offering both theoretical advancements and practical recommendations tailored to the unique challenges and opportunities in the Omani context.
The rest of the paper is organized as follows.
Section 2 presents a review of the relevant literature.
Section 3 describes the research methodology.
Section 4 presents the empirical results and discusses the findings.
Section 5 provides robustness checks and sensitivity analyses to ensure the reliability of the results. Finally,
Section 6 concludes the paper, offering policy implications, limitations of the study, and suggestions for future research.
3. Methodology
3.1. Data
This study employs an unbalanced panel dataset of 76 non-financial firms listed on the Oman Securities Market (OSM) over the period 2012–2022. The sample encompasses firms from diverse industries such as manufacturing, services, construction, and retail to ensure comprehensive sectoral representation of the Omani non-financial sector. Firm-level data were primarily obtained from the annual financial statements available through the Oman Securities Market’s official database and verified against secondary financial data repositories such as Refinitiv Eikon and company annual reports to ensure accuracy and reliability. The sample size, although moderate, provides adequate variability across firms and years, allowing for the control of firm-level heterogeneity using fixed- and random-effects estimations. To maintain data consistency, financial and utility firms were excluded due to their distinct regulatory and capital structure characteristics. Missing or incomplete values were treated carefully—where feasible, missing financial items were cross-verified from alternative annual reports; otherwise, data imputation was performed using firm-specific linear interpolation techniques, and outliers were winsorized at the 1st and 99th percentiles to reduce the influence of extreme observations. The panel is unbalanced, as not all firms have complete records for every year; however, this structure enhances sample representativeness and allows the inclusion of firms that may have entered or exited the market during the study period. Overall, this data structure captures both cross-sectional and temporal variations, enabling robust estimation of the relationship between capital intensity, debt financing, and profitability in Omani firms.
3.2. Model Specification
The model specification for this study aims to examine the relationships between capital intensity, debt financing, and profitability, with a focus on understanding how these factors interact across different firms and sectors. To analyze these relationships, a regression-based approach is employed, with profitability as the dependent variable and capital intensity and debt financing as the key independent variables. The general form of the model is as follows:
The dependent variable in this model is Profitabilityit, which can be measured by metrics like earnings before interest and taxes/total revenue for firm i at time t. The model includes a variety of independent variables that may affect profitability. First, and are key independent variables. Capital intensity measures the proportion of a firm’s assets that are tied up in physical capital, while debt financing reflects the extent to which a firm relies on borrowed funds to finance its operations. The interaction term is included to explore how these two variables interact and jointly affect profitability. This allows for a deeper understanding of whether the effect of one variable depends on the level of the other.
Other variables in the model include , which accounts for a firm’s ability to effectively manage its operations and resources, and , reflecting the firm’s ability to meet its short-term obligations. is another important control variable, as larger firms may have different profitability dynamics compared to smaller firms. Additionally, the model controls for macroeconomic factors such as and , which can also influence firm profitability by affecting the broader economic environment in which firms operate.
The inclusion of these variables helps ensure that the model comprehensively captures the factors affecting profitability. The goal is to understand both the direct and interactive effects of capital intensity and debt financing, as well as the role of firm-specific and macroeconomic factors, on a firm’s financial performance. The error term,
, accounts for unobserved factors that might influence profitability. By examining this equation, researchers can gain valuable insights into the complex relationships between these financial variables and their impact on profitability.
Table 1 summarizes the definition of the variables used in this study.
Pooled OLS (Ordinary Least Squares) regression was employed to estimate the relationship between the key variables—capital intensity, debt financing, and profitability, as measured by EBIT—across the sample firms. This method assumes that there is no significant variation across individual firms over time, effectively pooling all observations together to estimate a single regression model. Pooled OLS is commonly used in panel data analysis when individual effects are assumed to be uncorrelated with the explanatory variables, providing a straightforward and efficient estimation technique. In this study, pooled OLS was utilized to capture the overall impact of capital intensity, debt financing, and other control variables such as management efficiency, liquidity, and firm size on EBIT. The results derived from this model offer an initial understanding of the general relationships between the variables across the sample, although it does not account for individual firm-specific effects or time dynamics, which are addressed in more advanced models such as fixed-effects or random-effects regressions.
