Abstract
The long-term viability of an organization hinges on social, environmental, and economic measures. However, based on extensive review of the literature, we have observed that measuring and improving the sustainable performance of supply chains is complex. We have grounded our theoretical framework in institutional theory and resource-based view and drawn thirteen hypotheses. We developed our instrument scientifically to validate our model and test our research hypotheses. The data was collected from the Indian auto components industry following Dillman’s total design test method. We gathered 205 usable responses. Following Peng and Lai’s (J Oper Manag 30(6):467–480, 2012) arguments, we have tested our model using variance-based structural equation modeling (PLS-SEM). We found that the constructs used for building our theoretical model possess construct validity and further satisfy the specified criteria for goodness of fit. The hypotheses test further suggests that coercive pressures under the mediation effect of top management belief and participation have significant influence on resource selection (i.e. supply chain connectivity and supply chain information sharing). The supply chain connectivity and supply chain information sharing have significant influence on environmental performance. Contrary to our belief, the normative and mimetic pressures have no significant influence on top management participation. The managerial implications of the findings are also discussed.
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1 Introduction
Amid high environmental uncertainty, the performance measurement systems (PMS) for supply chain sustainability are gaining increasing attention from academia and practitioners. Some of the operations and supply chain management scholars (see Ketchen and Giunipero 2004; Boyer and Hult 2005; Toptal and Çetinkaya 2017; Du et al. 2017; Kaur and Singh 2016; Wang and Gunasekaran 2017; Dubey et al. 2017) argue that the competitiveness of organizations is defined more by the competitiveness of their supply chains rather than by any other traditional measures or concepts. Kauppi (2013) further argues that, with the passage of time, economic considerations are not enough to sustain competitive advantage. Hence, social and environmental considerations, along with economic criteria, are equally important for any organization to sustain competitive advantage. Here comes the importance of integrating sustainability concepts with the supply chain. In the early stage, sustainability concepts in the supply chain were often misunderstood to be just economically rational to all stakeholders in the chain (Walley and Whitehead 1994; Jabbour et al. 2015; Brandenburg and Rebs 2015; Jindal and Sangwan 2016). Many scholars, like Min and Galle (1997, 2001), also clarified their stance on supply chain sustainability: that sustainability in the supply chain is not limited to cost reduction, but includes holistic measures that take the environment and society into consideration (Carter and Liane Easton 2011; Dyllick and Hockerts 2002; Garbie 2014). Hence, sustainable supply chain performance measures include environmental, social, and economic dimensions. Supply chain sustainability is not a management fad (Linton et al. 2007); rather, it is a pressing concern of emerging economies (Du et al. 2015). Managing supply chain sustainability is complex, because striking a balance between environmental, social, and economic issues requires significant effort (Massaroni et al. 2016).
While there is a rich body of literature on supply chain sustainability measurements, theory-focused research on supply chain sustainability and its measures are scant (Mollenkopf et al. 2010). Ketchen and Hult (2007) argue that how use of organizational theories often help to distinguish traditional supply chains from best value supply chains. Hoejmose and Adrien-Kirby (2012) further argue that many of the studies focusing on supply chain sustainability are purely descriptive; hence, the theoretical contribution of these studies is limited. Winter and Knemeyer (2013) further support these arguments by stating that many of the previous studies are focused on the identification of few constructs and their interrelationships, without sufficient theoretical justification. Kumar and Rahman (2016) argue that there are limited studies that have considered all three sustainability dimensions (social, economic, and environmental). Touboulic and Walker (2015) further argue that, in recent years, social sustainability has attracted significant attention from operations and supply chain management scholars. Pagell and Shevchenko (2014) argues that a majority of the studies in supply chain have explored the answers to “what”, with reference to SSCM, and that “how” is rarely touched upon. We argue that there is a need for theory-focused research to further our understanding of supply chain sustainability and its constructs. Organizational theories deal with formal organization and basic scientific fundamentals to increase management efficiency (Taylor 1947; Weber 2009). Organizational theories are “characterized by vogues, heterogeneity, claims and counterclaims” (Waldo et al. 1978). Hence, the selection of one or more organizational theories, with justification and proper fit to the area of study, is an important and difficult task. The use of organizational theories for giving fundamental theoretical support to various supply chain management concepts is not new (see Halldorsson et al. 2009; Ketchen and Hult 2007; Miri-Lavassani et al. 2009). However, Ketchen and Hult (2007) have noted that, despite increasing acceptance of the use of organizational theories in the operations and supply chain management (O&SCM) community, the use of organizational theory or the integration of two or more theories to explain complexity in supply chains is still in the nascent stage. Thus, our present study may be considered an attempt to answer the pressing call of the scholars who have advocated for theory-focused research to advance the existing boundaries of O&SCM literature. This doesn’t mean that nobody has so far attempted to use any of the organizational theories to build their arguments in the supply chain management domain (Zsidisin et al. 2005), but there have been very rare attempts, like Madhok (2002), to use a combination of more than one organizational theory for making use of their unique fundamentals to have a best fit of theoretical concepts and strong base.
In this context, resource-based view (RBV) theory can provide a better explanation of the interplay of the strategic resources of the organization and capability to gain competitive advantage (Taylor and Taylor 2009; Hitt et al. 2016). In recent years, RBV has gained significant attention among the operations and supply chain management (O&SCM) community (see Bowen et al. 2001; Rungtusanatham et al. 2003; Taylor and Taylor 2009; Hunt and Davis 2012; Gligor and Holcomb 2014; Brandon-Jones et al. 2014). RBV is the best fit to explain the path to gain competitive advantage by focusing on resources. The internal strengths and weakness of an organization are the ones that are easily controllable, rather than external opportunities and threats (Grant 1991). RBV of firms mainly focuses on those internal strengths and weaknesses (Grant 1991; Foss and Eriksen 1995). RBV theory in sustainable supply chain management suggests how competitive advantage can be gained by focusing on sustainability-based operations in supply chain (Touboulic and Walker 2015). Thus, we argue that RBV logic can explain the resource capability building and economic part of the business. Hence, in our context, RBV can be the natural best fit to become the base for all conceptual thoughts on the economic dimension of the sustainability performance of supply chain.
However, despite immense popularity, the antagonists of RBV have criticized that it has not looked beyond the properties of the resources and resource markets to explain the firm’s enduring heterogeneity (Oliver 1997). Oliver (1997) argues that RBV logic has not examined the social context within which resource selection decisions are embedded. Hence, to address the limitations of the RBV, Oliver (1997) proposes a theoretical framework based on the integration of RBV and institutional theory (IT). IT has been used extensively for building green supply chain frameworks (Sarkis et al. 2011) and adopting quality programs and technology applications (Barratt and Choi 2007; Nair and Prajogo 2009; Liu et al. 2010; Heras-Saizarbitoria et al. 2011). IT offers a better explanation when motivation for the adoption of practices or technology stems from legitimacy (DiMaggio and Powell 1983). There are three types of institutional pressures—coercive pressures (CP), mimetic pressures (MP), and normative pressures (NP)—which together constitute the force behind institutional isomorphism (DiMaggio and Powell 1983). All three factors act as the forces behind the actions of organizations to improve their social and environmental sustainability initiatives, through which they can attain better legitimacy and brand value. Thus, we strongly argue that institutional theory can be the second theory to be selected from all organizational theories, as it is the best fit to explain the social and environmental dimensions of the sustainability performance of supply chains (Seles et al. 2016).
A majority of the studies on sustainable supply chains have largely ignored SMEs. Following previous scholars’ arguments (see Min and Galle 2001; Pagell and Wu 2009; Asgari et al. 2016), we argue that sustainable supply chain management for SMEs may broaden our limited understanding of the supply chain sustainability. Gopal and Thakkar (2016a, b) argue that sustainability issues in supply chains with reference to the Indian auto components industry have received less attention than other emerging economies like Brazil and China. Greening or ensuring sustainability practices in (SMEs) in India is not easy when we consider many key practical challenges, like lack of availability of adequate and timely credit; limited access to equity capital; procurement of raw material at a competitive cost; inadequate infrastructure facilities, including power, water, and roads; low technology levels and lack of access to modern technology; and lack of skilled manpower for manufacturing, services, marketing, etc. (Singh et al. 2014). Major challenge areas to supply chain management are visibility, cost containment, risk management, increasing customer demands, and globalization (Butner 2010). Automotive supply chain is very complex, with multiple levels of networks and its size, and at a global level it is lagging behind other supply chains, like pharmaceutical and consumer goods, in terms of responsiveness, integration, and visibility (Bhattacharya et al. 2014). Sustainability issues are becoming more and more critical and a thriving topic within the automotive industry (Mayyas et al. 2012; Habidin et al. 2015). Kumar and Rahman (2016) conducted a study with reference to the Indian automotive supply chain, and noted that sustainability benefits and external forces have a positive influence on the commitment of top management in the adoption of sustainability practices. However, how these constructs affect the three measures of supply chain sustainability in the context of the SMEs in the Indian auto components industry is less understood. Hence, we specify our research question as: What are the distinct and joint effects of institutional pressures, top management commitment and strategic resources on social, environmental and economic performance?
We answer our research question based on a sample of 205 Indian automotive SMEs, using PLS-SEM. In doing so, we further add to the understanding of the links between the constructs drawn using RBV and IT logic and the performance measures based on triple bottom line (TBL) logic, thus contributing to supply chain sustainability measures in the context of SMEs within the Indian auto components industry. From a practitioner view, we provide theory-focused and empirically proven guidance for managers to understand what kind of strategic resources and capability under the influence of institutional forces may affect the environmental, social, and economic performance of the firm.
The paper is organized as follows. In Sect. 2, we illustrate our theoretical framework and develop our research hypotheses accordingly. In Sect. 3, we present our research design, including discussion of the operationalization of the constructs, sampling design, and data collection. In Sect. 4, we present our statistical analyses. In Sect. 5, we present our research discussion, including theoretical contributions, managerial implications, limitations, and further research directions. Finally, we have concluded our research.
