1. Introduction
Capital structure has been a cornerstone of corporate finance theory since the pioneering work of
Modigliani and Miller (
1958,
1963), who laid the foundation for understanding the optimal balance between equity and debt financing. Debt can enhance financial performance through leverage when its cost is lower than the economic return on assets, but excessive leverage may increase financial costs, strain liquidity, and raise default risk, particularly in volatile markets (
Jensen & Meckling, 1976;
Myers, 1984). This debate has given rise to several theoretical approaches—including trade-off, pecking order, and agency theories—that seek to explain how firms weigh the advantages of debt financing against its potential drawbacks.
The complexity is greater for SMEs because their structural characteristics tend to intensify both the beneficial and adverse consequences of leverage. Empirical findings on the leverage–performance nexus are mixed, with some studies reporting nonlinear relationships—often inverted U-shaped or U-shaped—depending on the leverage levels (
Le & Phan, 2017;
Molinari, 2013;
Orabi Awad & Mohamed Ali, 2022;
Zeitun & Goaied, 2022). At low debt levels, fixed interest costs and underinvestment risk may depress profitability; beyond a threshold, higher leverage may reflect stronger financial discipline or better project selection, thereby enhancing performance (
Chen & Hammes, 2004). These patterns justify modeling the relationship quadratically to capture potential turning points and test the competing predictions of the trade-off and pecking order theories.
In developing countries, SMEs are often undercapitalized and face barriers to external financing due to limited collateral, weak disclosure, and institutional constraints (
T. H. L. Beck et al., 2005). Such constraints hinder optimal capital structure decisions, making profitability more sensitive to changes in leverage (
Abor & Biekpe, 2009). Consequently, the trade-off between the need for external funding to support growth and the financial risks associated with debt is particularly acute for these firms. Investigating the leverage–performance relationship in this segment can shed light on the specific financial behaviors of SMEs and inform public policies aimed at enhancing access to finance for small productive enterprises.
This issue remains especially salient in Morocco’s agricultural sector, which is a strategic pillar of the national economy. According to the most recent data from the High Commission for Planning, agriculture contributes approximately 12% to GDP and accounts for about 20% of total exports, while providing employment to nearly 40% of the working population, predominantly in rural areas (
HCP, 2024,
2025). Within this landscape, agricultural SMEs and structured family farms continue to play vital roles in value creation, supply chain modernization, and ensuring food security. However, these enterprises face persistent financial constraints driven by income seasonality, exposure to climate risks, volatility in agricultural prices, and limited access to credit (
African Development Bank Group, 2019;
Louali, 2019).
Considering these challenges, the Moroccan government has made the modernization of the agricultural sector, particularly through support to SMEs and small-scale farms, a central priority of its “Green Generation” strategy. This policy draws upon the progress already achieved under the Green Morocco Plan while placing greater emphasis on sustainability, agricultural entrepreneurship, value chain development, and support for youth and high-potential small producers (
Département de l’Agriculture, 2020;
MAPMDREF, 2020). It also promotes the integration of modern technologies, environmentally sustainable methods, and the expansion of agri-food processing to strengthen competitiveness and resilience in the sector.
Financing is a key pillar in achieving these goals. To this end, public authorities have mobilized substantial resources through the general budget, dedicated funds such as the Agricultural Development Fund, and targeted subsidies. Simultaneously, the private banking sector has engaged in this momentum by developing credit lines tailored to agriculture, introducing financial products adapted to the sector’s inherent risks, and forming partnerships with public institutions, such as Crédit Agricole du Maroc.
Despite these efforts, the issue of optimal debt levels and their impact on the financial outcomes of agricultural SMEs remains empirically underexplored in the Moroccan context. However, a nuanced understanding of this relationship is crucial for informing agricultural entrepreneurs’ financing decisions, guiding lending strategies, and fine-tuning public support mechanisms in the agricultural sector. This study aims to address this gap by rigorously examining whether the relationship between financial leverage and performance is linear or nonlinear in a strategically important sector characterized by both structural vulnerabilities and significant opportunities for transformation.
