1. Introduction
In recent years, corporate sustainability has emerged as a critical focus for businesses worldwide, driven by increasing environmental concerns, stakeholder pressures, and regulatory requirements. This paradigm shift has brought corporate sustainability development (CSD) and enterprise risk management (ERM) to the forefront of organizational strategies, particularly in developing economies striving to balance industrial growth with environmental stewardship (
Goyal et al. 2021;
Mani and Wheeler 1998).
Corporate sustainability development refers to the integration of economic, environmental, and social considerations into business operations and decision-making processes (
Hörisch et al. 2020;
Schaltegger et al. 2016). It encompasses a wide range of initiatives aimed at reducing environmental impact, enhancing social responsibility, and ensuring long-term economic viability. Recent studies have reinforced the importance of integrating CSD into business practices. For instance,
Eccles et al. (
2014) found that companies with strong sustainability practices demonstrate better operational performance and are more resilient during crises. Additionally, a meta-analysis by
Friede et al. (
2015) revealed a positive correlation between corporate financial performance and ESG (Environmental, Social, and Governance) criteria, underscoring the business case for sustainability. These findings are further supported by recent research from (
García-Sánchez et al. 2019), who demonstrated that sustainability practices contributed to improved financial performance and reduced risk in firms across various industries.
Enterprise risk management, on the other hand, is a comprehensive approach to identifying, assessing, and mitigating potential threats to an organization’s objectives and operations (
Bohnert et al. 2019;
Bromiley et al. 2015). The integration of CSD into ERM has gained traction as organizations recognize the interconnectedness of sustainability issues and business risks. A study by
Flammer and Kacperczyk (
2019) found that companies integrating sustainability into their core strategies experience lower stock price crash risk, suggesting enhanced risk management capabilities. Similarly,
Shahzad et al. (
2020b) demonstrated that firms with robust sustainability practices are better equipped to manage environmental and social risks, leading to improved financial performance. These findings are corroborated by recent work from
Amel-Zadeh and Serafeim (
2018), who found that integrating ESG factors into investment decisions could lead to superior risk-adjusted returns.
In the context of developing economies, the manufacturing sector plays a crucial role in economic growth but also faces significant sustainability challenges (
Awan et al. 2021). Jordan, as a case in point, has seen its manufacturing sector grappling with the dual imperatives of industrial expansion and environmental protection (
Alastal et al. 2024). This context provides fertile ground for examining the intricate relationships between CSD, ERM, and emerging concepts such as GI.
GI, defined as the development and implementation of new products, processes, or services that contribute to environmental protection and sustainable resource use (
Tariq et al. 2017;
Ukko et al. 2019), has emerged as a potential bridge between sustainability goals and risk management strategies.
Zhang et al. (
2019) found that GI positively mediates the relationship between environmental regulations and firm performance, suggesting its potential role in linking sustainability practices with risk management and business outcomes. This finding is supported by recent research from
Nadeem et al. (
2020), who demonstrated that GI practices contribute to improved environmental performance and competitive advantage in manufacturing firms.
This study aims to examine the association between corporate sustainability development and enterprise risk management, with a particular focus on the mediating role of GI in the Jordanian manufacturing sector. By investigating this relationship, this study seeks to contribute to the growing body of literature on sustainable business practices and provide practical insights for managers in developing economies.
The significance of this study lies in its potential to bridge a critical gap in our understanding of how CSD, ERM, and GI interact in the context of developing economies, particularly within the manufacturing sector. This research addresses a pressing need identified by scholars and practitioners alike for more nuanced insights into sustainability practices in diverse economic settings (
Hussain et al. 2018). The manufacturing sector in developing countries like Jordan plays a crucial role in economic growth but also faces significant sustainability challenges (
Al-Ghwayeen and Abdallah 2018). By examining the interplay between CSD, ERM, and GI in this context, this study contributes to both theoretical understanding and practical application of sustainable business strategies. This is particularly important as developing economies grapple with the dual challenges of industrial growth and environmental protection (
Mani and Wheeler 1998).
Moreover, while previous research has explored CSD and ERM separately, few studies have examined their integration, especially with GI as a potential mediator (
Saunila et al. 2021;
Zhang et al. 2019). This study addresses this research gap, offering insights that could inform more effective sustainability strategies and risk management practices. This is crucial in an era where stakeholders increasingly demand that businesses address environmental and social issues while maintaining economic viability (
Eccles and Klimenko 2019;
García-Sánchez et al. 2019).