5. Robustness Test
5.1. Alternative Measures of Firm Profitability
To further evaluate the robustness of the baseline results, an alternative set of profitability measures was used. While the initial regression analysis relied on EBIT as the dependent variable, this robustness test incorporates Return on Assets (ROA) and Return on Equity (ROE) as alternative profitability indicators. The inclusion of these two measures is crucial, as they provide different perspectives on a firm’s financial performance—ROA gauges the efficiency of asset utilization, whereas ROE assesses the returns generated for shareholders. By incorporating ROA and ROE alongside EBIT, this robustness test ensures that the observed relationship between capital intensity, debt financing, and profitability is not reliant on a single measure of profitability. As presented in
Table 6, the results for ROA and ROE remain consistent with those found using EBIT, bolstering the reliability and robustness of the conclusions drawn from the baseline analysis. This consistency across different profitability measures further validates the findings and offers a more comprehensive understanding of the factors driving firm profitability.
5.2. Subsample Analysis
To deepen the understanding of the relationship between capital intensity, debt financing, and profitability, a subsample analysis was conducted, splitting the sample based on firm size and industry type. This approach helps identify whether the observed effects vary across different types of firms or sectors, ensuring the robustness and generalizability of the results.
By firm size: The first subsample analysis focused on firm size, dividing the sample into large and small firms. By running separate regressions for each group, we aimed to test if the impact of debt financing on profitability differs based on firm size. Larger firms typically have more access to capital markets, greater financial flexibility, and more substantial resources to absorb financial leverage. In contrast, smaller firms may face higher costs of capital and limited access to debt financing. This analysis helps determine whether the relationship between debt financing and profitability is stronger or weaker for firms of different sizes, thus offering insights into how firm size may influence financial strategies.
By industry: The second subsample analysis divided the sample into various industries, specifically focusing on sectors such as basic materials, consumer discretionary, consumer staples, energy, industrials, telecommunications, and utilities. By performing separate regressions for firms in these industries, we can assess whether the relationship between capital intensity, debt financing, and profitability is consistent across sectors. Different industries have distinct capital structures and operational dynamics, which may lead to varying results. For instance, capital-intensive industries like Energy and Industrials might exhibit a stronger relationship between capital intensity and profitability, whereas sectors like Telecommunications or Consumer Staples may demonstrate a more muted effect due to different financial characteristics and capital requirements. This industry-based analysis is essential for understanding whether the results observed in the overall sample hold true across sectors or if industry-specific factors play a significant role.
As shown in
Table 7 and
Table 8, the subsample analysis reveals nuanced variations in the relationship between capital intensity, debt financing, and profitability across firm size and industry types. For firm size, the results suggest that larger firms benefit more from capital intensity and debt financing, likely due to their greater access to capital markets and financial flexibility, while small firms face weaker effects, possibly due to their higher costs of capital and limited access to debt financing. In the industry-based subsample analysis, capital-intensive sectors like Energy and Industrials show a stronger relationship between capital intensity and profitability, reflecting the higher capital requirements and operational structures of these industries. On the other hand, industries such as Telecommunications and Consumer Staples display more muted effects, which could be attributed to their lower capital intensity and different financial characteristics. These findings demonstrate the importance of considering firm size and industry context when analyzing the impact of financial strategies on profitability, as the effects are not uniform across all types of firms or sectors.
2 5.3. Pre and Post COVID-19 Period
To ensure the robustness of the results, we conducted an additional test to control for the potential impact of the COVID-19 pandemic. The global health crisis significantly affected economic activities, financial markets, and firm operations, making it essential to account for its influence when analyzing the relationship between capital intensity, debt financing, and profitability. The COVID-19 pandemic could have caused disruptions in business operations, changes in consumer demand, shifts in supply chains, and adjustments in financial strategies, all of which might influence firm profitability and the effectiveness of debt financing.