2 Theoretical framework and hypotheses development
The theoretical framework creates a balance between the routine inductive and deductive theory, building research methods to further guide and lead the research community to the best managerial practices (Meredith 1993). O&SCM scholars have clearly acknowledged the need for clearly defined and distinct constructs and a theoretical framework to enhance understanding of the complex operations and supply chain phenomena (see New et al. 2000; Saunders 1995, 1998; Babbar and Prasad 1998; Chen and Small 1996; Ho et al. 2002; Chen and Paulraj 2004). We have grounded our framework in IT (DiMaggio and Powell 1983), RBV (Barney 1991; Hoopes et al. 2003) and TMC (Greenwood and Hinings 1996; Delmas and Toffel 2008). DiMaggio and Powell (1983) identify three basic types of institutional pressures: coercive pressures (CP), mimetic pressures (MP) and normative pressures (NP). These three pressures represent three distinct processes of institutionalization. RBV argues that an organization can create competitive advantage by creating a bundle of strategic resources and / or capabilities. According to Barney (1991), resources may be categorized as physical capital, human capital, and organizational capital and have been further extended to include financial capital, technological capital, and reputational capital (Grant 1991). Hence, they may be tangible, such as infrastructure, or intangible, such as information or knowledge sharing (Größler and Grübner 2006). Following, Greenwood and Hinings (1996) arguments that institutional theory does not offer explanation that how does the institutional pressures may translate into selection of the strategic resources to achieve sustainable performance. In the similar vein Delmas and Toffel (2008) argues that the relationships between organizational factors and the institutional pressures are not well established. To address, these limitations Greenwood and Hinings (1996) highlight the importance of internal dynamics within organizations. Hence, based on these arguments we argue that role of TMC as a mediating construct between institutional pressures and resources of the organization may help to extend the Oliver (1997) arguments. In short, the key elements of our theoretical framework are RBV, IT, TMC, and TBL (see Fig. 1). Hence, we have conceptualized a reflective framework. Next, we discuss our hypotheses development.
2.1 Linkage between coercive pressures (CP) and top management belief (TMB)
Based on Liang et al.’s (2007) contribution, we argue that the role of top management comprises two elements: top management belief (TMB) and top management participation (TMP). Past research indicates that the external environments have significant effect on TMB (see Liang et al. 2007). Based on belief-action-outcome (BAO) framework, Gholami et al. (2013) further argue that coercive pressures have a positive impact on senior management beliefs and attitudes, which, in turn, will become a controlling factor in the adoption of environmental sustainability practices. Chen et al. (2011) further argue that the coercive pressures have a significant influence on the attitude of top management. Top management attitude is one of the critical factors that decide the strategy and the sustainability adoption level into an organization’s operational level (Ageron et al. 2012; Klassen 2001). According to Zhu and Sarkis (2006), coercive pressures such as government rules and regulations have a positive influence on organizations to have better environmental performance. Hence, based on previous research, we hypothesize:
H1: Coercive pressure has a positive influence on top management belief.
2.2 Linkage between top management belief (TMB) and top management participation (TMP)
The psychological state and perceptions of top management on various things related to the management of an organization are referred to as top management belief (TMB), whereas top management participation (TMP) refers to the various behaviors and actions by top management on the business issues of an organization. TMB and TMP are the two pre-steps in the process of embracement of top management commitment (Liang et al. 2007). Akkermans et al. (1999) list top management involvement as one of the prerequisites to having an internationally successful supply chain and show how top management participation is influenced by their beliefs and perceptions. According to Min et al. (2004), top management belief and support are critical in setting up the direction for the organization, and the lack of it may become a barrier—and, as a result, functional managers will lack motivation and decision-making guidance. According to Chatterjee et al. (2002), top management can formulate vision and guidelines for managers and business based on their belief to assimilate the opportunities and risks of new technologies. Mello and Stank (2005) also assert the positive role of top management beliefs and participation in shaping the firm’s culture and orientation to supply chain success. Thus, we hypothesize it as:
H2: Top management belief has a positive impact on top management participation.
2.3 Linkage between coercive pressures (CP) and top management participation (TMP)
Liang et al. (2007) have found positive linkage between CP and TMP. Pressures from the market and customers due to high environmental awareness and social morality have a positive impact on the green practices of supply chains (Zhu and Sarkis 2007). Previous studies have widely accepted the positive and critical role of top management in achieving sustainability practices (see Gattiker and Carter 2010; Foerstl et al. 2010). Hence, based on the previous studies, we hypothesize:
H3: Coercive pressures have a positive influence on top management participation.
2.4 Linkage between normative pressure and top management participation
Top management confidence and participation are key factors influencing the success of the implementation of any technology, innovation, or management system in an organization (Hamel et al. 1989; Yeung et al. 2003; Zhu et al. 2008). To figure out the factors behind the effective implementation of ERP systems, Liang et al. (2007) empirically tested that the high level of normative pressure has a positive impact on top management participation. Ageron et al. (2012) have noted the lack of top management commitment and participation as one of the barriers to the adoption of sustainability practices into the supply chain. Based on existing literature, we hypothesize:
H4: Normative pressure has a positive influence on top management participation.
2.5 Linkage between mimetic pressure (MP) and top management participation (TMP)
Liang et al. (2007) argue that a high level of MP has a positive influence on TMP. MP also positively influences the attitude and the perception of top managers, which in turn decide their level of participation (Chen et al. 2011; Gholami et al. 2013). Zhu and Geng’s (2013) findings further support the previous findings that the top management of organizations in emerging economies have a strong tendency to mimic the actions and strategies of their successful competitors and peers. However, the relationship between MP and TMP has been rarely examined in O&SCM literature. Based on the existing literature, we hypothesize:
H5: Mimetic pressure has a positive influence on top management participation.
2.6 Linkage between top management participation (TMP) and supply chain connectivity (SCC)
Gunasekaran and Ngai (2004) argue that top management involvement and awareness have a positive impact on the strategies and goals of SCM and information technology adoption, both in terms of flexibility and in responsiveness to changing market requirements. Previous studies provide strong evidence in support of the positive influence of TMP and involvement in the adoption of technologies for better connectivity by organizations (Khalifa and Davison 2006; Lee et al. 2014). Management interest and participation are the key driving forces behind the investment decisions in technologies related to the sustainability performance of any organization (Nidumolu et al. 2009). Hence, based on previous studies, we hypothesize:
H6: Top management participation (TMP) has a positive influence on supply chain connectivity (SCC).
2.7 Linkage between top management participation (TMP) and quality of information sharing (IS)
The quality of information sharing has a positive impact on the level of integration between the partners in the supply chain (Prajogo and Olhager 2012). The role of top management in information sharing is widely acknowledged by many researchers in their studies (e.g., Lai et al. 2015; Kembro and Näslund 2014; Wu et al. 2014). They further argue that heavy investment in IT infrastructure may not ensure the quality of information sharing. Li and Lin (2006) argue that the willingness to share information and strategic collaboration depends on TMP. Top management has a critical role in ensuring the quality of information in the supply chain in a timely manner without any distortion (Feldmann and Müller 2003). Quality of information sharing and trust is an essential requirement for better collaboration in supply chains. There is a positive linkage between top management commitment and level of collaboration in supply chain (Ireland and Bruce 2000; Horvath 2001). Hence, we hypothesize:
H7: Top management participation has a positive influence on quality of information sharing.
2.8 Linkage between supply chain connectivity (SCC) and sustainability performance of supply chain (SSCP)
Supply chain connectivity improves the collaboration between the players in a supply chain (Fawcett et al. 2011). Collaboration has a positive impact on supply chain performance (Fugate et al. 2010; Cao and Zhang 2011). According to Chen et al. (2009), improved supply chain connectivity is the key factor behind efficient integration of supply chains that ultimately helps to improve supply chain efficiency by minimizing redundancy, reducing complexity, and improving relationships. Dell Computers has achieved significant improvement in their supply chain performance by ensuring better supply chain connectivity (Magretta 1998). Dell’s web-enabled supply chain helped them significantly reduce inventory levels and ensure negative cash conversion cycles with respect to their financial cycles (Fields 2002). Cisco Systems achievement in improved performance and collaboration in its global supply chain because of the implementation of its supply chain digital platform is another classic example of the positive impact of supply chain connectivity on supply chain performance (Enslow 2000; Sabath and Frentzel 1997). Further, integration improves information availability (Daugherty et al. 1995), efficiency (Flynn et al. 2010), and time and place utilization (Droge et al. 2004). Thus, improved supply chain connectivity leads to improved customer service and improved supply chain performance (Adams et al. 2014). Although there is a rich body of literature on SSC and financial and market performance, the research on SCC and TBL is scant. Hence, we extend the argument based on RBV logic that SCC has positive influence on TBL. Hence, we hypothesize:
H8a: Supply chain connectivity has a positive impact on the social performance of supply chains.
H8b: Supply chain connectivity has a positive impact on the environmental performance of supply chains.
H8c: Supply chain connectivity has a positive impact on the economic performance of supply chains.
2.9 Linkage between information sharing (IS) and sustainability performance of supply chain (SSCP)
Information systems enabling the timely sharing of data within the supply chain network are an essential requirement for ensuring efficient supply chain operations. The positive impact of information systems on supply chain performance is widely acknowledged by many researchers (Fawcett and Clinton 1996; Williams et al. 1997; Stank et al. 1999; Lambert and Cooper 2000; Lau and Lee 2000; Brandon-Jones et al. 2014). Timely and accurate information on inventories and stocks provided by logistics information systems help organizations minimize the inventory quantities and strategically allocate storage locations and logistics hubs in an optimum way (Chen et al. 2009). Information systems help ensure better collaboration and co-ordination and assist the entire chain in achieving the goal of acting as a single unit (Dewett and Jones 2001). Electronic data exchange is acute for maximizing the responsiveness and service advantage (O’Callaghan et al. 1992; Sutton 1997), to improve perceived value and minimize costs (Sutton 1997; Williams et al. 1997; Zhao et al. 2001). There is enough evidence in the literature on the positive linkage between collaboration through better information sharing and sustainable supply chain performance (Brandon-Jones et al. 2014; Dao et al. 2011; Lee and Whang 2000; Vachon and Klassen 2008; Melville 2010). Hence, we hypothesize:
H9a: Supply chain information sharing has a positive impact on the social performance of supply chains.