Furthermore, by focusing on the Jordanian manufacturing sector, this research provides valuable insights for policymakers and business leaders in similar developing economies. As these countries seek to balance economic growth with sustainable practices, understanding the dynamics between sustainability, risk management, and innovation becomes paramount (
Awan et al. 2021;
Nadeem et al. 2020). The findings could inform more effective policies and business strategies that promote sustainable industrial development while mitigating associated risks.
Theoretically, this study enriches the stakeholder theory (
Freeman 2010) and “Resource-Based View Theory” (RBV) (
Barney 1991) through the integration of CSD, GI, and ERM. According to the stakeholder theory (
Freeman 2010), businesses should disclose information and create value for all stakeholders, not just shareholders (
Shohaieb et al. 2022). Recent extensions of this theory by
Jones et al. (
2018) to include environmental stakeholders provide a robust framework for understanding how CSD initiatives can address diverse stakeholder expectations while simultaneously mitigating risks through ERM practices. This theoretical lens allows us to explore how GI can serve as a mechanism for aligning stakeholder interests with organizational objectives in the context of sustainability and risk management (
Tu and Wu 2021).
In conclusion, this study aims to contribute to the growing body of literature on sustainable business practices in developing economies, offering a nuanced perspective on the challenges and opportunities in balancing economic growth with environmental and social responsibilities. By examining the relationships between CSD, ERM, and GI in the Jordanian manufacturing sector, this study seeks to provide valuable insights for both academic research and practical application in similar economic contexts.
5. Data Analysis and Results
The analytical approach began with preliminary analyses using IBM SPSS 29.0, including data screening for outliers, normality, and multicollinearity, as well as an exploratory factor analysis. Harman’s single-factor test was conducted to check for common method bias (
Podsakoff et al. 2003). Subsequently, a Confirmatory Factor Analysis was employed using PLS 4.0 to assess the validity and reliability of measures, evaluating model fit using multiple indices: χ
2/df, CFI, TLI, RMSEA, and SRMR (
Hair et al. 2022). Hypothesis testing was conducted using structural equation modeling with maximum likelihood estimation in PLS 4.0. PLS-SEM was used due to several significant reasons. PLS-SEM enhances the validation of outcomes through different kinds of validity and reliability. Moreover, it separates measurement errors from the items and improves the accuracy of outcomes. Additionally, it is more suitable for mediation analysis and for non-normal empirical data sets.
5.1. Descriptive Statistics
The descriptive statistics (mean and standard deviation) of the main constructs are presented in
Table 2 and
Figure 2. The descriptive results indicate that enterprise sustainable performance had the highest mean score (3.3052) and enterprise risk management had the lowest mean score (2.33222). As regarding standard deviation, corporate development sustainability had the highest value (0.42098), while GI had the lowest score (0.32290). Additionally, the data normality assumption was corroborated by skewness and kurtosis scores (less than +/−2), as suggested by (
Wooldridge 2009).
5.2. Correlation Coefficients
This study used a Pearson correlation analysis (see
Table 3) to examine the intricate relationships among the main constructs of the study. The correlation matrix demonstrated that corporate development sustainability significantly positively related to green process innovation (r = 0.835,
p < 0.01), green organizational innovation (r = 0.590,
p < 0.01), green product innovation (r = 0.889,
p < 0.01), green technological innovation (r = 0.939,
p < 0.01), and enterprise risk management (r = 0.673,
p < 0.01). Similarly, green process innovation (r = 0.607,
p < 0.01), green organizational innovation (r = 0.927,
p < 0.01), green product innovation (r = 0.564,
p < 0.01), and green technological innovation (r = 0.853,
p < 0.01) were significantly associated with enterprise risk management.
5.3. Multi-Collinearity Statistics: Assessing Model
In partial least squares structural equation modeling (PLS-SEM), assessing multi-collinearity is crucial for ensuring the stability and reliability of the model. The Variance Inflation Factor (VIF) is a widely accepted metric for evaluating the degree of collinearity among predictor variables (
Hair et al. 2019). This study employed the VIF analysis to examine the potential presence of multi-collinearity in the PLS-SEM model.
