Abstract
Purpose
The objective of this study is to examine how emotions play a role in the firm’s reaction to disruptions in the supply chain. Drawing on the upper echelons theory, we evaluate whether managers’ perception of collective emotions (CEs) in the supply environment affects the execution of specific organisational responses (bridging and buffering) to disruptive events. Furthermore, we investigate to what extent companies' own capabilities, such as supply chain resilience, influence this relationship.
Design/methodology/approach
A web-based survey was distributed among managers involved in supply chain relationship management (e.g. supply chain or purchasing managers). LinkedIn was used to identify and contact adequate respondents, and 221 valid responses were collected. The proposed theoretical model was empirically tested using structural equation modelling based on partial least squares (PLS-SEM).
Findings
Results suggest that emotions can shape a firm's response to supply chain disruptions. In fact, managers are more likely to pursue both bridging and buffering strategies as their perception of CEs increases. However, the intensity and underlying motivations for pursuing each strategy differ.
Originality/value
When CEs are perceived by buyer managers, stronger supply chain resilience incentivises the choice of cooperative practices within existing suppliers, thereby reinforcing pre-existing links. We conclude that combining companies' inherent variables or capabilities with managerial cognition and perceptions can improve our understanding of decision-making processes and buyer–supplier relationships.
Keywords
Citation
Matas, J., Llorens-Montes, F.J. and Perez, N. (2024), "The influence of collective emotions in the response to supply chain disruptions: a buyer–supplier empirical approach", Industrial Management & Data Systems, Vol. 124 No. 6, pp. 2180-2204. https://doi.org/10.1108/IMDS-10-2023-0716
Publisher
:Emerald Publishing Limited
Copyright © 2024, Jose Matas, Francisco Javier Llorens-Montes and Nieves Perez
License
Published by Emerald Publishing Limited. This article is published under the Creative Commons Attribution (CC BY 4.0) licence. Anyone may reproduce, distribute, translate and create derivative works of this article (for both commercial and non-commercial purposes), subject to full attribution to the original publication and authors. The full terms of this licence may be seen at http://creativecommons.org/licences/by/4.0/legalcode
1. Introduction
Major supply chain disruptions are quite unlikely to occur, but when they do, they “create ambiguous and unfamiliar situations that exert high damage on the company” (Azadegan et al., 2020, p. 749). Such disruptions can be derived from natural disasters (e.g. earthquakes, floods), infrastructure issues (e.g. fire in facilities), or geopolitical conflicts, among others. All these unforeseen circumstances may alter the regular flow of goods and have the potential to negatively impact production processes, such as transportation or information systems, and therefore affect performance (Al-Balushi and Durugbo, 2020; Ivanov et al., 2014). However, these unexpected events are valuable opportunities for advancing our knowledge regarding risk management in the supply chain and organisations’ response to specific threats.
As supply chains are inter-organisational in nature, they can be considered a group whose members have some form of connexion, either direct or indirect (Fawcett et al., 2006). A disruptive event that affects part of the chain may thus generate a ripple effect and strike the rest of the chain (Ivanov et al., 2014). Similarly, human societies or social groups are composed of individuals exposed to suffering a common crisis because of their interconnectedness (Farny et al., 2019). When a disaster affects a certain society, it can trigger collective emotions (CEs)—the similar emotions that members of the same group manifest towards common experiences— (Farny et al., 2019). These emotions can foster a sense of community (Jasper, 1998; Von Scheve and Ismer, 2013) and therefore help individuals overcome difficulties and motivate a proactive response to crises (Farny et al., 2019; Fritsche et al., 2018).
Traditionally, supply chain literature has presumed that decision-making processes are rational, assuming that decision-makers in firms are not influenced by their values or beliefs and will respond homogeneously to similar situations (Boudreau et al., 2003). However, this consideration is not realistic because these processes involve human behaviours that are inherently subjective. Hence, adopting a behavioural perspective is necessary to understand the link between supply chain management theories and actual firm practices. For example, following a fire in the production facilities of Toyota’s supplier, Aisin, Toyota and other firms (both within and outside Toyota's group) collaborated. They did so by disclosing technical information for production to rivals, not to pressure Aisin into prioritising their deliveries (aware of Aisin's relationships with smaller clients) or disseminating new solutions. These efforts expedited the recovery process for all involved parties while involving the renouncement of potential individual benefits (Nishiguchi and Beaudet, 1998). However, our understanding of the relational perspectives and managers’ cognitive processes in decisions made to recover from disruption remains limited.