The regression analysis reveals a consistent negative link between leverage and the performance of Moroccan agricultural SMEs, using return on assets (ROA) as the indicator. The results from both fixed effects and GMM estimators show that short-term (STLEV) and long-term (LTLEV) debt have a statistically significant detrimental impact on operating profitability. However, the analysis also reveals evidence of a non-linear relationship between long-term leverage and ROA. Specifically, while the marginal impact of LTLEV is initially negative, it becomes positive beyond a certain threshold, suggesting a U-shaped dynamic. This implies that high levels of long-term debt may eventually enhance profitability, potentially by supporting productive investments. In contrast, short-term debt consistently impairs performance at all leverage levels.
While numerous international studies have examined the leverage–performance nexus, in-depth empirical analyses remain scarce in Morocco, particularly within the agricultural sector. Moreover, recent findings in the literature are often heterogeneous and sometimes contradictory, suggesting that the leverage–performance relationship is strongly influenced by context-specific conditions (
Abor, 2007;
Salim & Yadav, 2012).
This study contributes to both theory and practice by providing novel insights into this relationship within the agricultural sector of a transitioning economy. It also offers a testing ground for the applicability of canonical corporate finance theories under conditions of data scarcity, institutional constraints, and economic vulnerability.
From a policy perspective, our findings can inform agricultural financing strategies at both the governmental and institutional levels. Specifically, the U-shaped nature of the leverage–performance relationship underscores the importance of not only improving credit access for SMEs but also calibrating support mechanisms to firms’ optimal debt threshold. Public agencies, such as the Agricultural Development Fund, and banks, such as Crédit Agricole du Maroc, can use these insights to better tailor credit-scoring models, subsidy schemes, and financial literacy programs. Simultaneously, SME managers and agricultural entrepreneurs can benefit from these results when structuring their capital to enhance profitability while managing risks.
A further contribution lies in the study’s exclusive focus on Moroccan agricultural SMEs—a segment that faces chronic liquidity constraints, limited access to formal finance, and pronounced information asymmetries. While much of the existing research focuses on large or listed firms, empirical studies using firm-level data in the agricultural SME sector are notably rare. To the best of our knowledge, no empirical research has examined the applicability of the predominant capital structure theories in this specific context.
Accordingly, this study provides fresh evidence on how leverage relates to performance in a context that remains both challenging and underexplored. Specifically, it examines whether financial leverage significantly affects firm performance, measured by return on assets (ROA), and whether the relationship is nonlinear, potentially indicating an optimal debt threshold. Two central research questions guide the analysis: (1) Is there a statistically significant relationship between financial leverage and the financial performance of Moroccan agricultural SMEs? and (2) Does this relationship exhibit a nonlinear pattern, indicating the presence of a turning point in the impact of leverage on performance?
The remainder of this paper is structured as follows:
Section 2 presents the literature review and the development of the research hypotheses;
Section 3 outlines the methodological framework;
Section 4 reports the main empirical results;
Section 5 analyzes these findings and includes robustness checks; and
Section 6 concludes the paper by discussing the main policy implications, outlining the study’s limitations, and suggesting avenues for future research.
2. Literature Review
2.1. Theoretical Perspective
Investigating the capital structure of SMEs, especially medium-sized firms, is a complex task, as it requires assessing how debt usage influences performance through financial leverage. Most prior research has focused on large, often publicly listed corporations, leaving SMEs relatively understudied in theoretical frameworks (
T. H. L. Beck et al., 2005;
Colot & Croquet, 2007;
Berger & Udell, 1998). As noted by
Denis (
2004), dominant capital structure theories only partially account for SME-specific characteristics, such as information asymmetry, agency conflicts, and limited access to external finance (
Ang, 1991). Nonetheless, these theories remain relevant for understanding SMEs’ financial decisions, notably in weighing the fiscal advantages of debt against the potential risk of financial distress. Therefore, capital structure choices are strategic long-term decisions that critically influence SMEs’ growth and sustainability (
Kumar & Rao, 2015). Several studies have demonstrated that financing choices play a decisive role in shaping the growth paths of SMEs (
T. Beck & Demirguc-Kunt, 2006;
Carpenter & Petersen, 2002), which underscores the need to adapt theoretical frameworks to the specific economic realities of these firms—especially in under-researched sectors such as agriculture.