H9b: Supply chain information sharing has a positive impact on the environmental performance of supply chains.
H9c: Supply chain information sharing has a positive impact on the economic performance of supply chains.
3 Research design
3.1 Operationalization of constructs
To test our research hypotheses, we used a survey-based instrument. The constructs were drawn based on extensive literature review. We further pre-tested the questionnaire with the help of senior managers from the automotive industry in India with fifteen-plus years of experience and scholars with a strong research background. We rephrased or further modified the statements of our questionnaire based on the expert’s input to improve reliability and validity. We have operationalized the constructs in our theoretical framework as reflective constructs (see Table 1).
3.2 Data collection
In our study, we surveyed senior managers in Indian auto components manufacturing firms following Malhotra and Grover’s (1998) guidelines. Samples were drawn from the automotive components manufacturers association of India (ACMA) database. It is an apex body in India that represents the interest of over 750 auto components manufacturers. We sent the questionnaire, along with the cover letter, via e-mail following Dillman’s (2011) guidelines to the senior supply chain and procurement managers. We sent two reminders at an interval of 15 days to these respondents. Finally, we could gather 205 usable responses out of the total of 323 respondents (63.2% response rate) in a time span of four months.
3.3 Non-response bias (NRB) test
When data is collected over a period, there is a requirement to check the NRB of the responses (Chen and Paulraj 2004). The scholars have suggested an NRB test as a necessary practice before conducting statistical analyses (Blome et al. 2013). This is important because there is chance that the early responses may be different from the late responses. Hence, by taking this into consideration, we conducted an NRB test before testing research hypotheses. Following Armstrong and Overton’s (1977) suggestion, we conducted wave analysis. In the wave analysis, any possible statistical difference between the early response set of data and late response set of data is checked by using either a chi-square test or a t-test. Following Chen and Paulraj’s (2004) suggestions, we split the data into two equal halves and performed a t-test. No significant difference (\(p>\) .05) was observed between the two samples, and thus it can be inferred that non-response bias does not exist. Further, following Wagner and Kemmerling’s (2010) arguments, we have done further phone follow-ups with the non-respondents and collected their responses.
4 Data analyses
We have used Warp PLS version 5.0, which relies on the partial least squares (PLS) method to estimate the hypothesized relationships (Kock 2016). PLS is prediction-oriented and allows the researcher to assess the predictive validity of the exogeneous variables (Peng and Lai 2012; Kock 2016). This study aims to assess the predictive or explanatory power of the antecedent factors (e.g., CP, NP, MP, TMB, TMP, SCC, and IS). The relationship between external pressures, TMC, and the resources of the organization, tangible and intangible, are not examined in the literature. Hence, PLS is appropriate for estimating such a complex structural equation model as proposed in our study (Peng and Lai 2012; Moshtari 2016). In conducting the model estimation, we have followed the Peng and Lai (2012) guidelines in two stages: examining the validity and reliability of the measurement model and analyzing the measurement model.
4.1 Common method bias
There is a high probability of common method bias (CMB) in the case of self-reported data from multiple sources (Podsakoff et al. 2003; Liang et al. 2007). We have conducted Harman’s one factor test by following the suggestions of Podsakoff and Organ (1986). The maximum value of covariance explained by any one factor was found to be 41%, which is less than 50% and indicates that common method bias is not a significant problem with our data and results.
4.2 Measurement model reliability and validity
The validity and reliability of the model is assessed using confirmatory factor analysis. ECOP2, SP4-SP10, and CP4 were excluded from further analyses as the factor loadings were found to be less than 0.5 (Hair et al. 2010). All remaining indicators shown in Appendix 4 have factor loading values greater than 0.5. Two types of construct validity (convergent and discriminant validity) are statistically assessed for the constructs considered in the study (Hair et al. 2010; Fawcett et al. 2014). We have considered composite reliability (CR) along with Cronbach’s alpha as a better measure of reliability (see Revelle and Zinbarg 2009; Henseler et al. 2009). Reliability coefficient Cronbach’s alpha values for the indicators in the measuring instrument related to all the constructs were found to be much higher than the suggested value of 0.60, and are presented in Appendix 1 (Malhotra and Dash 2011; Nunally and Bernstein 1978). We note that the composite reliability (CR) of all constructs was found to be greater than 0.7 and the average variance extracted (AVE) of each construct is greater than 0.5. Hence, we can argue that the measurements are consistent and the measurement model is having convergent validity (Fornell and Larcker 1981).
Next, a discriminant validity test was conducted to find any insignificant relationships between the indicators and constructs (Bagozzi et al. 1991; Kock 2014) (see Appendix 3). From Appendix 3, our model possesses discriminant validity, as the square roots of the AVE values in the diagonal positions are greater than all off-diagonal elements. The lack of cross loadings among the variables in the factor loadings table also confirms the establishment of discriminant validity. Thus, discriminant validity of our model is also established.
\(\hbox {R}^{2}\) and \(\hbox {Q}^{2}\) values for the latent variables are also shown in “Appendix 2”. VIF values for the constructs were also found to be less than 5, which indicates that the measure of multicollinearity among the latent variables is within the limit (Hair et al. 2006; Kock 2014; Kock and Lynn 2012).
4.3 Model fit and quality indices
Average path coefficient (APC), Average R-squared (ARS), and Average block VIF (AVIF) are the three model fit and quality indices estimated in this study, which are shown in Table 2 below. Relationships between the latent variables are predicted by these indices. The values of APC and ARS are found to be significant for the model as the p values are coming less than .05. The value of AVIF is less than the ideal threshold value of 3.3, which also confirms that common method bias is not a significant problem with the model .
According to Tenenhaus et al. (2005), there can be a single value for the goodness of fit analysis in the case of PLSR analysis. Dubey et al. (2016) also show the calculation of goodness of fit value based on the \(\hbox {R}^{2}\) and AVE estimates. We have also calculated the goodness of fit by using the average value of \(\hbox {R}^{2}\) and the geometric mean of AVE as per the following formula:
The goodness of fit value as calculated with the above formula for our current model is 0.46. According to Wetzels et al. (2009), baseline values for the relative fit of GoF estimate are \(0.36 =\) large, \(0.25 =\) medium, and \(0.1 =\) small. Thus, based on these values, the GoF of our model is large.
4.4 Causality assessment
Guide and Ketokivi (2015) in their editorial note have noted that the endogeneity is one of the major issue associated with non-experimental data. Roberts and Whited (2013) have offered extensive directions which is equally useful in our study. Hence, different causality assessment parameters obtained from PLS SEM analysis are discussed. Three out of the four causality indices are found to be well above the threshold values, showing that the developed model is robust in terms of causality perspective (Spirtes et al. 1995; Pearl 2009). The result can be interpreted as that the direction of causality assumed between the latent variables is correct.
Sympson’s paradox ratio (SPR) \(=.615\), acceptable if \(>= 0.7\), ideally = 1
R-squared contribution ratio (RSCR) \(=.942\), acceptable if \(>= 0.9\), ideally = 1
Statistical suppression ratio (SSR) \(=1.0\), acceptable if \(>= 0.7\)
Nonlinear bivariate causality direction ratio (NLBCDR) \(=1.0\), acceptable if \(>= 0.7\)
SPR is the only causality index that is a little bit less than the acceptable limit.
4.5 Hypotheses testing
PLS does not assume a multivariate normal distribution, so traditional parametric-based techniques for significance tests are inappropriate (Peng and Lai 2012; Moshtari 2016). The final theoretical model is based on these hypotheses test results (see Fig. 2). Linkage between MP and TMP (MP \(\rightarrow \) TMP) is found to be insignificant (\(\upbeta =0.07, p=0.15\)) at \(p=0.01\). The path between NP and TMP (NP \(\rightarrow \) TMP) is also found to be insignificant (\(\upbeta =-0.05, p=0.25\)) at \(p=0.01\). Hence, we can infer based on the results that MP and NP don’t have a significant impact on TMP in deciding the sustainability performance of supply chain. However, the linkage between CP and TMB (CP \(\rightarrow \) TMB) is found to be significant, with estimates of \(\upbeta =0.26\) and \(p<0.01\). The linkage between coercive pressure and top management participation (CP \(\rightarrow \) TMP) is also found to be significant (\(\upbeta =0.19,p<0.01\)). Thus, we can infer that CP has a significant influence on TMP and TMB in deciding the sustainability performance of supply chain. TMB has a significant positive impact on TMP (CP \(\rightarrow \) TMP) with statistical estimates of \(\upbeta =0.35\) and \(p<0.01\). Paths connecting TMP with SCC (TMP \(\rightarrow \) SCC; \(\upbeta =0.93\) and \(p<0.01\)) and SCIS (TMP \(\rightarrow \) SCIS; \(\upbeta =0.66\) and \(p<0.01\)) are also found to be significant. TMP explains 93 percent of total variance in SCC and 66 percent of total variance in SCIS constructs. There are three linkages connecting supply chain connectivity with the social, economic, and environmental performance of the supply chain, which together predict the sustainability performance of supply chain. The linkage between SCC and social performance (SCC \(\rightarrow \) SP) is found to be significant, having estimates of \(\upbeta =0.18\) and \(p<0.01\). But the linkage between SCC and environmental performance (SCC \(\rightarrow \) EP) is found to be insignificant at \(p=0.05\), as the p value is found to be .08. But the linkage can be found to be significant at \(p=.1\), with estimates of \(\upbeta =0.1\) and \(p<.08\). Linkage between SCC and economic performance (SCC \(\rightarrow \) ECOP) is also found to be significant with estimates of \(\upbeta =0.19\) and \(p<.01\). Hence, we may conclude that the SCC is having a positive impact on the sustainability performance of the supply chain at a significance level of \(p=0.1\). The linkage between supply chain information system (SCIS) and sustainability performance of supply chain is tested in the same manner. But the linkage between SCIS and social performance (SCIS \(\rightarrow \) SP) was found to be insignificant at \(p=0.1\), as the p value was found to be .07. The analysis confirms the positive impact of SCIS on the environmental performance (SCIS \(\rightarrow \) EP) with estimates of \(\upbeta =.77\) and p < .01. The relationship between SCIS and economic performance of supply chain is not significant at \(p=.01\) as the estimate of p is found to be 0.03. Thus, the linkage between SCIS and economic performance (SCIC \(\rightarrow \) ECOP) is significant at \(p=0.1\) with statistical values of \(\upbeta =0.14\) and \(p=0.02\). We can conclude that SCIS is having a positive impact on the EP and ECOP of supply chain at \(p=0.1\). Out of the 13 linkages in the model shown, 10 are found to be statistically significant at a significance level of \(p=0.1\).