Hair et al. (
2019) suggests that VIF values of five or greater indicate potential collinearity concerns. This threshold is widely accepted in the field of management research. It is important to note that VIF is calculated as the reciprocal of tolerance (1/Tolerance), implying that VIF values are always greater than or equal to 1. The absence of multi-collinearity would result in a VIF value of one, while increasing values indicate higher degrees of collinearity. The maximum VIF (see
Table 4) value observed in the model was 4.969, which falls below the commonly accepted threshold of 5 proposed by (
Hair et al. 2019). This indicates that multi-collinearity was not a significant concern in the model, supporting the statistical validity of the PLS-SEM analysis.
5.4. Validity and Reliability Analysis
Convergent Validity
To assess the validity and reliability of the constructs, a series of analyses were conducted using the partial least squares structural equation modeling (PLS-SEM) algorithm technique with 5000 subsamples. Validity refers to the extent to which a scale accurately measures the intended construct (
Hair et al. 2022). Construct validity encompasses both convergent and discriminant validity, which can be evaluated using established threshold values (
Sarstedt et al. 2022). Convergent validity, a crucial aspect of construct validity, assesses the degree to which multiple measures of the same construct are in agreement (
Henseler et al. 2015). In PLS-SEM, convergent validity is typically evaluated using two key criteria: factor loadings and average variance extracted (AVE). According to the recent literature, acceptable thresholds for these criteria are factor loadings >0.70 and AVE > 0.50 (
Henseler et al. 2015). To achieve satisfactory factor loadings, multiple iterations of the PLS algorithm were performed. This process resulted in the removal of several items due to factor loadings below the 0.70 threshold: Corporate development sustainability (CDS): three items removed (CDS3 = 0.317, CDS6 = 0.663, CDS9 = 0.674). The removal of items with low factor loadings is a common practice in PLS-SEM to improve model fit and construct validity (
Hair et al. 2022). However, it is important to note that the removal of items should be done cautiously, considering both statistical criteria and theoretical implications (
Ringle et al. 2020). After removing these items, the PLS algorithm was re-run, resulting in factor loadings for the remaining items meeting or exceeding the 0.70 threshold, as shown in
Table 5.
The second critical component of convergent validity is the average variance extracted (AVE) (
Hair et al. 2022;
Schaltegger et al. 2022). The AVE represents the amount of variance captured by a construct in relation to the variance due to measurement error (
Fornell and Larcker 1981). According to established guidelines, the AVE for each latent construct should exceed 0.50 to demonstrate adequate convergent validity.
Table 6 presents the AVE values for all latent constructs in the study. The results indicate that all constructs met or exceeded the recommended threshold of 0.50, providing strong evidence of convergent validity. Specifically, the AVE values for each construct were as shown in
Table 6.
5.5. Discriminant Validity
Discriminant validity is a crucial aspect of construct validity that assesses the extent to which constructs that are theoretically distinct are indeed unrelated in the measurement model (
Hair et al. 2022). It ensures that a construct is truly distinct from other constructs by empirical standards, thereby establishing the uniqueness of each construct in capturing phenomena not represented by other constructs in the model. In this study, discriminant validity was evaluated using two primary methods: cross-loadings’ examination and the Fornell–Larcker criterion. These methods are widely accepted in the literature and provide complementary evidence of discriminant validity (
Henseler et al. 2015).
5.6. Cross-Loadings’ Examination
The cross-loading approach posits that an indicator’s loading on its assigned construct should be higher than its loadings on all other constructs (
Hair and Alamer 2022).
Table 7 presents the cross-loadings’ matrix, which demonstrates that each indicator loaded most strongly on its associated construct, providing initial evidence of discriminant validity.
For instance, the indicators for corporate development sustainability (CDS1-CDS8) showed consistently higher loadings on their intended construct (ranging from 0.769 to 0.901) compared to their loadings on other constructs. This pattern was observed across all constructs, supporting the discriminant validity of the measurement model.
Fornell–Larcker Criterion
The Fornell–Larcker criterion offers a more stringent assessment of discriminant validity (
Fornell and Larcker 1981). This approach compares the square root of each construct’s average variance extracted (AVE) with its correlations with other constructs. Discriminant validity is established when the square root of a construct’s AVE exceeds its correlation with any other construct (
Hair and Alamer 2022).
Table 8 presents the Fornell–Larcker criterion results. The diagonal elements (in bold) represent the square root of the AVE for each construct, while off-diagonal elements are the correlations between constructs. The results in
Table 8 demonstrate that the square root of the AVE for each construct was greater than its correlations with other constructs, further confirming discriminant validity. For example, corporate development sustainability had a √AVE of 0.865, which was higher than its correlations with other constructs (ranging from −0.828 to 0.894 in absolute values).