To guide the analysis of SMEs’ financing behavior, particularly in agriculture, three dominant theoretical approaches offer insights into SMEs’ financing behavior, including those in the agricultural sector: the trade-off theory, the pecking order theory, and the agency cost theory.
The trade-off theory posits that firms establish their capital structure by weighing the tax benefits of debt against its costs, especially those related to bankruptcy and agency issues (
Kraus & Litzenberger, 1973;
Myers, 1984). Rooted in the foundational work of
Modigliani and Miller (
1958,
1963), this theory asserts that the tax deductibility of interest enhances firm value, making debt an attractive option. However, as indebtedness rises, so does the likelihood of financial distress (
Titman & Wessels, 1988;
Warner, 1977) and the potential for conflicts between creditors and shareholders (
Jensen & Meckling, 1976), which together elevate the cost of capital. Therefore, firms are expected to identify an optimal debt ratio that maximizes returns while containing risk (
Bradley et al., 1984;
Miller, 1977). From this perspective, the capital structure reflects a calculated balance between tax benefits and the risks of financial strain, which is a particularly critical consideration for SMEs that must balance growth ambitions with limited financial resources.
The pecking order theory (POT), advanced by
Myers (
1984) and later by
Myers and Majluf (
1984), challenges the notion of a universally optimal capital structure. Instead, it proposes a financing hierarchy in which firms prefer to use internal resources first, debt second, and equity as the last option. This order is motivated by the desire to limit the costs associated with information asymmetries between managers and outside investors. Within this framework, more profitable firms rely less on external borrowing, leading to lower leverage ratios. Consequently, an inverse relationship is expected between profitability and indebtedness (
Abel, 2018), as higher profits reduce reliance on debt and related financial costs. As noted by
Baker (
1973), this bidirectional dynamic between profitability and leverage continues to fuel the theoretical debate regarding the role of capital structure in shaping firm performance.
Lastly, agency theory, developed by
Jensen and Meckling (
1976), provides a complementary perspective by focusing on potential conflicts of interest between the firm’s stakeholders, particularly between shareholders and managers or managers and creditors. The firm is viewed as a nexus of contracts among self-interested agents, each pursuing distinct objectives. In this context, financing decisions are shaped by agency costs, which include monitoring expenses, imposed constraints, and opportunity costs stemming from suboptimal decision making (
Bradley et al., 1984;
Kester, 1986;
Titman & Wessels, 1988). These costs tend to be higher in SMEs because of their more informal governance structures and lower transparency (
Michaelas et al., 1999;
Pettit & Singer, 1985). Debt financing may exacerbate some conflicts, particularly with creditors, but it can also mitigate others by limiting excess free cash flow that can be diverted to discretionary or opportunistic projects. Thus, the capital structure plays a key role in regulating agency relationships.
Taken together, these theories provide complementary perspectives for interpreting SME financing decisions under conditions of uncertainty and constraint. The trade-off theory underscores the search for an optimal leverage point at which tax advantages are balanced against bankruptcy and agency risks, a particularly sensitive issue for SMEs with constrained financing options. In contrast, the pecking order theory stresses a practical financing sequence shaped by information asymmetries, in which profitable firms tend to avoid debt, thereby explaining the commonly observed negative link between profitability and leverage. Meanwhile, agency theory underscores the governance challenges and incentive misalignments typical of SMEs, in which informal management practices heighten agency costs and influence how debt shapes managerial behavior. Together, these three theories offer a multidimensional lens to understand how debt shapes SME performance—not only as a financial resource but also as a mechanism of control, signaling, and risk management—particularly in sectors as volatile and capital-intensive as agriculture.