In line with macroeconomic and public health data for Oman, we classified 2020 as the COVID-19 year, capturing the period of peak disruptions, and 2021–2022 as the post-COVID recovery period. According to the
World Bank (
2022), Oman’s economy faced substantial contractions in GDP and industrial activity in 2020, while the Ministry of Health reported that the highest infection rates occurred in the same year, with vaccination campaigns and phased reopening beginning in late 2020 and continuing into 2021 (
MOH Oman, 2021). By 2021, government stimulus measures and the gradual resumption of business activities marked the recovery phase. Recent empirical studies on Omani and GCC firms similarly adopt this periodization, treating 2020 as the pandemic year and 2021–2022 as the post-pandemic adjustment phase (
Ahmed et al., 2024). Based on this classification, we split the sample into pre-COVID (2012–2019) and post-COVID (2021–2022) periods and ran separate regressions to examine whether the relationships between capital intensity, debt financing, and profitability were significantly affected by the pandemic.
The results, presented in
Table 9, show that while the general trends remain consistent across the two periods, some variations in the magnitude and significance of the coefficients suggest that the COVID-19 pandemic did have an impact on firm profitability. Specifically, the effects of debt financing on profitability were stronger in the post-COVID period, possibly due to increased financial leverage used by firms to navigate economic uncertainties. Additionally, capital intensity appeared to have a more pronounced effect on profitability in the post-COVID period, likely reflecting shifts in investment strategies and operational adjustments made in response to the pandemic. By controlling for the COVID-19 effect, we provide a more nuanced understanding of the factors influencing firm profitability, ensuring that the results are not driven by external shocks and enhancing the robustness of the conclusions drawn from the baseline analysis.
3 5.4. Alternative Estimation Methods
To validate the reliability of the pooled OLS results presented in
Table 4, this study performed additional robustness tests using Fixed-Effects (FE) and Random-Effects (RE) models. These models help control for time-invariant firm-specific characteristics that may bias pooled OLS estimates.
The Breusch–Pagan Lagrange Multiplier (LM) test was first conducted to assess whether the use of panel data models was appropriate. The test results were significant, indicating that there is meaningful firm-level variance and that panel estimation is preferred over pooled OLS. Subsequently, the Hausman specification test was employed to determine the more suitable estimator between the FE and RE models. The Hausman test favored the Fixed-Effects model, suggesting that unobserved firm effects are correlated with the regressors, making FE the more consistent estimator.
As shown in
Table 10, the results from the FE and RE estimations remained qualitatively consistent with the main pooled OLS findings. Capital intensity and debt financing continued to show a positive and significant impact on profitability, and the interaction term between capital intensity and debt financing remained positive and significant. Control variables such as management efficiency, liquidity, and firm size also retained their expected signs and significance levels, while inflation remained insignificant across all specifications. These consistent results across different estimation techniques reinforce the robustness and stability of the findings, confirming that the main conclusions are not sensitive to the choice of estimation method.
5.5. Endogeneity Tests Using 2SLS and Two-Step System GMM
To address potential endogeneity concerns arising from simultaneity and omitted variable bias between debt financing and profitability, the study employs both Two-Stage Least Squares (2SLS) and Two-Step System Generalized Method of Moments (GMM) estimations. In the 2SLS framework, the potential endogeneity of debt financing is addressed by using lagged values of debt financing (t − 1, t − 2) and industry-average leverage ratios as instrumental variables. These instruments are theoretically justified as they influence firms’ current financing decisions but are unlikely to directly affect contemporaneous profitability, satisfying the relevance and exogeneity conditions. First-stage regression results confirm the strong correlation between the instruments and the endogenous variable (F-statistic > 10), supporting their validity.