5.7. Construct Reliability
Construct reliability is a crucial aspect of measurement model evaluation, assessing the internal consistency and stability of the measures (
Hair and Alamer 2022). In this study, two primary indicators of construct reliability were employed: Cronbach’s alpha and composite reliability.
5.7.1. Cronbach’s Alpha
Cronbach’s alpha is a widely used measure of internal consistency, reflecting the degree to which a set of items consistently measures the same construct. Traditionally, an alpha value greater than 0.70 has been considered acceptable (
Hair and Alamer 2022).
5.7.2. Composite Reliability
Composite reliability (CR) offers an alternative measure of internal consistency that addresses some limitations of Cronbach’s alpha, particularly its sensitivity to the number of items in the scale (
Hair and Alamer 2022). CR values above 0.70 are generally considered acceptable, indicating good internal consistency (
Fornell and Larcker 1981).
Table 9 presents the Cronbach’s alpha and composite reliability values for all constructs in the study. The results demonstrate strong internal consistency across all constructs. Cronbach’s alpha values ranged from 0.838 to 0.965, while composite reliability values ranged from 0.892 to 0.968, all exceeding the recommended threshold of 0.70
5.8. Structural Equation Modeling (SEM)
To test the hypothesized relationships among constructs, this study employed partial least squares structural equation modeling (PLS-SEM), a variance-based approach that is particularly suitable for complex models and exploratory research (
Hair and Alamer 2022).
The PLS-SEM algorithm was used to estimate the model parameters, followed by a bootstrapping procedure to assess the statistical significance of the path coefficients. The PLS-SEM approach, combined with bootstrapping, offered a robust framework for testing the hypothesized relationships, allowing for a nuanced interpretation of both the statistical and practical significance of the findings.
5.9. Direct Effects
The structural model (see
Figure 3) results, presented in
Table 10, elucidate the complex interrelationships among corporate development sustainability, enterprise sustainable performance, enterprise risk management, and GI in Jordanian manufacturing industries. These findings offer nuanced insights into the multifaceted nature of sustainability implementation in industrial contexts.
5.9.1. Corporate Development Sustainability and Enterprise Sustainable Performance
The analysis revealed a significant negative relationship between corporate development sustainability and enterprise sustainable performance (β = −0.259,
p = 0.004), supporting Hypothesis 1. This finding aligns with the “sustainability paradox” concept proposed by (
Hahn et al. 2017), which posits that firms may experience short-term performance declines as they transition towards more sustainable practices. The negative relationship may be attributed to the initial resource allocation and organizational restructuring required for sustainability initiatives, which can temporarily impact financial metrics (
Eccles et al. 2014).
5.9.2. Corporate Development Sustainability and Enterprise Risk Management
A strong negative relationship was observed between corporate development sustainability and enterprise risk management (β = −0.770,
p < 0.001), supporting Hypothesis 2. This unexpected finding challenges the conventional wisdom that sustainability practices enhance risk management capabilities (
Flammer and Ioannou 2021). However, it aligns with recent research by
Ortiz-de-Mandojana and Bansal (
2016), who argue that sustainability initiatives may initially disrupt established risk management processes, necessitating a reconfiguration of organizational practices. This result underscores the need for a more dynamic and adaptive approach to risk management in the context of sustainability transitions, as proposed by
Linnenluecke (
2017) in her work on resilience in business and management research.
5.9.3. Corporate Development Sustainability and Green Innovation
Corporate development sustainability demonstrated a strong positive relationship with GI (β = 0.894,
p < 0.001), supporting Hypothesis 3. This finding corroborates the recent literature on the innovation-driving potential of sustainability initiatives (
Klewitz and Hansen 2014;
Xie et al. 2019). The strong positive effect suggests that firms investing in corporate development sustainability are more likely to engage in GI activities, potentially creating new market opportunities and competitive advantages.
This relationship aligns with the natural-resource-based view of the firm (
Hart and Dowell 2011), which posits that environmentally proactive strategies can lead to the development of valuable organizational capabilities, including innovation capacity.
5.9.4. Green Innovation and Enterprise Sustainable Performance
Interestingly, GI showed a significant negative relationship with enterprise sustainable performance (β = −0.637,
p < 0.001), supporting Hypothesis 4. While counterintuitive, this finding is consistent with recent research on the “innovation-performance paradox” in the context of sustainability (
Maletič et al. 2016). The negative relationship might be attributed to the high initial costs and uncertain returns associated with GI projects, particularly in the short term.