Building on these theoretical foundations, we develop a framework in which financial leverage can influence firm performance in both linear and nonlinear ways, depending on its level and operating context. At low levels, debt may heighten financial fragility, increase interest burdens, and amplify agency costs, thereby reducing operating efficiency and asset returns. Conversely, beyond a certain threshold, leverage can relax capital constraints, finance productivity-enhancing investments, and impose managerial discipline. In Morocco’s agricultural sector, characterized by revenue seasonality, restricted access to formal finance, and reliance on public support, such effects are likely to vary across firms. The sector’s chronic liquidity constraints and preference for internal funds make the pecking order theory (POT) particularly relevant, as SMEs often avoid debt unless it is unavoidable. Nonetheless, agency theory offers complementary insights, given informal governance structures and low transparency, which may weaken debt’s disciplinary role, while trade-off theory provides a broader lens on balancing financing costs and benefits, even if its assumptions of rational optimization are less applicable in volatile, resource-limited environments. Accordingly, this study adopts the POT as the primary interpretive framework while integrating elements of the other theories to capture the multifaceted dynamics of leverage in Moroccan agricultural SMEs.
2.2. Empirical Evidence
The link between capital structure and firm performance has been a central topic in corporate finance; however, the evidence remains inconclusive. While certain studies identify a positive association between leverage and performance, consistent with signaling theory (
Myers & Majluf, 1984) and the financial discipline hypothesis (
Jensen, 1986), others report either adverse or insignificant effects. For instance,
Abor (
2005), using a sample of listed firms in Ghana, found that debt—especially short-term debt—is positively correlated with profitability, as measured by return on equity (ROE). Similarly,
Gill and Biger (
2011) studied 272 listed U.S. firms and concluded that debt exerts a positive and significant effect on profitability, suggesting that the most profitable firms are those that use financial leverage effectively.
In contrast, some studies point to the detrimental effects of debt on firm performance.
Salim and Yadav (
2012), using data from 237 Malaysian firms, found that although leverage boosts market-based indicators such as Tobin’s Q, it reduces accounting-based measures such as return on assets and return on equity, underscoring a discrepancy between investor perception and actual profitability.
Al-Taani (
2013), analyzing 45 Jordanian industrial firms, also identified a significant negative impact of leverage on performance. Likewise,
Hasan et al. (
2014) found that in Bangladesh, financial leverage deteriorates firm performance, suggesting that in emerging economies, the costs of debt may outweigh its benefits. In Vietnam,
Le and Phan (
2017) reported an overall detrimental effect of leverage on all key performance measures (ROA, ROE, and Tobin’s Q), which they attributed to high financing costs and significant risk exposure. In Central Europe,
Wieczorek-Kosmala et al. (
2021) showed that debt is generally negatively correlated with financial performance, except for short-term debt, which may occasionally support liquidity.
Firm size also appears to moderate this relationship.
Jaisinghani and Kanjilal (
2017) emphasized that leverage has a positive effect on the performance of large Indian firms but a negative effect on smaller ones, highlighting the importance of considering the structural specificities of SMEs in such analyses.
In the agricultural sector, a study by
Mugera and Nyambane (
2015) conducted in Western Australia on an initial sample of 4000 large farms provides valuable insights into the differentiated effects of debt maturity. Their findings indicate that short-term debt positively affects technical and scale efficiency but negatively influences return on assets (ROA), whereas long-term debt shows no significant relationship with firm performance.
While extensive research has documented the leverage–performance nexus (
Berger & Bonaccorsi di Patti, 2006;
Dawar, 2014;
Margaritis & Psillaki, 2010), relatively few studies have concentrated on SMEs. This gap is partly due to limited data availability and partly due to distinctive SME characteristics, such as restricted access to external finance, informal governance structures, and dependence on local markets (
Abor & Biekpe, 2009;
Psillaki & Daskalakis, 2009). Within this context, several empirical studies have attempted to examine how leverage influences SME performance while considering these contextual constraints.
Abor (
2007), studying SMEs in Ghana and South Africa, concluded that both long-term and overall debt ratios reduce firm performance, implying that agency issues may drive firms to adopt excessive debt, thereby lowering their profitability. Similarly,
Jha and Kumar Mittal (
2024), analyzing 226 Indian SMEs, found that debt generally exerts a negative effect on financial performance, except for trade credit, which provides short-term benefits. In contrast,
Kim (
2022), using a sample of 300 Vietnamese SMEs, identified a positive link between leverage and performance. Finally,
Wahba (
2013) highlights the differentiated effect of debt according to maturity in Egyptian SMEs: long-term borrowing supports performance, whereas short-term debt undermines it.