5 Discussions
5.1 Theoretical implications
The role of strategic sources and capabilities in shaping PMS for supply chain sustainability is well discussed in the O&SCM literature. What is less understood is how institutional pressures under the mediating effect of TMP can influence the selection of the SCC and SCIS, which in turn impact the SP, EP, and ECOP. The two key aspects of this study signify our contribution to the sustainable operations and supply chain management literature. First, following Oliver’s (1997) arguments, we have integrated IT and RBV to explain how SCC and SCIS, under the influence of the institutional pressures, can explain TBL. Previous literature has utilized either RBV or IT to explain the PMS for supply chain sustainability. Our study integrates these two independent theories to examine the influence of resources under the influence of external pressures to impact social performance, environmental performance, and economic performance. Hence, by doing so we argue that previous limitations of the RBV and IT are addressed in the study. The present study reveals that different dimensions of the institutional pressures have differential effect on top management participation. Specifically, CP has positive effect on top management participation, while the effects of the MP and NP have no significant effect. As suggested by Teo et al. (2003), the MP play a role when the innovation is highly complex to understand and use. Here, in this case, the SSC and SCIS are easier to implement (Boyer and Olson 2002; Liu et al. 2010). Such an argument may explain why the present study does not find support for the positive effect of mimetic pressures on firms’ inclination to adopt SCC and SCIS for supply chain sustainability. Similarly, based on existing literature, we hypothesized that NP should affect TMP, since norms carry with them accepted practices pre-evaluated within the organizational field without needing further cognitive effort on the part of top management. Surprisingly, this hypothesis was not supported. This finding of our study is consistent with Liang et al. (2007). This may be the reflection of successful training programs conducted by the focal firms and the dissemination of the best practices through the extensive network programs of the auto components manufacturers association and CII Institute for Manufacturing. However, we must be cautious about this conjecture, since no focal firm’s data was collected in our survey. We hope that in future studies, the data from focal firms will be collected, and hypotheses about the extent to which focal firms yield to normative pressures can be tested.
Second, the study contributes to the growing literature focusing on sustainable supply chain management practices in emerging economies in the context of SMEs. Our study focuses on the auto component manufacturers of India. Our study further supports Gopal and Thakkar’s (2016a; b) arguments that Indian auto component manufacturers are lagging in terms of the adoption of sustainable supply chain management practices.
6 Managerial implications
The study provides immense scope to the Indian auto component industry to maximize benefits by clearly understanding the focus areas, viz., supply chain connectivity, supply chain information sharing, and top management commitment and belief based on some external and internal factors to achieve better social, environmental, and economic performance. Focusing and improving the sustainability part of the supply chain may help them improve their branding and attempt to go global by acting locally (Bello et al. 2004; Ravet 2012). The study findings suggest that top management can focus on improving the SCIS and SCC, which may further help them improve, which in turn will help them penetrate new markets by having better brand value. The importance of effective information sharing systems is also explicitly proven by the analysis, and will help the companies improve visibility, design robust processes, improve operational efficiency, increase responsiveness, and eliminate wastages (Vanpoucke et al. 2017). Unless robust information sharing systems are implemented, it is very difficult to integrate the end-to-end supply chain of auto component manufactures when the product varieties, quantities, suppliers, and customers are large. Therefore, the current study will help Indian auto component manufacturers focus their energy in certain crucial areas, like supply chain integration, by which they can enjoy the benefits of high operational efficiency and better sustainability performance of the supply chain to compete with the highly matured competitors from other Asian economies like China, Japan, and Korea (Gopal and Thakkar 2015, 2016a, b; Kumar and Rahman 2016; Mayyas et al. 2012; Habidin et al. 2015). From a policy perspective, organizations can depend on the empirical evidence derived from this study by ensuring better commitment from top management for building robust supply chain connectivity and information sharing systems to achieve effective supply chain integration and, ultimately, better sustainability performance.
6.1 Limitations of the study and further research directions
We acknowledge that, like many other studies, our study has its own limitations. Therefore, it is important to evaluate the findings of our study’s results and contributions in the light of its own limitations. We believe that our limitations may be well addressed by future research. First, our study has gathered data at one point in time (i.e., cross-sectional data). The cross-sectional data has its own limitations, such as CMB (Podsakoff et al. 2003; Ketokivi and Schroeder 2004). Hence, to address the CMB issue, it is recommended to test the theoretical model using longitudinal data. Second, the study is heavily driven by institutional theory and resource-based view. Hence, we have focused on few antecedents. However, future studies can explore the value of including new constructs in the model, for example, how flexible or control orientation of the firm may influence the effect of the institutional pressures on PMS for sustainability. There is also an opportunity to investigate how the different industries or cross-cultural differences or coordination among supply chain partners may influence the PMS for supply chain sustainability. Finally, the demographic of our sample may limit the generalizability of our findings. To avoid noise caused by industry differences, we purposely chose to study auto components manufacturing firms. Thus, the research findings should be applied to other contexts with caution. We acknowledge that generalizability is a major concern of all survey-based research. Although it is difficult, with proper sampling design we may enhance generalizability. Hence, future research should be conducted over a longer time with samples gathered from multiple industries, countries, and informants with diverse backgrounds.
7 Conclusions
The current study is a response to the call for more theory-grounded research works in the sustainable supply chain domain (Carter and Liane Easton 2011; Carter and Rogers 2008; Mollenkopf et al. 2010). The interrelationships among the antecedents of the supply chain sustainability performance, based on the triple bottom line concept with reference auto components manufacturers on the SMEs scale, is limited (Min and Galle 2001; Pagell and Wu 2009). Hence, we have grounded our theoretical model in IT, RBV, and TMC. Constructs are identified based on the two well-established organizational theories and by considering the triple bottom line concept, which justifies the call for more theory-grounded empirical research works from the operations and supply chain management community (Winter and Knemeyer 2013; Touboulic and Walker 2015). The present study reveals that the different dimensions of institutional pressures have differential indirect effects on SCC and SCIS under the mediation effect of TMB and TMP. Further, SCC and SCIS have different effects on SP, EP, and ECOP. Specifically, the CP has a positive and significant influence on TMB and TMP, while the effects of the NP and MP on TMB and TMP are not significant.
References
Adams, F. G., Richey, R. G., Autry, C. W., Morgan, T. R., & Gabler, C. B. (2014). Supply chain collaboration, integration, and relational technology: How complex operant resources increase performance outcomes. Journal of Business Logistics, 35(4), 299–317.
Ageron, B., Gunasekaran, A., & Spalanzani, A. (2012). Sustainable supply management: An empirical study. International Journal of Production Economics, 140(1), 168–182.
Akkermans, H., Bogerd, P., & Vos, B. (1999). Virtuous and vicious cycles on the road towards international supply chain management. International Journal of Operations and Production Management, 19(5/6), 565–582.
Armstrong, J. S., & Overton, T. S. (1977). Estimating nonresponse bias in mail surveys. Journal of Marketing Research, 14(3), 396–402.
Asgari, N., Nikbakhsh, E., Hill, A., & Farahani, R. Z. (2016). Supply chain management 1982–2015: A review. IMA Journal of Management Mathematics, 27(3), 353–379.
Augier, M., & Teece, D. J. (2009). Dynamic capabilities and the role of managers in business strategy and economic performance. Organization Science, 20(2), 410–421.
Babbar, S., & Prasad, S. (1998). International purchasing, inventory management and logistics research: An assessment and agenda. International Journal of Operations and Production Management, 18(1), 6–36.
Bagozzi, R. P., Yi, Y., & Phillips, L. W. (1991). Assessing construct validity in organizational research. Administrative Science Quarterly, 36(3), 421–458.
Barney, J. (1991). Firm resources and sustained competitive advantage. Journal of Management, 17(1), 99–120.
Barratt, M., & Choi, T. (2007). Mandated RFID and institutional responses: Cases of decentralized business units. Production and Operations Management, 16(5), 569–585.
Barratt, M., & Oke, A. (2007). Antecedents of supply chain visibility in retail supply chains: A resource-based theory perspective. Journal of Operations Management, 25(6), 1217–1233.
Bello, D. C., Lohtia, R., & Sangtani, V. (2004). An institutional analysis of supply chain innovations in global marketing channels. Industrial Marketing Management, 33(1), 57–64.
Bhattacharya, S., Mukhopadhyay, D., & Giri, S. (2014). Supply chain management in Indian automotive industry: Complexities, challenges and way ahead. International Journal of Managing Value and Supply Chains, 5(2), 49.
Blome, C., Schoenherr, T., & Rexhausen, D. (2013). Antecedents and enablers of supply chain agility and its effect on performance: A dynamic capabilities perspective. International Journal of Production Research, 51(4), 1295–1318.
Bowen, F. E., Cousins, P. D., Lamming, R. C., & Farukt, A. C. (2001). The role of supply management capabilities in green supply. Production and Operations Management, 10(2), 174–189.
Boyer, K. K., & Hult, G. T. M. (2005). Extending the supply chain: Integrating operations and marketing in the online grocery industry. Journal of Operations Management, 23(6), 642–661.
Boyer, K. K., & Olson, J. R. (2002). Drivers of internet purchasing success. Production and Operations Management, 11(4), 480–498.
Brandenburg, M., & Rebs, T. (2015). Sustainable supply chain management: A modeling perspective. Annals of Operations Research, 229(1), 213–252.