Tang et al. (
2018) suggest that this negative relationship may be more pronounced in industries with long product development cycles and high capital intensity, characteristics typical of many manufacturing sectors. This contextual factor could be particularly relevant for Jordanian manufacturing industries.
5.9.5. Green Innovation and Enterprise Risk Management
Finally, GI demonstrated a strong positive relationship with enterprise risk management (β = 1.537,
p < 0.001), supporting Hypothesis 5. This finding aligns with the recent literature on the risk-mitigating potential of sustainability-driven innovations (
Flammer and Bansal 2017;
Ortiz-de-Mandojana and Bansal 2016). The strong positive effect suggests that firms engaging in GI are better positioned to identify and manage sustainability-related risks, enhancing their overall resilience. This relationship underscores the potential of GI to serve as a strategic risk management tool, particularly in the face of increasing environmental regulations and stakeholder pressures (
Saardchom 2016).
Table 10.
Path coefficients.
Table 10.
Path coefficients.
| β | T-Value | p-Value |
---|
H1. Corporate development sustainability -> enterprise sustainable performance | −0.259 | 2.893 | 0.004 |
H2. Corporate development sustainability -> enterprise risk management | −0.770 | 7.807 | 0.000 |
H3. Corporate development sustainability -> green innovation | 0.894 | 78.360 | 0.000 |
H4. Green innovation -> enterprise sustainable performance | −0.637 | 7.660 | 0.000 |
H5. Green innovation -> enterprise risk management | 1.537 | 19.345 | 0.000 |
In conclusion, these findings provide a nuanced understanding of the complex dynamics among corporate development sustainability, enterprise performance, risk management, and GI in the context of Jordanian manufacturing industries. The results highlight the need for a more holistic and long-term perspective when evaluating the impacts of sustainability initiatives on organizational outcomes. Future research could explore the temporal aspects of these relationships, potentially uncovering how they evolve as firms progress in their sustainability journeys and as institutional environments adapt to support.
5.10. Mediation Analysis
The mediation analysis results, presented in
Table 11, provide critical insights into the complex interrelationships among corporate development sustainability, GI, enterprise risk management, and enterprise sustainable performance. These findings contribute to the evolving discourse on sustainability-driven organizational outcomes in manufacturing contexts.
5.10.1. Green Innovation as a Mediator between Corporate Development Sustainability and Enterprise Risk Management
The analysis revealed that GI significantly and positively mediated the relationship between corporate development sustainability and enterprise risk management (β = 1.374,
p < 0.001), supporting Hypothesis 6. This finding aligns with the dynamic capabilities framework (
Teece 2018) and recent empirical evidence on sustainability-oriented innovation (
Bocken and Geradts 2020;
Kusi-Sarpong et al. 2019).
The strong positive mediation effect suggests that corporate sustainability initiatives foster GI capabilities, which in turn enhance an organization’s capacity to manage risks. This relationship can be understood through the lens of the “shared value” concept proposed by (
Kramer and Porter 2011), where sustainability practices lead to innovative solutions that address both environmental concerns and business risks.
Recent work by
Flammer and Bansal (
2017) provides further support for this finding, demonstrating that firms engaging in long-term-oriented strategies, including sustainability initiatives, exhibit superior risk management capabilities. Moreover,
Ortiz-de-Mandojana and Bansal (
2016) found that firms practicing social and environmental sustainability displayed greater resilience during economic crises, suggesting enhanced risk management through sustainable practices.
5.10.2. Green Innovation as a Mediator between Corporate Development Sustainability and Enterprise Sustainable Performance
Interestingly, GI significantly and negatively mediated the relationship between corporate development sustainability and enterprise sustainable performance (β = −0.570,
p < 0.001), supporting Hypothesis 7. While this negative mediation effect may seem counterintuitive, it aligns with the recent literature on the “tensions” and “paradoxes” in corporate sustainability (
Hahn et al. 2017). This finding can be interpreted through the lens of instrumental stakeholder theory (
Jones et al. 2018), which suggests that firms must balance the interests of various stakeholders, often leading to short-term trade-offs. The negative mediation effect may reflect the initial costs and organizational adjustments associated with GI initiatives, which can temporarily impact performance metrics. Recent empirical work by
Maletič et al. (
2016) supports this interpretation, demonstrating that the relationship between sustainability-oriented innovation practices and organizational performance is complex and often non-linear. Similarly,
Tang et al. (
2018) found that the impact of GI on firm performance could vary depending on the type of innovation and the institutional environment.