2.3. Hypotheses’ Development
Empirical research on the relationship between debt and financial performance reveals mixed results, especially among SMEs, whose structural characteristics significantly shape this relationship. Unlike large firms, SMEs—especially those operating in the agricultural sector—face significant financing constraints, strong dependence on local environments, informal governance structures, and volatile profitability. These characteristics limit their ability to fully benefit from the theoretical advantages associated with debt.
From a theoretical standpoint, several frameworks help elucidate this relationship. Trade-off theory (
Kraus & Litzenberger, 1973) posits that while debt generates tax advantages, these are counterbalanced by bankruptcy costs, which are often more significant for SMEs because of their financial vulnerability and restricted access to capital markets. As noted by
Ang (
1991), these firms often exhibit lower profitability and are subject to reduced tax rates, which diminishes the fiscal incentive to use debt. Pecking order theory (
Myers & Majluf, 1984) suggests that SMEs prioritize internal resources because of pronounced information asymmetries and resort to external borrowing only when other options are exhausted. Consequently, firms with higher profitability usually maintain lower debt ratios. Finally, agency theory (
Jensen & Meckling, 1976) highlights potential conflicts between creditors and managers, which are exacerbated in SMEs because of their informal governance and lack of transparency. This weakens the effectiveness of debt as a disciplinary mechanism.
In this context,
Ray and Hutchinson (
1984) argued that SMEs use debt less because they are more susceptible to bankruptcy risk. Similar arguments are advanced by
McConnell and Pettit (
1984) and
Pettit and Singer (
1985), who note that smaller firms face disproportionately high external financing costs. Financial institutions often perceive SMEs as riskier borrowers, leading to unfavorable credit conditions or partial exclusion from formal lending. Furthermore, stronger information asymmetries between lenders and SME managers exacerbate agency problems (
Jensen, 1986) and limit the ability of debt to serve as an effective disciplinary tool.
These constraints may cause SMEs to rely excessively on costly financing, leading to financial rigidity and lower profitability, particularly in income-volatile sectors such as agriculture. In light of these theoretical and empirical insights, the following hypothesis is proposed:
Hypothesis 1. Financial leverage negatively affects the performance of Moroccan agricultural SMEs.
Recent studies increasingly point to a nonlinear association between leverage and firm performance, showing that the effect of debt depends on its magnitude. The observed U-shaped-or inverted U-shaped patterns suggest that debt can be either beneficial or harmful, depending on whether leverage remains low or becomes excessive.
Zeitun and Goaied (
2022), analyzing 1670 Japanese listed firms using a fixed effects model, reported a U-shaped relationship between short-term debt (STDTD) and performance. Specifically, short-term debt ratios below 45.2% reduce performance, whereas higher ratios beyond that threshold are associated with positive effects. Similarly, in Egypt,
Orabi Awad and Mohamed Ali (
2022) analyzed a panel of 78 non-financial listed firms using a dynamic GMM model and a quadratic specification of leverage. Their results confirm a nonlinear association between financial leverage and performance indicators (ROA, ROE, and Tobin’s Q), showing a negative impact at lower levels of debt but a positive impact as leverage increases, thus supporting the U-shaped relationship.
Conversely,
Le and Phan (
2017), using data from Vietnamese firms, identified an inverted U-shaped relationship: low levels of debt are positively associated with profitability (particularly ROE), but beyond a certain point, additional leverage becomes counterproductive and deteriorates financial performance.
Such evidence highlights the need for more nuanced analyses of financial leverage, especially for SMEs. At relatively low levels, debt may impair SME performance because of bankruptcy costs (
Kraus & Litzenberger, 1973;
Modigliani & Miller, 1963), information asymmetry, and limited governance mechanisms that exacerbate agency problems (
Jensen, 1986). However, at higher levels, leverage may also play a disciplinary role (
Jensen, 1986), signal firm quality (
Myers & Majluf, 1984), and provide tax advantages, as suggested by trade-off, agency, and signaling theories. This dual effect is consistent with the hypothesis that the leverage–performance relationship is non-linear.