Brandon-Jones, E., Squire, B., Autry, C. W., & Petersen, K. J. (2014). A contingent resource-based perspective of supply chain resilience and robustness. Journal of Supply Chain Management, 50(3), 55–73.
Butner, K. (2010). The smarter supply chain of the future. Strategy and Leadership, 38(1), 22–31.
Cao, M., & Zhang, Q. (2011). Supply chain collaboration: Impact on collaborative advantage and firm performance. Journal of Operations Management, 29(3), 163–180.
Carter, C. R., & Liane Easton, P. (2011). Sustainable supply chain management: Evolution and future directions. International Journal of Physical Distribution and Logistics Management, 41(1), 46–62.
Carter, C. R., & Rogers, D. S. (2008). A framework of sustainable supply chain management: moving toward new theory. International Journal of Physical Distribution & Logistics Management, 38(5), 360–387.
Chadwick, C., Super, J. F., & Kwon, K. (2015). Resource orchestration in practice: CEO emphasis on SHRM, commitment-based HR systems, and firm performance. Strategic Management Journal, 36(3), 360–376.
Chatterjee, D., Grewal, R., & Sambamurthy, V. (2002). Shaping up for e-commerce: Institutional enablers of the organizational assimilation of web technologies. MIS Quarterly, 26(2), 65–89.
Chen, A. J., Watson, R. T., Boudreau, M. C., & Karahanna, E. (2011). An institutional perspective on the adoption of Green IS & IT. Australasian Journal of Information Systems, 17(1), 5–27.
Chen, H., Daugherty, P. J., & Landry, T. D. (2009). Supply chain process integration: A theoretical framework. Journal of Business Logistics, 30(2), 27–46.
Chen, I. J., & Paulraj, A. (2004). Towards a theory of supply chain management: The constructs and measurements. Journal of Operations Management, 22(2), 119–150.
Chen, I. J., & Small, M. H. (1996). Planning for advanced manufacturing technology: A research framework. International Journal of Operations and Production Management, 16(5), 4–24.
Colwell, S. R., & Joshi, A. W. (2013). Corporate ecological responsiveness: Antecedent effects of institutional pressure and top management commitment and their impact on organizational performance. Business Strategy and the Environment, 22(2), 73–91.
Crook, T. R., & Esper, T. L. (2014). Do resources aid in supply chain functioning and management? Yes, but more (and more precise) research is needed. Journal of Supply Chain Management, 50(3), 94–97.
Dao, V., Langella, I., & Carbo, J. (2011). From green to sustainability: Information technology and an integrated sustainability framework. The Journal of Strategic Information Systems, 20(1), 63–79.
Daugherty, P. J., Ellinger, A. E., & Rogers, D. S. (1995). Information accessibility: Customer responsiveness and enhanced performance. International Journal of Physical Distribution and Logistics Management, 25(1), 4–17.
Delmas, M. A., & Toffel, M. W. (2008). Organizational responses to environmental demands: Opening the black box. Strategic Management Journal, 29(10), 1027–1055.
Dewett, T., & Jones, G. R. (2001). The role of information technology in the organization: A review, model, and assessment. Journal of Management, 27(3), 313–346.
Dillman, D. A. (2011). Mail and internet surveys: The tailored design method-2007 update with new internet, visual, and mixed-mode guide. London: Wiley.
DiMaggio, P. J., & Powell, W. W. (1983). The iron cage revisited: Institutional isomorphism and collective rationality in organizational fields. American Sociological Review, 48(2), 147–160.
Droge, C., Jayaram, J., & Vickery, S. K. (2004). The effects of internal versus external integration practices on time-based performance and overall firm performance. Journal of Operations Management, 22(6), 557–573.
Dubey, R., Gunasekaran, A., Childe, S. J., Papadopoulos, T., Wamba, S. F., & Song, M. (2016). Towards a theory of sustainable consumption and production: Constructs and measurement. Resources, Conservation and Recycling, 106, 78–89.
Dubey, R., Gunasekaran, A., Childe, S. J., Papadopoulos, T., Luo, Z., & Roubaud, D. (2017). Upstream supply chain visibility and complexity effect on focal company’s sustainable performance: Indian manufacturers’ perspective. Annals of Operations Research, pp. 1–25.
Du, S., Ma, F., Fu, Z., Zhu, L., & Zhang, J. (2015). Game-theoretic analysis for an emission-dependent supply chain in a ‘cap-and-trade’system. Annals of Operations Research, 228(1), 135–149.
Du, S., Hu, L., & Wang, L. (2017). Low-carbon supply policies and supply chain performance with carbon concerned demand. Annals of Operations Research, 255(1–2), 569–590.
Dyllick, T., & Hockerts, K. (2002). Beyond the business case for corporate sustainability. Business Strategy and the Environment, 11(2), 130–141.
Enslow, B. (2000). Internet fulfillment: The next supply chain frontier. Achieving Supply Chain Excellence through Technology (ASCET), 2.
Fawcett, S. E., & Clinton, S. R. (1996). Enhancing logistics performance to improve the competitiveness of manufacturing organizations. Production and Inventory Management Journal, 37(1), 40.
Fawcett, S. E., Wallin, C., Allred, C., Fawcett, A. M., & Magnan, G. M. (2011). Information technology as an enabler of supply chain collaboration: A dynamic-capabilities perspective. Journal of Supply Chain Management, 47(1), 38–59.
Feldmann, M., & Müller, S. (2003). An incentive scheme for true information providing in supply chains. Omega, 31(2), 63–73.
Fields, G. (2002). The Internet and the production network of Dell computer. Part III. In: From communications and innovation to business organization and territory: The production networks of Swift Meat Packing and Dell Computer, Working Paper, 149.
Flynn, B. B., Huo, B., & Zhao, X. (2010). The impact of supply chain integration on performance: A contingency and configuration approach. Journal of Operations Management, 28(1), 58–71.
Foerstl, K., Reuter, C., Hartmann, E., & Blome, C. (2010). Managing supplier sustainability risks in a dynamically changing environment—sustainable supplier management in the chemical industry. Journal of Purchasing and Supply Management, 16(2), 118–130.
Fornell, C., & Larcker, D. F. (1981). Structural equation models with unobservable variables and measurement error: Algebra and statistics. Journal of Marketing Research, pp. 382–388.
Foss, N. J., & Eriksen, B. (1995). Competitive advantage and industry capabilities. In Resource-based and evolutionary theories of the firm: Towards a synthesis (pp. 43–69). Springer US.
Fugate, B. S., Mentzer, J. T., & Stank, T. P. (2010). Logistics performance: Efficiency, effectiveness, and differentiation. Journal of Business Logistics, 31(1), 43–62.
Garbie, I. H. (2014). An analytical technique to model and assess sustainable development index in manufacturing enterprises. International Journal of Production Research, 52(16), 4876–4915.
Gattiker, T. F., & Carter, C. R. (2010). Understanding project champions’ ability to gain intra-organizational commitment for environmental projects. Journal of Operations Management, 28(1), 72–85.
Gholami, R., Sulaiman, A. B., Ramayah, T., & Molla, A. (2013). Senior managers’ perception on green information systems (IS) adoption and environmental performance: Results from a field survey. Information and Management, 50(7), 431–438.
Gligor, M. D., & Holcomb, M. (2014). The road to supply chain agility: An RBV perspective on the role of logistics capabilities. The International Journal of Logistics Management, 25(1), 160–179.
Gopal, P. R. C., & Thakkar, J. (2015). Development of composite sustainable supply chain performance index for the automobile industry. International Journal of Sustainable Engineering, 8(6), 366–385.
Gopal, P. R. C., & Thakkar, J. (2016a). Analysing critical success factors to implement sustainable supply chain practices in Indian automobile industry: A case study. Production Planning and Control, 27, 1–14.
Gopal, P. R. C., & Thakkar, J. (2016b). Sustainable supply chain practices: An empirical investigation on Indian automobile industry. Production Planning and Control, 27(1), 49–64.
Grant, R. M. (1991). The resource-based theory of competitive advantage: Implications for strategy formulation. California Management Review, 33(3), 114–135.
Greenwood, R., & Hinings, C. R. (1996). Understanding radical organizational change: Bringing together the old and the new institutionalism. Academy of management review, 21(4), 1022–1054.
Größler, A., & Grübner, A. (2006). An empirical model of the relationships between manufacturing capabilities. International Journal of Operations and Production Management, 26(5), 458–485.
Guide, V. D. R., & Ketokivi, M. (2015). Notes from the editors: Redefining some methodological criteria for the journal. Journal of Operations Management, 37, 5–8.
Gunasekaran, A., & Ngai, E. W. (2004). Information systems in supply chain integration and management. European Journal of Operational Research, 159(2), 269–295.
Habidin, N. F., Zubir, A. F. M., Fuzi, N. M., Latip, N. A. M., & Azman, M. N. A. (2015). Sustainable manufacturing practices in Malaysian automotive industry: Confirmatory factor analysis. Journal of Global Entrepreneurship Research, 5(1), 1.
Hair, J. F., Anderson, R. E., Babin, B. J., & Black, W. C. (2010). Multivariate data analysis: A global perspective (Vol. 7). Upper Saddle River, NJ: Pearson.
Hair, J., Black, W., Babin, B., Anderson, R., & Tatham, R. (2006). Multivariate data analysis (6th ed.). Upper Saddle River, N.J.: Pearson Prentice Hall.
Halldórsson, Á., Kotzab, H., & Skjøtt-Larsen, T. (2009). Supply chain management on the crossroad to sustainability: a blessing or a curse?. Logistics Research, 1(2), 83–94.
Hamel, G., Doz, Y. L., & Prahalad, C. K. (1989). Collaborate with your competitors and win. Harvard Business Review, 67(1), 133–139.
Henseler, J., Ringle, C. M., & Sinkovics, R. R. (2009). The use of partial least squares path modeling in international marketing. Advances in International Marketing, 20(1), 277–319.
Heras-Saizarbitoria, I., Arana Landín, G., & Molina-Azorín, J. F. (2011). Do drivers matter for the benefits of ISO 14001? International Journal of Operations and Production Management, 31(2), 192–216.