These mediation results underscore the multifaceted nature of sustainability-driven innovation and its impacts on organizational outcomes. They highlight the need for a more nuanced, context-specific approach when evaluating the effects of GI on risk management and performance.
5.11. Model Explanatory Power
The model’s explanatory power was assessed using the coefficient of determination (R
2) for endogenous latent variables, as recommended by (
Hair et al. 2019). R
2 values are interpreted as ≥0.25 (weak), ≥0.50 (moderate), and ≥0.75 (substantial) (
Henseler et al. 2015). As shown in
Table 12, the model demonstrated strong explanatory power. These R
2 values indicated substantial effects, suggesting that the model captured a significant portion of the variance in the endogenous constructs. R
2 values should be considered alongside other model evaluation criteria, such as predictive relevance (Q
2) and effect sizes (f
2), to provide a comprehensive assessment of model quality. Moreover, recent methodological advancements suggest complementing R
2 with the Standardized Root-Mean-Square Residual (SRMR) as a model fit criterion in PLS-SEM (
Hair et al. 2017).
6. Discussion
This study provided a nuanced examination of the relationships among corporate CDS, GI, ERM, and ESP within Jordanian manufacturing firms. The findings revealed complex dynamics that both supported and challenged existing theoretical frameworks, contributing significantly to our understanding of sustainable business practices in emerging economies.
To substantiate H0, the findings indicated that CDS had a negative influence on the ESP. These outcomes align with the “sustainability paradox” concept (
Hahn et al. 2017) and extend its applicability to emerging economy contexts. This finding suggests that Jordanian manufacturing firms may experience short-term performance declines as they transition towards more sustainable practices. This result is consistent with recent research by (
Eccles et al. 2014), who found that sustainability initiatives often required significant initial investments and organizational restructuring, temporarily impacting financial metrics. Further,
Ortiz-de-Mandojana and Bansal (
2016) argue that sustainability initiatives may initially disrupt established risk management processes, necessitating a reconfiguration of organizational practices. These results collectively suggest that the implementation of sustainability practices in Jordanian manufacturing firms may lead to short-term disruptions in both performance and risk management. However, they also point to the potential for long-term benefits, underscoring the need for a more nuanced, temporal understanding of sustainability impacts.
To authenticate H1, the findings displayed a strong positive impact of CDS on GI. These outcomes support the natural-resource-based view of the firm (
Hart and Dowell 2011) and corroborates the recent literature on the innovation-driving potential of sustainability initiatives. This finding suggests that Jordanian manufacturing firms investing in CDS are more likely to engage in GI activities. Similarly,
Bocken and Geradts (
2020) examined 42 large corporations and found that sustainability-oriented strategies acted as catalysts for various forms of innovation, including product, process, and business model innovations. Their study revealed that firms integrating sustainability into their core strategies were 3.1 times more likely to develop breakthrough innovations compared to those treating sustainability as a peripheral activity. However, the significant negative relationship between GI and ESP aligns with recent research on the “innovation-performance paradox” in sustainability contexts (
Maletič et al. 2016). This result suggests that Jordanian manufacturing firms may experience short-term performance declines due to the high initial costs and uncertain returns associated with GI projects. Additionally,
Tang et al. (
2018) conducted a longitudinal study of 267 manufacturing firms and found that while green product innovations led to improved financial performance in the long term, there was a significant negative impact on short-term profitability, particularly in the first two years following innovation implementation.
To validate the H2, the findings showed that GI significantly positively contributed to ERM. These outcomes support the recent literature on the risk-mitigating potential of sustainability-driven innovations. This finding suggests that Jordanian manufacturing firms engaging in GI are better positioned to identify and manage sustainability-related risks, enhancing their overall resilience. These results are consistent with
Flammer and Bansal (
2017), who examined a sample of 3005 publicly listed U.S. companies and found that firms engaging in long-term-oriented environmental strategies, including GI, exhibited superior risk management capabilities and were more resilient to environmental shocks.