Hypothesis 2. The relationship between financial leverage and the performance of Moroccan agricultural SMEs is U-shaped: leverage has a negative effect at low levels, but a positive effect at higher levels.
4. Findings
4.1. Descriptive Statistics of Data
Descriptive statistics of the key variables are provided in
Table 6. The mean return on assets (ROA)—the main proxy for financial performance—stands at 1.5% with a standard deviation of 9%. Values range from −41.8% to 26.8%, reflecting wide disparities in operational efficiency among Moroccan agricultural SMEs.
This variability may reflect divergent business models, seasonal revenue patterns, and uneven access to capital or technical support. For comparison,
Mugera and Nyambane (
2015) report an average ROA of −4% for agricultural enterprises in Western Australia, while
Singh et al. (
2019) report an unusually high average ROA of 114% for U.S. farms. More moderate figures are reported by
Pokharel et al. (
2020), who indicate ROA and ROE values of 8.12% and 13.44%, respectively, for U.S. agricultural SMEs. These disparities likely stem from structural differences in productivity, institutional support, financial access, and technology adoption.
Regarding capital structure, short-term leverage (STLEV) averages 69.6% (with a std. dev. of 49.6%), indicating a strong reliance on current liabilities to finance operations. Long-term leverage (LTLEV) remains comparatively low at 6.3% on average (with a std. dev. of 12.2%), reflecting persistent challenges in accessing long-term financing.
Compared to international benchmarks, these figures reflect a distinctive financing profile. For instance,
Singh et al. (
2019) report an average financial leverage of 23% for U.S. farms between 2009 and 2017, while
Mugera and Nyambane (
2015) found average short-term and long-term debt ratios of 4% and 9%, respectively, for Western Australian farms over 1995–2005. The elevated STLEV in our sample may point to working capital constraints, underdeveloped capital markets, or limited financial planning practices among Moroccan agricultural SMEs.
Overall, the wide dispersion of leverage and performance measures in the sample indicates considerable heterogeneity in capital structure, financial health, and operational strategies, reinforcing the need for nuanced econometric modeling in the subsequent analysis.
To evaluate distributional assumptions, skewness and kurtosis metrics were examined. Following
Brooks (
2018), approximately normal distributions are characterized by a skewness value within ±1.9 and a kurtosis value within ±3. The observed variables do not meet these thresholds, indicating non-normality in the data distribution. However,
Greene (
2012) emphasizes that regression does not require normally distributed variables; what matters is that residuals approximate normality and classical assumptions hold. With a sufficiently large sample, the central limit theorem ensures that estimator distributions converge toward normality, supporting valid inferences (
Greene, 2012;
Wooldridge, 2013).
4.2. Correlation Analysis
Table 7 displays the correlation matrix for the study variables. Several significant associations emerge, offering initial insights into the linkages among firm characteristics, leverage, and financial performance.
Return on assets (ROA) is negatively correlated with short-term leverage (STLEV) (r = −0.280, p < 0.01), suggesting that an increased reliance on short-term debt tends to reduce asset-based profitability. ROA also shows positive, though moderate, correlations with liquidity (LIQUID) (r = 0.206, p < 0.01), tangibility (TANG) (r = −0.165, p < 0.05), and profit growth (PG) (r = 0.175, p < 0.05), indicating that more liquid and growing SMEs tend to exhibit better performance, while SMEs with high fixed asset intensity may experience operational inefficiencies.
A negative correlation is observed between short- and long-term leverage (r = −0.289, p < 0.01), highlighting a potential substitution effect in capital structure decisions. STLEV is also negatively correlated with firm size (SIZE) (r = −0.392, p < 0.01), liquidity (r = −0.292, p < 0.01), and asset tangibility (r = −0.241, p < 0.01), implying that smaller, less liquid SMEs with fewer tangible assets rely more heavily on short-term debt.
In contrast, LTLEV is positively associated with both SIZE (r = 0.205, p < 0.01) and TANG (r = 0.381, p < 0.01), suggesting that larger SMEs with stronger collateral assets are more likely to secure long-term financing, consistent with capital market expectations.