Hitt, M. A., Xu, K., & Carnes, C. M. (2016). Resource based theory in operations management research. Journal of Operations Management, 41, 77–94.
Hoejmose, S. U., & Adrien-Kirby, A. J. (2012). Socially and environmentally responsible procurement: A literature review and future research agenda of a managerial issue in the 21st century. Journal of Purchasing and Supply Management, 18(4), 232–242.
Hoopes, D. G., Madsen, T. L., & Walker, G. (2003). Guest editors’ introduction to the special issue: why is there a resource-based view? Toward a theory of competitive heterogeneity. Strategic Management Journal, 24(10), 889–902.
Horvath, L. (2001). Collaboration: The key to value creation in supply chain management. Supply Chain Management: An International Journal, 6(5), 205–207.
Hunt, S. D., & Davis, D. F. (2012). Grounding supply chain management in resource-advantage theory: In defense of a resource-based view of the firm. Journal of Supply Chain Management, 48(2), 14–20.
Ireland, R., & Bruce, R. (2000). CPFR: Only the beginning of collaboration. Supply Chain Management Review, 4(4), 80–88.
Jabbour, C. J. C., Jugend, D., de Sousa Jabbour, A. B. L., Gunasekaran, A., & Latan, H. (2015). Green product development and performance of Brazilian firms: Measuring the role of human and technical aspects. Journal of Cleaner Production, 87, 442–451.
Jindal, A., & Sangwan, K. S. (2016). Multi-objective fuzzy mathematical modelling of closed-loop supply chain considering economical and environmental factors. Annals of Operations Research, pp. 1–26.
Kauppi, K. (2013). Extending the use of institutional theory in operations and supply chain management research: Review and research suggestions. International Journal of Operations and Production Management, 33(10), 1318–1345.
Kaur, H., & Singh, S. P. (2016). Sustainable procurement and logistics for disaster resilient supply chain. Annals of Operations Research, pp. 1–46.
Kembro, J., & Näslund, D. (2014). Information sharing in supply chains, myth or reality? A critical analysis of empirical literature. International Journal of Physical Distribution and Logistics Management, 44(3), 179–200.
Ketchen, D. J., & Giunipero, L. C. (2004). The intersection of strategic management and supply chain management. Industrial Marketing Management, 33(1), 51–56.
Ketchen, D. J., & Hult, G. T. M. (2007). Bridging organization theory and supply chain management: The case of best value supply chains. Journal of Operations Management, 25(2), 573–580.
Khalifa, M., & Davison, M. (2006). SME adoption of IT: The case of electronic trading systems. IEEE Transactions on Engineering Management, 53(2), 275–284.
Ketokivi, M. A., & Schroeder, R. G. (2004). Perceptual measures of performance: fact or fiction?. Journal of Operations Management, 22(3), 247–264.
Klassen, R. D. (2001). Plant level environmental management orientation: The influence of management views and plant characteristics. Production and Operations Management, 10(3), 257–275.
Kock, N. (2014). Advanced mediating effects tests, multi-group analyses, and measurement model assessments in PLS-based SEM. International Journal of e-Collaboration, 10(3), 1–13.
Kock, N. (2015). WarpPLS 5.0 User Manual. 2015. Laredo, TX: ScriptWarp Systems.
Kock, N. (2016). Non-normality propagation among latent variables and indicators in PLS-SEM simulations. Journal of Modern Applied Statistical Methods, 15(1), 299–315.
Kock, N., & Lynn, G. S. (2012). Lateral collinearity and misleading results in variance-based SEM: An illustration and recommendations. Journal of the Association for Information Systems, 13(7), 546–580.
Kumar, D., & Rahman, Z. (2016). Buyer supplier relationship and supply chain sustainability: Empirical study of Indian automobile industry. Journal of Cleaner Production, 131, 836–848.
Lai, K. H., Wong, C. W., & Lam, J. S. L. (2015). Sharing environmental management information with supply chain partners and the performance contingencies on environmental munificence. International Journal of Production Economics, 164, 445–453.
Lambert, D. M., & Cooper, M. C. (2000). Issues in supply chain management. Industrial Marketing Management, 29(1), 65–83.
Lau, H. C., & Lee, W. B. (2000). On a responsive supply chain information system. International Journal of Physical Distribution and Logistics Management, 30(7/8), 598–610.
Lee, V. H., Ooi, K. B., Chong, A. Y. L., & Seow, C. (2014). Creating technological innovation via green supply chain management: An empirical analysis. Expert Systems with Applications, 41(16), 6983–6994.
Lee, H. L., & Whang, S. (2000). Information sharing in a supply chain. International Journal of Manufacturing Technology and Management, 1(1), 79–93.
Liang, H., Saraf, N., Hu, Q., & Xue, Y. (2007). Assimilation of enterprise systems: The effect of institutional pressures and the mediating role of top management. MIS Quarterly, 31(1), 59–87.
Li, S., & Lin, B. (2006). Accessing information sharing and information quality in supply chain management. Decision Support Systems, 42(3), 1641–1656.
Linton, J. D., Klassen, R., & Jayaraman, V. (2007). Sustainable supply chains: An introduction. Journal of Operations Management, 25(6), 1075–1082.
Liu, H., Ke, W., Wei, K. K., Gu, J., & Chen, H. (2010). The role of institutional pressures and organizational culture in the firm’s intention to adopt internet-enabled supply chain management systems. Journal of Operations Management, 28(5), 372–384.
Liu, X., Yang, J., Qu, S., Wang, L., Shishime, T., & Bao, C. (2012). Sustainable production: Practices and determinant factors of green supply chain management of Chinese companies. Business Strategy and the Environment, 21(1), 1–16.
Madhok, A. (2002). Reassessing the fundamentals and beyond: Ronald Coase, the transaction cost and resource-based theories of the firm and the institutional structure of production. Strategic Management Journal, 23(6), 535–550.
Magretta, J. (1998). The power of virtual integration: An interview with Dell Computer’s Michael Dell. Harvard Business Review, 7(2), 72–84.
Malhotra, N. K., & Dash, S. (2011). Marketing research: An applied orientation (6th ed., p. 948). New Delhi: Pearson Education.
Malhotra, M. K., & Grover, V. (1998). An assessment of survey research in POM: From constructs to theory. Journal of Operations Management, 16(4), 407–425.
Massaroni, E., Cozzolino, A., & Wankowicz, E. (2016). Sustainability reporting of logistics service providers in Europe. International Journal of Environment and Health, 8(1), 38–58.
Mayyas, A., Qattawi, A., Omar, M., & Shan, D. (2012). Design for sustainability in automotive industry: A comprehensive review. Renewable and Sustainable Energy Reviews, 16(4), 1845–1862.
Mello, J. E., & Stank, T. P. (2005). Linking firm culture and orientation to supply chain success. International Journal of Physical Distribution and Logistics Management, 35(8), 542–554.
Melville, N. P. (2010). Information systems innovation for environmental sustainability. MIS Quarterly, 34(1), 1–21.
Meredith, J. (1993). Theory building through conceptual methods. International Journal of Operations and Production Management, 13(5), 3–11.
Min, S., Mentzer, J. T. and Ladd, T. (2004). A market orientation in supply chain management. working paper, Department of Marketing, The University of Oklahoma, Norman, OK.
Min, H., & Galle, W. P. (1997). Green purchasing strategies: Trends and implications. International Journal of Purchasing and Materials Management, 33(2), 10–17.
Min, H., & Galle, W. P. (2001). Green purchasing practices of US firms. International Journal of Operations and Production Management, 21(9), 1222–1238.
Miri-Lavassani, K., Movahedi, B., & Kumar, V. (2009). Developments in theories of supply chain management: The case of B2B electronic marketplace adoption. International Journal of Knowledge, Culture and Change Management, 9(6), 85–98.
Mollenkopf, D., Stolze, H., Tate, W. L., & Ueltschy, M. (2010). Green, lean, and global supply chains. International Journal of Physical Distribution and Logistics Management, 40(1/2), 14–41.
Moshtari, M. (2016). Inter-organizational fit, relationship management capability, and collaborative performance within a humanitarian setting. Production and Operations Management, 25(9), 1542–1557.
Nair, A., & Prajogo, D. (2009). Internalization of ISO 9000 standards: The antecedent role of functionalist and institutionalist drivers and performance implications. International Journal of Production Research, 47(16), 4545–4568.
New, S., Green, K., & Morton, B. (2000). Buying the environment: The multiple meanings of green supply. In S. Fineman (Ed.), The business of greening (pp. 3–53). London: Routledge.
Nidumolu, R., Prahalad, C. K., & Rangaswami, M. R. (2009). Why sustainability is now the key driver of innovation. Harvard Business Review, 87(9), 56–64.
Nunally, J. C., & Bernstein, I. H. (1978). Psychometric testing. New York: McGraw.
O’Callaghan, R., Kaufmann, P. J., & Konsynski, B. R. (1992). Adoption correlates and share effects of electronic data interchange systems in marketing channels. The Journal of Marketing, pp. 45–56.
Oliver, C. (1997). Sustainable competitive advantage: Combining institutional and resource-based views. Strategic Management Journal, 18(9), 697–713.
Ortas, E., Moneva, J. M., & Alvarez, I. (2014). Sustainable supply chain and company performance: A global examination. Supply Chain Management: An International Journal, 19(3), 9–9.
Pagell, M., & Shevchenko, A. (2014). Why research in sustainable supply chain management should have no future. Journal of Supply Chain Management, 50(1), 44–55.
Pagell, M., & Wu, Z. (2009). Building a more complete theory of sustainable supply chain management using case studies of 10 exemplars. Journal of Supply Chain Management, 45(2), 37–56.
Pearl, J. (2009). Causal inference in statistics: An overview. Statistics Surveys, 3, 96–146.
Peng, D. X., & Lai, F. (2012). Using partial least squares in operations management research: A practical guideline and summary of past research. Journal of Operations Management, 30(6), 467–480.