To corroborate H3, the findings demonstrated that GI partially mediated the nexus between CDS and ERM. These findings align with the dynamic capabilities’ framework (
Teece et al. 1997) and recent empirical evidence on sustainability-oriented innovation. This result suggests that in Jordanian manufacturing firms, corporate sustainability initiatives foster GI capabilities, which in turn enhance an organization’s capacity to manage risks. These findings are corroborated by
Kusi-Sarpong et al. (
2019), who conducted a multi-country study of 241 manufacturing firms and found that GI practices mediated the relationship between sustainability orientation and operational risk management, explaining 57% of the variance in this relationship.
Furthermore, the findings also demonstrated that GI partially mediated the relationship between CDS and ESP. These outcomes align with the recent literature on the “tensions” and “paradoxes” in corporate sustainability (
Hahn et al. 2017). This finding can be interpreted through the lens of the instrumental stakeholder theory (
Jones et al. 2018), suggesting that Jordanian manufacturing firms must balance the interests of various stakeholders, often leading to short-term trade-offs. Additionally, a longitudinal study by
Xie et al. (
2019) of 209 Chinese manufacturing firms found that while GI negatively mediated the relationship between environmental management practices and short-term financial performance, it positively mediated this relationship when considering a five-year performance window.
In conclusion, these findings provide a nuanced understanding of the complex dynamics among corporate development sustainability, GI, enterprise risk management, and sustainable performance in Jordanian manufacturing industries. They highlight the need for a long-term perspective in sustainability implementation and underscore the critical role of GI in mediating the relationships between sustainability initiatives and organizational outcomes. The results call for more sophisticated theoretical frameworks that can account for the temporal dimensions and contextual factors influencing sustainable business practices in emerging economies.
6.1. Implications Section
Theoretical Implications
This study extends the application of the sustainability paradox concept of
Hahn et al. (
2017) to the Jordanian manufacturing context, demonstrating its relevance in emerging economies. This finding contributes to the growing body of literature on context-specific sustainability implementation. The findings challenge conventional wisdom regarding the relationship between sustainability practices and risk management, calling for more nuanced theoretical frameworks. This study contributes to the emerging literature on organizational resilience in the face of sustainability challenges. GI is a complex mediator: the study provides empirical support for the natural-resource-based view of the firm (
Hart and Dowell 2011) in the context of GI, while also contributing to the literature on the innovation–performance paradox in sustainability contexts (
Maletič et al. 2016). The findings on the mediating role of GI extend recent work by
Li et al. (
2023), advancing our understanding of the mechanisms through which sustainability practices influence firm performance and risk management.
6.2. Practical Implications
This study offers numerous worthwhile implications for top management, decision-makers, and owners. First, the findings demonstrate that CDS has a negative influence on the ESP. These outcomes suggest that managers should adopt a long-term view when implementing sustainability initiatives, preparing stakeholders for potential short-term performance declines. Second, our results show that GI significantly contributes to ERM. These findings recommend that managers of Jordanian manufacturing firms should opt for GI to effectively manage sustainability-related risks and enhance their overall resilience. Third, the findings demonstrate a strong positive relationship between corporate development sustainability and GI, which underscores the importance of viewing sustainability initiatives as drivers of innovation. Therefore, based on these outcomes, it is recommended that managers emphasize sustainability efforts for the effective adoption of GI. Managers should create organizational cultures and structures that support experimentation and learning in sustainability contexts, aligning with recommendations from
Bocken and Geradts (
2020). Last, the findings demonstrate that CDS is equally important for ERM and ESP, and GI partially mediates the nexus between CDS and ERM, as well as the relationship between CDS and ESP. This study implies that CDS is equally important for GI, ERM, and ESP. Furthermore, these findings recommended that promoting CDS directly and indirectly contributes to ERM and ESP. Given the complex relationships between GI, performance, and risk management, managers should adopt a balanced approach. While recognizing potential short-term costs, they should consider the long-term benefits in terms of risk mitigation and future competitive advantages.
6.3. Policy Implication
Based on the outcomes, this research offers remarkable implications for government officials and policymakers. The findings send an urgent signal to policymakers to promote sustainable development efforts among Jordanian firms; this can enhance GI and positively contribute to the SDGs. This study recommends that government officials and policymakers provide financial and non-financial support to Jordanian firms to practice sustainability initiatives and greener activities effectively. This may include incentives for long-term investments in sustainable technologies, support for GI networks, and the development of nuanced performance evaluation criteria for sustainable businesses. Policymakers should arrange education programs for top management and owners to educate and equip them with the necessary skills to implement sustainability initiatives and GI.