For the dynamic analysis, the Two-Step System GMM approach is adopted, following
Arellano and Bover (
1995) and
Blundell and Bond (
1998), which combines equations in levels and first differences to exploit additional moment conditions. Lagged levels and first differences in the explanatory variables are used as instruments for endogenous regressors, and the collapse option is applied to prevent instrument proliferation. We also employ the Windmeijer finite-sample correction for standard errors. Diagnostic tests support the validity of the instruments: the Arellano–Bond AR(1) test indicates first-order serial correlation as expected (
p = 0.031), while the AR(2) test shows no evidence of second-order serial correlation (
p = 0.532). The Hansen test of over-identifying restrictions (
p = 0.162) confirms that the instruments are valid and not correlated with the error term.
The results, summarized in
Table 11, show that both 2SLS and GMM yield consistent estimates with the baseline OLS models. Capital intensity and debt financing remain positively and significantly associated with profitability, and the interaction term also retains its significance. These findings reinforce the robustness of the results and suggest that endogeneity does not materially bias the estimated relationships. Furthermore, the dynamic GMM results highlight a persistence effect in profitability, indicating that firm performance is influenced by prior-period profitability and financing structure decisions, consistent with financial behavior in emerging markets.
5.6. Non-Linear Specification of Capital Intensity
To examine the potential non-linear relationship between capital intensity and profitability, we introduce a squared term of capital intensity into the regression model. The model specification is as follows:
where
captures potential diminishing or threshold effects.
The results of this non-linear specification (
Table 12) show that the coefficient of capital intensity remains positive and statistically significant, while the coefficient of the squared term is negative and significant at the 5% level. This indicates that profitability increases with capital intensity up to a certain point, after which excessive capital investment begins to reduce profitability, consistent with the law of diminishing returns. Importantly, the interaction term between capital intensity and debt financing remains positive and significant, suggesting that debt financing continues to play a moderating role in enhancing the returns from capital-intensive investments, even under non-linear effects.
These findings provide additional robustness to our main results, demonstrating that the positive effect of capital intensity on profitability is conditional on the level of investment. Firms with moderate capital intensity benefit the most, while extremely high levels of investment may reduce efficiency and financial performance. Incorporating this non-linear specification enhances both the theoretical contribution and practical implications of the study by identifying threshold effects and highlighting the optimal use of capital and debt resources in non-financial firms.
6. Conclusions and Policy Implication
6.1. Conclusions
This study investigates the relationship between capital intensity, debt financing, and profitability using data from 76 non-financial firms in Oman over the period 2012–2022, offering insights into the financial dynamics of emerging markets.
The findings reveal that both capital intensity and debt financing significantly influence profitability, with their interaction further amplifying this impact. The analysis of non-linear effects also indicates a concave relationship between capital intensity and profitability, suggesting that while higher capital investment enhances firm performance up to a certain threshold, excessive capital accumulation may lead to diminishing returns. Larger firms, owing to greater access to capital markets and financial flexibility, exhibit a stronger relationship between debt financing and profitability compared to smaller firms, which face higher capital costs and limited financial access. Industry-specific analyses highlight those capital-intensive sectors, such as Energy and Industrials, demonstrate a more pronounced effect, whereas other sectors, like Consumer Staples and Telecommunications, show subtler relationships due to differing operational and capital requirements. Robustness checks, including controls for COVID-19-related economic disruptions, interaction-based subsample analyses, non-linear specifications, and endogeneity tests using Two-Stage Least Squares (2SLS) and two-step System Generalized Method of Moments (GMM), confirm that these conclusions are supported by rigorous empirical evidence rather than intuition alone. The results are consistent across multiple specifications, time periods, and firm characteristics, highlighting the reliability of the observed relationships
Overall, this study advances understanding of how firms in Oman manage capital structures to enhance profitability and offers actionable insights for corporate managers in optimizing debt-financing strategies. It also provides policy-relevant implications for strengthening financial systems in emerging markets. By empirically validating the nuanced interplay between capital intensity, financial leverage, and firm performance, this research contributes robust evidence to the literature while addressing the unique challenges and opportunities in the Omani context.