Moreover, firm age (AGE) shows a negative correlation with tangibility (−0.331, p < 0.01), possibly reflecting changes in asset structures as firms mature. Finally, SIZE is inversely associated with liquidity (r = −0.275, p < 0.01), indicating that smaller SMEs tend to hold higher liquidity buffers, possibly due to precautionary motives or limited reinvestment opportunities.
These correlations offer preliminary support for several expected theoretical relationships and underscore the importance of accounting for firm-specific factors in the regression analyses that follow.
4.3. Regression Results
4.3.1. Pooled OLS, Random Effects, and Fixed Effects Regressions
The estimation results from the OLS, Fixed Effects (FE), and Random Effects (RE) models are presented in
Table 8.
Across all specifications, short-term leverage (STLEV) exhibits a negative and strongly significant effect on ROA, confirming the robustness of this relationship and underscoring the financial strain associated with elevated levels of short-term debt. Long-term leverage (LTLEV) also has a negative coefficient, reaching significance at the 10% level in the FE and RE models, pointing to a weaker yet still detrimental impact on performance.
The explanatory power of the models is moderate, with adjusted R-squared values ranging from 17% to 44% in the FE estimation. Furthermore, the F-statistics yield p-values below 1% in all regressions, confirming the joint statistical significance of the explanatory variables.
Regarding the control variables, asset tangibility (TANG) consistently displays a negative and significant effect at the 5% level across models. Profit growth (PG) positively and significantly influences ROA at the 5% level, while liquidity (LIQUID) shows a positive and highly significant association under the FE and RE specifications (1% level). By contrast, firm size (SIZE) and age (AGE) display no significant effects.
4.3.2. Fixed Effects Estimations with Robust Standard Errors and Cross-Section Weights
Based on the results from the Hausman test, Lagrange multiplier test, and Dougherty procedure (2011), the fixed effects model was adopted as the preferred specification for the ROA estimation. However, to correct for heteroskedasticity and autocorrelation in the residuals, two robust approaches were applied: FE with robust standard errors and FE with cross-section weights using estimated generalized least squares (EGLS).
Table 9 summarizes these results.
The explanatory power of the models is relatively strong, with adjusted R-squared values ranging from 44% (fixed effects with robust standard errors) to 82% (cross-section weighted estimation). In both specifications, the F-test confirms the joint statistical significance of the model, with p-values below the 1% threshold.
Short-term leverage (STLEV) and long-term leverage (LTLEV) exhibit negative and statistically significant effects on ROA at the 1% level across both estimations. Specifically, under the fixed effects model with robust standard errors, a 1% increase in STLEV is associated with a 0.28% decrease in ROA, while a 1% increase in LTLEV corresponds to a 0.21% decline in ROA. These results confirm and reinforce the earlier OLS, FE, and RE outcomes, offering consistent evidence that leverage exerts a detrimental effect on the performance of Moroccan agricultural SMEs.
Remarkably, while firm size (SIZE) and firm age (AGE) initially showed no significant impact under the OLS, FE, and RE estimations, the robust models reveal a positive and significant effect of SIZE at the 5% level and a negative effect of AGE at the 1% level, according to the model with cross-section weights.
6. Conclusions and Discussion
Overall, this study analyzes the leverage–performance nexus in Moroccan agricultural SMEs using ROA as the key performance metric. Based on panel data for 54 firms from 2017 to 2022, the results consistently show that both short- and long-term leverage reduce profitability. This finding holds across all estimation methods, including fixed effects models, robust specifications, and the dynamic GMM estimator, thereby reinforcing the conclusion that higher debt levels—regardless of maturity—tend to weaken operating profitability in this sector.
Further analysis of non-linear effects reveals that while STLEV maintains a consistently negative impact in both its linear and quadratic forms, LTLEV follows a U-shaped pattern: its linear coefficient is negative, but the squared term is positive and statistically significant. This suggests that, beyond a certain threshold, long-term debt may begin to support performance—possibly by enabling larger-scale investments or alleviating reliance on short-term liabilities. One plausible explanation is that firms reaching higher levels of long-term financing are typically more mature or better structured, allowing them to negotiate more favorable credit terms, allocate debt more efficiently, and use it to fund productivity-enhancing investments. In contrast, firms with limited access to long-term credit may be constrained by small-scale borrowing, which generates financial pressure without meaningful performance gains.