Podsakoff, P. M., MacKenzie, S. B., Lee, J. Y., & Podsakoff, N. P. (2003). Common method biases in behavioral research: A critical review of the literature and recommended remedies. Journal of Applied Psychology, 88(5), 879–903.
Podsakoff, P. M., & Organ, D. W. (1986). Self-reports in organizational research: Problems and prospects. Journal of Management, 12(4), 531–544.
Prajogo, D., & Olhager, J. (2012). Supply chain integration and performance: The effects of long-term relationships, information technology and sharing, and logistics integration. International Journal of Production Economics, 135(1), 514–522.
Ravet, D. (2012). An exploration of facility location metrics in international supply chain. In Trends in International Business 2012 (p. 19).
Revelle, W., & Zinbarg, R. E. (2009). Coefficients alpha, beta, omega, and the glb: Comments on Sijtsma. Psychometrika, 74(1), 145–154.
Roberts, M. R., & Whited, T. M. (2013). Endogeneity in empirical corporate finance. In G. M. Constantinides, M. Harris, & R. M. Stulz (Eds.), Handbook of the economics of finance (Vol. 2A, pp. 493–572). Amsterdam: Elsevier.
Rosenthal, R., & Rosnow, R. L. (1991). Essentials of behavioral research: Methods and data analysis. New York: McGraw-Hill Humanities Social.
Rungtusanatham, M., Salvador, F., Forza, C., & Choi, T. Y. (2003). Supply-chain linkages and operational performance: A resource-based-view perspective. International Journal of Operations and Production Management, 23(9), 1084–1099.
Sabath, R. E., & Frentzel, D. G. (1997). Go for growth! Supply chain management’s role in growing revenues. Supply Chain Management Review, 1(2), 16–23.
Sarkis, J., Zhu, Q., & Lai, K. H. (2011). An organizational theoretic review of green supply chain management literature. International Journal of Production Economics, 130(1), 1–15.
Saunders, M. J. (1995). Chains, pipelines, networks and value stream: the role, nature and value of such metaphors in forming perceptions of the task of purchasing and supply management. In First Worldwide research symposium on purchasing and supply chain management Tempe, Arizona (March) (pp. 476–485).
Saunders, M. J. (1998). The comparative analysis of supply chains and implications for the development of strategies. In Seventh international IPSERA conference (Vol. 477).
Seles, B. M. R. P., de Sousa Jabbour, A. B. L., Jabbour, C. J. C., & Dangelico, R. M. (2016). The green bullwhip effect, the diffusion of green supply chain practices, and institutional pressures: Evidence from the automotive sector. International Journal of Production Economics, 182, 342–355.
Singh, A. K., Jha, S. K., & Prakash, A. (2014). Green manufacturing (GM) performance measures: An empirical investigation from Indian MSMEs. International Journal of Research in Advent Technology, 2(4), 51–65.
Sirmon, D. G., Gove, S., & Hitt, M. A. (2008). Resource management in dyadic competitive rivalry: The effects of resource bundling and deployment. Academy of Management Journal, 51(5), 919–935.
Spirtes, P., Meek, C., & Richardson, T. (1995). Causal inference in the presence of latent variables and selection bias. In Proceedings of the eleventh conference on uncertainty in artificial intelligence (pp. 499–506). Morgan Kaufmann Publishers Inc.
Stank, T. P., Daugherty, P. J., & Ellinger, A. E. (1999). Marketing/logistics integration and firm performance. The International Journal of Logistics Management, 10(1), 11–24.
Sutton, M. J. (1997). The role of electronic data interchange in the transportation industry (I). Defense Transportation Journal, 53, 20.
Taylor, F. W. (1947). Scientific management. New York and London: Harper and Row.
Taylor, A., & Taylor, M. (2009). Operations management research: Contemporary themes, trends and potential future directions. International Journal of Operations and Production Management, 29(12), 1316–1340.
Tenenhaus, M., Vinzi, V. E., Chatelin, Y. M., & Lauro, C. (2005). PLS path modeling. Computational Statistics and Data Analysis, 48(1), 159–205.
Teo, H. H., Wei, K. K., & Benbasat, I. (2003). Predicting intention to adopt interorganizational linkages: An institutional perspective. MIS Quarterly, 27(1), 19–49.
Toptal, A., & Çetinkaya, B. (2017). How supply chain coordination affects the environment: A carbon footprint perspective. Annals of Operations Research, 250(2), 487–519.
Touboulic, A., & Walker, H. (2015). Theories in sustainable supply chain management: A structured literature review. International Journal of Physical Distribution and Logistics Management, 45(1/2), 16–42.
Vachon, S., & Klassen, R. D. (2008). Environmental management and manufacturing performance: The role of collaboration in the supply chain. International Journal of Production Economics, 111(2), 299–315.
Vachon, S., & Mao, Z. (2008). Linking supply chain strength to sustainable development: A country-level analysis. Journal of Cleaner Production, 16(15), 1552–1560.
Vanpoucke, E., Vanpoucke, E., Vereecke, A., Vereecke, A., Muylle, S., & Muylle, S. (2017). Leveraging the impact of supply chain integration through information technology. International Journal of Operations and Production Management, 37(4), 510–530.
Wagner, S. M., & Kemmerling, R. (2010). Handling nonresponse in logistics research. Journal of Business Logistics, 31(2), 357–381.
Waldo, D., Jaques, E., Kilman, R. H., Pondy, L. R., Slevin, D. P., Kilman, R. H., et al. (1978). Organization theory: Revisiting the elephant. Public Administration Review, 38(6), 589–597.
Walley, N., & Whitehead, B. (1994). It’s not easy being green. The Earth Scan Reader in Business and the Environment, pp. 36–44.
Wang, G., & Gunasekaran, A. (2017). Modeling and analysis of sustainable supply chain dynamics. Annals of Operations Research, 250(2), 521–536.
Weber, M. (2009). The theory of social and economic organization. New York: Simon and Schuster.
Wetzels, M., Odekerken-Schroder, G., & van Oppen, C. (2009). Using PLS path modeling for assessing hierarchical construct models: Guidelines and empirical illustration. MIS Quarterly, 33(1), 177–195.
Williams, L. R., Nibbs, A., Irby, D., & Finley, T. (1997). Logistics integration: The effect of information technology, team composition, and corporate competitive positioning. Journal of Business Logistics, 18(2), 31.
Winter, M., & Knemeyer, A. M. (2013). Exploring the integration of sustainability and supply chain management: Current state and opportunities for future inquiry. International Journal of Physical Distribution and Logistics Management, 43(1), 18–38.
Wu, L., Chuang, C. H., & Hsu, C. H. (2014). Information sharing and collaborative behaviors in enabling supply chain performance: A social exchange perspective. International Journal of Production Economics, 148, 122–132.
Yeung, A. C. L., Lee, T. S., & Chan, L. Y. (2003). Senior management perspectives and ISO 9000 effectiveness: An empirical research. International Journal of Production Research, 41(3), 545–569.
Zailani, S., Jeyaraman, K., Vengadasan, G., & Premkumar, R. (2012). Sustainable supply chain management (SSCM) in Malaysia: A survey. International Journal of Production Economics, 140(1), 330–340.
Zhao, M., Dröge, C., & Stank, T. P. (2001). The effects of logistics capabilities on firm performance: Customer-focused versus information-focused capabilities. Journal of Business Logistics, 22(2), 91–107.
Zhu, Q., & Geng, Y. (2013). Drivers and barriers of extended supply chain practices for energy saving and emission reduction among Chinese manufacturers. Journal of Cleaner Production, 40, 6–12.
Zhu, Q., & Sarkis, J. (2004). Relationships between operational practices and performance among early adopters of green supply chain management practices in Chinese manufacturing enterprises. Journal of Operations Management, 22(3), 265–289.
Zhu, Q., & Sarkis, J. (2006). An inter-sectoral comparison of green supply chain management in China: Drivers and practices. Journal of Cleaner Production, 14(5), 472–486.
Zhu, Q., & Sarkis, J. (2007). The moderating effects of institutional pressures on emergent green supply chain practices and performance. International Journal of Production Research, 45(18–19), 4333–4355.
Zhu, Q., Sarkis, J., Lai, K. H., & Geng, Y. (2008). The role of organizational size in the adoption of green supply chain management practices in China. Corporate Social Responsibility and Environmental Management, 15(6), 322–337.
Zsidisin, G. A., Melnyk, S. A., & Ragatz, G. L. (2005). An institutional theory perspective of business continuity planning for purchasing and supply management. International Journal of Production Research, 43(16), 3401–3420.