6.2. Policy Implication
The findings of this study carry significant policy implications for corporate managers, financial institutions, and policymakers, particularly in Oman and other emerging economies. Firstly, the positive impact of capital intensity and debt financing on profitability highlights the critical role of fostering an enabling financial environment. Policymakers should focus on improving access to credit, especially for small- and medium-sized enterprises (SMEs), which often face higher borrowing costs and restricted access to financial markets. Establishing initiatives such as credit guarantees, lower interest rates for SMEs, and promoting financial literacy can help reduce financing constraints and support profitability. Secondly, the industry-specific results emphasize the need for tailored policy interventions. Capital-intensive sectors such as Energy and Industrials demonstrated a stronger relationship between capital intensity and profitability. To support these industries, governments could introduce targeted incentives like tax breaks, subsidies, or concessional loans, enabling firms to invest in capital assets without overburdening their financial structures. Additionally, fostering partnerships between public institutions and private firms in these industries could stimulate innovation and operational efficiency, further enhancing profitability and economic contributions. Thirdly, the study also underscores the importance of resilience during economic disruptions, such as the COVID-19 pandemic. Policymakers should design contingency frameworks to support firms during such crises. Financial stimulus packages, deferred tax payments, and liquidity support schemes can play a crucial role in mitigating the adverse effects of economic shocks. In addition, strengthening regulatory frameworks to enhance financial stability and reduce uncertainty is essential to ensure firms’ ability to navigate turbulent periods effectively.
Fourthly, for corporate managers, these findings underscore the need to strategically balance capital intensity and debt financing to optimize profitability. Firms should focus on improving management efficiency, as it positively impacts financial performance. Managers can also enhance liquidity management practices to ensure sufficient buffers for operational continuity during periods of economic distress. Furthermore, financial institutions can use these insights to refine their lending strategies. Offering customized financial products to cater to the diverse needs of different industries and firm sizes can improve credit allocation efficiency and foster long-term relationships with clients. This approach would not only benefit firms but also enhance the stability and profitability of financial institutions. In the broader context, the study calls for a collaborative approach to economic development. Policymakers, financial institutions, and corporate entities should work together to build a robust financial ecosystem that promotes innovation, reduces financing constraints, and enhances resilience. For Oman and similar economies, such collaborative efforts can significantly improve firms’ contributions to GDP growth, employment generation, and overall economic diversification.
In sum, the policy implications derived from this study are multifaceted, addressing firm-specific strategies, sector-specific interventions, and macroeconomic resilience. By implementing these measures, policymakers and stakeholders can create an environment that sustains profitability, fosters innovation, and promotes sustainable economic growth in emerging markets.
6.3. Limitations and Further Research
This study is not without limitations, which open several avenues for future research. First, although subsample analyses were conducted by firm size, industry type, and pre-/post-COVID-19 periods to test the robustness of the findings, these regressions inevitably reduced the number of observations, which may have led to less stable coefficient estimates. Moreover, the study did not perform formal statistical comparisons (such as Chow tests) to validate differences across subsamples. Future research could therefore employ these formal tests to confirm whether the observed variations across groups are statistically significant. In addition, greater transparency and consistency in industry classification and coding criteria would enhance replicability and comparability across studies. Future research could also expand on this study by examining the relationship between capital intensity, debt financing, and profitability across a broader set of emerging economies to account for regional and institutional differences. Investigating the roles of corporate governance, ownership structure, and managerial efficiency as mediators or moderators could provide deeper insights into firm-level dynamics. Industry-specific analyses and longitudinal studies could uncover how technological advancements or regulatory changes influence capital-intensive and debt-financed firms. Additionally, future studies could consider incorporating industry-specific growth indicators, such as sectoral output growth or ROI growth, to better understand how firms in stagnant or declining industries utilize their assets. This would provide a more nuanced perspective on the varying effects of capital intensity across industries at different stages of growth and demand, complementing aggregate economic measures such as GDP growth.