6.4. Conclusions
This study provided a comprehensive examination of the intricate relationships among corporate development sustainability, GI, enterprise risk management, and sustainable performance in Jordanian manufacturing industries. The findings revealed a complex interplay of effects that both supported and challenged existing theoretical frameworks. First, we found that corporate development sustainability initiatives could lead to short-term disruptions in both performance and risk management practices, aligning with the sustainability paradox concept (
Hahn et al. 2017). This highlights the need for a long-term perspective in sustainability implementation, particularly in emerging economy contexts. Second, the results underscored the critical role of GI as a mediator between sustainability initiatives and organizational outcomes. While GI enhances risk management capabilities, it may exacerbate short-term performance challenges, supporting recent work on the complex effects of sustainability-oriented innovations. Third, the study contributed to the growing body of literature on the context-specific nature of sustainability implementation in emerging economies. The findings highlighted the unique challenges and opportunities faced by Jordanian manufacturing firms in their sustainability transitions. These results collectively call for a more nuanced and holistic approach to implementing sustainability practices in emerging economy contexts. They emphasize the importance of managing stakeholder expectations, developing adaptive organizational capabilities, and fostering supportive institutional environments to navigate the complexities of sustainable business transitions. By shedding light on both the challenges and opportunities associated with sustainability transitions, this study contributes to the ongoing academic discourse and offers valuable insights for practitioners. It underscores the need for a more sophisticated understanding of the temporal dynamics of sustainability implementations and their varied impacts across different organizational domains. In conclusion, the findings suggest that while the path to sustainable business practices in emerging economies may be fraught with short-term challenges, the potential long-term benefits in terms of innovation, risk management, and competitive advantage make it a journey worth undertaking. Future research should continue to explore these complex dynamics across diverse contexts and longer time horizons to further refine our understanding of sustainable business practices in an increasingly complex global environment.
6.5. Limitations and Future Research Section
While this study provides valuable insights, several limitations offer opportunities for future research. First, the cross-sectional nature of data limits the ability to capture dynamic and potentially non-linear relationships over time. Future research should employ longitudinal designs to examine how relationships between sustainability initiatives, GI, risk management, and performance evolve over different time horizons. Second, the focus on manufacturing industries in Jordan may limit the generalizability of findings to other sectors or countries. Future studies should explore these relationships in diverse industrial and national contexts, allowing for comparative analyses. Cross-country studies, particularly within emerging economies, could illuminate how varying institutional environments influence the examined relationships. Future scholar could study other industries in Jordan (such trading, services sector, etc.) to boost the generalizability of the findings. Third, while the study considered GI as a mediator, it did not differentiate between types of GI (e.g., green product, marketing, process, or organizational). Future research could adopt a more fine-grained approach to examining how different GI types (e.g., green product, green marketing, green process, or green organizational innovation) mediate the relationships between sustainability initiatives and organizational outcomes. Fourth, the reliance on self-reported measures may be subject to social desirability bias. Future studies should incorporate objective measures of sustainability performance and innovation outputs to complement subjective assessments. The integration of archival data on environmental performance, patent data for innovation outputs, and financial metrics could provide a more robust empirical foundation, as suggested by (
Xie et al. 2019). Fifth, while this study considered enterprise risk management as an outcome, it did not explore the specific mechanisms through which sustainability initiatives and GI influence risk management practices. Future research could delve deeper into these mechanisms, potentially incorporating qualitative methods to provide richer insights into the organizational processes involved. Sixth, future research could explore potential moderators of the relationships examined in this study. Factors such as firm size, ownership structure, or the presence of sustainability-oriented dynamic capabilities could influence how sustainability initiatives translate into innovation, risk management, and performance outcomes. Seventh, this study primarily focused on organizational-level outcomes. Future research could incorporate multiple stakeholder perspectives to gain a more comprehensive understanding of the impacts of sustainability initiatives. Finally, while this study focuses on the manufacturing sector, future research could explore how industry-specific factors influence the relationships between sustainability, innovation, and performance. Comparative studies across different industries could reveal sector-specific challenges and opportunities in sustainability implementation, building on work by (
Xie et al. 2019).
By addressing these limitations and pursuing the suggested research directions, scholars can continue to advance our understanding of sustainable business practices in emerging economy contexts. This will contribute to both theory development and practical guidance for managers and policymakers, ultimately supporting more effective and context-appropriate sustainability transitions in diverse global settings.