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Appendices
Appendix 1: Reliability test result—Cronbach’s alpha values
CP | NP | MP | TMB | TMP | SCC | SCIS | SP | EP | ECOP |
---|---|---|---|---|---|---|---|---|---|
0.621 | 0.948 | 0.846 | 0.965 | 0.959 | 0.965 | 0.938 | 0.984 | 0.943 | 0.866 |
Appendix 2: Loadings of the indicator variables
Construct | CP | NP | MP | TMB | TMP | SCC | SCIS | SP | EP | ECOP |
---|---|---|---|---|---|---|---|---|---|---|
CR | 0.8 | 0.967 | 0.907 | 0.977 | 0.974 | 0.977 | 0.952 | 0.989 | 0.956 | 0.909 |
AVE | 0.576 | 0.906 | 0.765 | 0.934 | 0.925 | 0.935 | 0.801 | 0.968 | 0.784 | 0.715 |
\(\hbox {R}^{2}\) Values | 0.068 | 0.059 | 0.932 | 0.437 | 0.028 | 0.591 | \(-\) 0.018 | |||
\(\hbox {Q}^{2}\) Values | 0.07 | 0.211 | 0.933 | 0.428 | 0.055 | 0.511 | 0.046 |
Appendix 3: Correlations among the latent variables
Component | CP | NP | MP | TMB | TMP | SCC | SCIS | ECOP | SP | EP |
---|---|---|---|---|---|---|---|---|---|---|
CP | 0.76 | |||||||||
NP | 0.61 | 0.95 | ||||||||
MP | 0.24 | 0.39 | 0.87 | |||||||
TMB | \(-\) 0.03 | 0.00 | 0.23 | 0.96 | ||||||
TMP | 0.16 | 0.15 | 0.06 | 0.00 | 0.96 | |||||
SCC | 0.43 | 0.61 | 0.59 | 0.11 | 0.19 | 0.97 | ||||
SCIS | \(-\) 0.07 | \(-\) 0.10 | \(-\) 0.17 | \(-\) 0.06 | 0.06 | \(-\) 0.17 | 0.89 | |||
ECOP | 0.20 | 0.20 | 0.11 | 0.03 | 0.36 | 0.30 | 0.02 | 0.96 | ||
SP | \(-\) 0.05 | \(-\) 0.03 | \(-\) 0.09 | \(-\) 0.05 | 0.19 | \(-\) 0.06 | 0.11 | 0.14 | 0.88 | |
EP | \(-\) 0.07 | \(-\) 0.10 | \(-\) 0.15 | 0.09 | 0.16 | \(-\) 0.19 | 0.24 | 0.01 | \(-\) 0.08 | 0.84 |
Appendix 4: Combined loadings and cross loadings
CP | NP | MP | TMB | TMP | SCC | SCIS | SP | EP | ECOP | p value | |
---|---|---|---|---|---|---|---|---|---|---|---|
CP1 | 0.72 | \(-\) 0.14 | 2.58 | 3.48 | \(-\) 0.75 | 0.76 | \(-\) 0.05 | 0.07 | \(-\) 5.62 | \(-\) 0.19 | \(<0.001\) |
CP2 | 0.65 | 0.04 | \(-\) 1.66 | \(-\) 2.14 | 0.13 | \(-\) 0.13 | \(-\) 0.04 | \(-\) 0.04 | 3.55 | 0.29 | \(<0.001\) |
CP3 | 0.88 | 0.09 | \(-\) 0.88 | \(-\) 1.26 | 0.51 | \(-\) 0.52 | 0.07 | \(-\) 0.02 | 1.96 | \(-\) 0.06 | \(<0.001\) |
NP1 | 0.01 | 0.96 | \(-\) 0.35 | \(-\) 0.11 | \(-\) 0.12 | 0.13 | 0.01 | 0.00 | 0.37 | \(-\) 0.01 | \(<0.001\) |
NP2 | 0.00 | 0.94 | \(-\) 0.62 | \(-\) 0.96 | 0.18 | \(-\) 0.22 | 0.02 | 0.00 | 1.38 | \(-\) 0.02 | \(<0.001\) |
NP3 | \(-\) 0.02 | 0.96 | 0.97 | 1.05 | \(-\) 0.06 | 0.08 | \(-\) 0.03 | 0.00 | \(-\) 1.72 | 0.03 | \(<0.001\) |
MP1 | 0.03 | \(-\) 0.14 | 0.87 | 7.57 | 0.15 | \(-\) 0.19 | \(-\) 0.02 | 0.01 | \(-\) 13.28 | \(-\) 0.03 | \(<0.001\) |
MP2 | \(-\) 0.04 | 0.18 | 0.91 | 1.15 | \(-\) 0.16 | 0.22 | 0.03 | \(-\) 0.01 | \(-\) 2.06 | 0.03 | \(<0.001\) |
MP3 | 0.01 | \(-\) 0.05 | 0.84 | \(-\) 9.12 | 0.02 | \(-\) 0.04 | \(-\) 0.01 | 0.01 | 16.04 | \(-\) 0.01 | \(<0.001\) |
TMB1 | \(-\) 0.01 | \(-\) 0.03 | \(-\) 5.82 | 0.95 | 0.15 | \(-\) 0.13 | 0.00 | \(-\) 0.02 | 14.25 | 0.00 | \(<0.001\) |
TMB2 | 0.03 | 0.02 | 2.40 | 0.98 | \(-\) 0.10 | 0.09 | \(-\) 0.01 | 0.00 | \(-\) 5.85 | \(-\) 0.01 | \(<0.001\) |
TMB3 | \(-\) 0.02 | 0.01 | 3.25 | 0.97 | \(-\) 0.04 | 0.03 | 0.01 | 0.02 | \(-\) 7.97 | 0.01 | \(<0.001\) |
TMP1 | 0.01 | 0.10 | \(-\) 0.90 | \(-\) 0.94 | 0.97 | \(-\) 0.02 | 0.01 | 0.02 | 1.68 | \(-\) 0.03 | \(<0.001\) |
TMP2 | 0.00 | 0.02 | 0.15 | 0.17 | 0.96 | 0.44 | 0.00 | 0.00 | \(-\) 0.30 | \(-\) 0.02 | \(<0.001\) |
TMP3 | 0.00 | \(-\) 0.12 | 0.76 | 0.79 | 0.96 | \(-\) 0.42 | \(-\) 0.02 | \(-\) 0.02 | \(-\) 1.40 | 0.05 | \(<0.001\) |
SCC1 | \(-\) 0.04 | \(-\) 0.04 | 0.03 | 0.06 | \(-\) 0.15 | 0.96 | 0.00 | \(-\) 0.01 | \(-\) 0.06 | \(-\) 0.02 | \(<0.001\) |
SCC2 | 0.04 | 0.04 | \(-\) 0.03 | \(-\) 0.06 | \(-\) 0.38 | 0.95 | 0.00 | 0.01 | 0.06 | 0.02 | \(<0.001\) |
SCC3 | 0.00 | 0.00 | 0.00 | 0.00 | 0.51 | 0.99 | 0.00 | 0.00 | 0.00 | 0.00 | \(<0.001\) |
SCIS1 | 0.01 | \(-\) 0.07 | \(-\) 1.78 | \(-\) 2.91 | 0.16 | \(-\) 0.01 | 0.92 | 0.03 | 4.42 | 0.07 | \(<0.001\) |
SCIS2 | 0.02 | 0.00 | \(-\) 1.79 | \(-\) 2.73 | 0.14 | \(-\) 0.01 | 0.93 | 0.02 | 4.21 | 0.04 | \(<0.001\) |
SCIS3 | \(-\) 0.06 | \(-\) 0.36 | 3.26 | 3.83 | \(-\) 0.73 | 0.51 | 0.87 | \(-\) 0.04 | \(-\) 6.36 | 0.00 | \(<0.001\) |
SCIS4 | 0.08 | 0.37 | \(-\) 0.54 | 0.09 | 0.11 | \(-\) 0.12 | 0.87 | 0.05 | 0.12 | \(-\) 0.06 | \(<0.001\) |
SCIS5 | \(-\) 0.06 | 0.06 | 1.05 | 2.03 | 0.30 | \(-\) 0.36 | 0.88 | \(-\) 0.06 | \(-\) 2.86 | \(-\) 0.06 | \(<0.001\) |
SP1 | \(-\) 0.01 | \(-\) 0.03 | \(-\) 0.27 | \(-\) 0.45 | 0.00 | 0.00 | \(-\) 0.01 | 0.99 | 0.70 | 0.01 | \(<0.001\) |
SP2 | 0.02 | 0.06 | 0.29 | 0.58 | 0.01 | \(-\) 0.04 | 0.02 | 0.98 | \(-\) 0.88 | 0.01 | \(<0.001\) |
SP3 | \(-\) 0.01 | \(-\) 0.03 | \(-\) 0.01 | \(-\) 0.13 | \(-\) 0.01 | 0.04 | \(-\) 0.01 | 0.98 | 0.17 | \(-\) 0.02 | \(<0.001\) |
EP1 | 0.03 | \(-\) 0.14 | 7.22 | 7.57 | 0.15 | \(-\) 0.19 | \(-\) 0.02 | 0.01 | 0.71 | \(-\) 0.03 | \(<0.001\) |
EP2 | \(-\) 0.04 | 0.18 | 1.69 | 1.15 | \(-\) 0.16 | 0.22 | 0.03 | \(-\) 0.01 | 0.82 | 0.03 | \(<0.001\) |
EP3 | 0.01 | \(-\) 0.05 | \(-\) 6.61 | \(-\) 9.12 | 0.02 | \(-\) 0.04 | \(-\) 0.01 | 0.01 | 0.94 | \(-\) 0.01 | \(<0.001\) |
EP4 | \(-\) 0.01 | \(-\) 0.03 | \(-\) 5.82 | \(-\) 8.05 | 0.15 | \(-\) 0.13 | 0.00 | \(-\) 0.02 | 0.95 | 0.00 | \(<0.001\) |
EP5 | 0.03 | 0.02 | 2.40 | 4.67 | \(-\) 0.10 | 0.09 | \(-\) 0.01 | 0.00 | 0.94 | \(-\) 0.01 | \(<0.001\) |
EP6 | \(-\) 0.02 | 0.01 | 3.25 | 6.01 | \(-\) 0.04 | 0.03 | 0.01 | 0.02 | 0.92 | 0.01 | \(<0.001\) |
ECOP1 | \(-\) 0.12 | 0.26 | \(-\) 1.44 | \(-\) 2.06 | 0.34 | \(-\) 0.34 | \(-\) 0.10 | \(-\) 0.02 | 3.18 | 0.78 | \(<0.001\) |
ECOP3 | 0.00 | 0.21 | \(-\) 3.29 | \(-\) 4.11 | 1.26 | \(-\) 1.32 | 0.08 | 0.05 | 6.88 | 0.84 | \(<0.001\) |
ECOP4 | 0.10 | \(-\) 0.16 | 1.39 | 1.74 | \(-\) 0.39 | 0.43 | 0.08 | \(-\) 0.02 | \(-\) 2.90 | 0.91 | \(<0.001\) |
ECOP5 | 0.00 | \(-\) 0.27 | 3.11 | 4.12 | \(-\) 1.15 | 1.16 | \(-\) 0.08 | \(-\) 0.01 | \(-\) 6.64 | 0.85 | \(<0.001\) |
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Shibin, K.T., Dubey, R., Gunasekaran, A. et al. Examining sustainable supply chain management of SMEs using resource based view and institutional theory. Ann Oper Res 290, 301–326 (2020). https://doi.org/10.1007/s10479-017-2706-x
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DOI: https://doi.org/10.1007/s10479-017-2706-x