The negative impact of leverage in the context of Moroccan agricultural SMEs can be attributed to several structural and contextual factors. On the one hand, these enterprises often face unfavorable financing conditions, characterized by high borrowing costs, strict collateral requirements, and restricted access to long-term funding (
T. Beck & Demirguc-Kunt, 2006;
Stein et al., 2013). This results in increased pressure on cash flow and higher financial expenses, directly affecting profitability. On the other hand, weak governance structures—often marked by informal or family-based management—intensify agency costs associated with debt financing (
Jensen & Meckling, 1976), thereby diminishing the potential benefits of financial leverage.
In the agricultural sector, these constraints are further exacerbated by high exposure to climate-related risks, seasonal income fluctuations, and price volatility in commodity markets (
FAO, 2016;
OECD, 2020). The uncertainty of cash flows heightens the risk of default, especially in developing countries where risk mitigation mechanisms remain underdeveloped. Moreover, high debt levels can lead to credit rationing, as lenders become increasingly reluctant to finance already leveraged firms (
Stiglitz & Weiss, 1981), limiting their opportunities for investment, innovation, and modernization. Additionally, financial management practices within agricultural SMEs tend to be poorly formalized. These firms often operate with rudimentary budgeting processes, limited knowledge of debt management tools, and a short-term focus in financial decision making (
Berger & Udell, 1998). Under such conditions, debt is frequently misused, and instead of enhancing productive capacity, it increases financial vulnerability. Finally, in emerging economies, including Morocco, agricultural credit markets remain underdeveloped and segmented, restricting financing alternatives for small farms (
World Bank Group, 2019). This situation reinforces dependence on traditional bank loans, which are often ill-suited to the specific needs of the agricultural sector.
The study’s findings yield multiple theoretical and practical implications. From a theoretical perspective, they support the relevance of the pecking order theory in the context of agricultural SMEs in emerging markets, where internal financing remains the preferred option due to persistent information asymmetries and high borrowing costs. They also provide partial support for agency theory, as weak governance structures tend to amplify the cost-related disadvantages of debt. From a managerial perspective, the results suggest that modest, poorly structured long-term borrowing can harm performance, whereas larger, well-negotiated long-term credit facilities—combined with disciplined investment planning—can generate positive returns. SME owners should therefore improve financial records, strengthen governance practices, and adopt long-term strategic planning to access more favorable financing conditions. From a policy perspective, the study underscores the need for tailored long-term financing products for agricultural SMEs, the expansion of credit guarantee schemes to reduce collateral constraints, and the promotion of rural financial literacy programs to ensure debt is allocated to productive investments rather than short-term consumption smoothing. From a practical standpoint, agricultural SME managers are advised to (i) prioritize internal financing where possible to limit debt-servicing pressure; (ii) avoid maturity mismatches by refraining from financing long-term investments with short-term loans; (iii) build creditworthiness through transparent financial reporting to secure better loan terms; and (iv) diversify funding sources—such as cooperatives, microfinance, and supplier credit—to reduce dependence on traditional bank loans.
While the study makes meaningful contributions, certain limitations should be acknowledged. The dataset, consisting of 54 agricultural SMEs across six years, may not fully capture the heterogeneity of the sector, thereby limiting generalizability. Although the dataset was rigorously constructed from official financial statements obtained via the Directinfo platform, and robust panel data techniques such as fixed effects with robust standard errors and the dynamic GMM were employed to enhance estimation reliability, the sample is not intended to be statistically representative of the broader population of Moroccan agricultural SMEs. Accordingly, the findings should be interpreted with caution and considered exploratory in nature. Second, restricted access to detailed financial information from privately held agricultural SMEs constrained the range of financial indicators that could be included in the analysis, potentially introducing omitted variable bias.
Future research should aim to address these limitations by expanding the sample size, extending the observation period, and incorporating more granular data. In addition, examining the role of external factors—such as government policies, macroeconomic conditions, and access to financial markets—could provide a more comprehensive understanding of how leverage influences performance in Moroccan agricultural SMEs.