While recent literature highlights the relevance of emotions in decision-making processes at the managerial level (Cristofaro, 2019), most studies focus on individual emotions (Menges and Kilduff, 2015). These studies have integrated specific individual emotions (e.g. anger, joy) into their models (Chugh et al., 2023; Polyviou et al., 2018), studying how managers' emotions and cognition affect their behaviour (Bono and Ilies, 2006). At the same time, the role of individuals within an organisation in the execution of certain supply chain strategies remains largely unexplored (Timmer and Kaufmann, 2019). Researchers have recognised the potential to advance theory through empirical studies addressing the ways in which managers use the perception and information they receive (Neely et al., 2020). However, the existing literature is unclear on how environmental perceptions and behavioural factors, such as emotions, can influence the firm’s response to a major disruption. Furthermore, despite the inter-organisational nature of supply chain research (Fawcett et al., 2006), little attention has been paid to how collective events and their behavioural reflection affect firms’ decision-making, as has been done in other areas of study (Farny et al., 2019).
The objective of this study is to clarify how managers’ perception of emotions in their supply environment can influence their decision-making processes after a disruption. In this work, the supply environment is understood as a group formed by current and potential suppliers available for the focal firm. The inclusion of supply alternatives within the supply environment study aligns with current research streams in empirical operations research (Wong et al., 2020) and captures the relevance of not only considering direct ties when studying motivational factors such as emotions. As we are studying interconnected groups of firms -supply chains-, we adopt a broader perspective than individual emotions and examine the impact of collective emotions (CEs) to see if they motivate a proactive response to crises situations as it happens in social groups (Farny et al., 2019).
To understand the effect of managers’ perceptions of CEs on organisational response, we ground this study in the upper echelons theory. We focus on the company’s decision-makers because the upper echelons theory argues that company managers’ values, beliefs, and experience play a key role in defining the path the firm’s organisational behaviour takes (Hambrick, 2007). The upper echelons theory thus provides a theoretical framework to connect behavioural factors with supply chain management, as it is a relevant theory for understanding strategic processes and considering complex social interactions that influence firm behaviour, cognition and decision-making (White and Borgholthaus, 2022). Therefore, the perception of CEs by the company decision-makers may help to understand the overall organisation’s response to supply chain disruptions. The literature on strategies to mitigate risk in the face of disruptions has developed two main lines of proactive organisational response: bridging and buffering.
Bridging involves strengthening existing relationships to face the problem caused by the disruption. Among other actions, bridging could imply greater integration of information or signing longer-term contracts—responses that create stability and consolidate the connexion (Fennell and Alexander, 1987). In contrast, buffering seeks solutions outside existing relationships, such as accumulating stock or searching for alternative suppliers to reduce dependence on a single supplier (Timmer and Kaufmann, 2019). This study thus contributes to the literature by answering the following research question:
How does managers’ perception of collective emotions in the firm’s supply environment affect the organisation’s response to disruptions?
Understanding why managers can react differently to disruptions is important to identify the underlying factors that influence decision-making during times of uncertainty and ambiguity. By acknowledging the influence of beliefs, emotional perceptions, and human behaviours, supply chain management strategies can be tailored to suit different managerial styles and better prepare for disruptions.
However, the literature on supply chain and risk management has rather focused on factors related to companies’ capabilities, particularly highlighting the study of supply chain resilience (Castillo, 2022; Ponomarov and Holcomb, 2009) to understand why and how companies react to disruptions. Supply chain resilience is understood as a firm’s capability to prepare, respond, and recover from disruptions (Ponomarov and Holcomb, 2009). While the emotional perspective provides new insights, it alone is insufficient to fully understand why a particular firm may choose one response strategy over another. In this regard, more rational elements such as supply chain resilience, which describe the firm’s ability to sustain its operations, may influence the impact of collective emotions’ perception on the firm’s response. Therefore, we posit that supply chain resilience can act as a moderator in the relationship between a manager’s perception of collective emotions and the firm’s response to disruptions, leading to research question two:
How does firm’s supply chain resilience capability influence that relationship?
Answering these questions will contribute to supply chain management research and practise in three ways. Firs, we respond to the call for research that relates group-level emotions and organisation-level outcomes (Ashkanasy et al., 2017) by studying managers’ perceptions. In particular, we aim to extend the literature in supply chain management research by integrating established research streams from related fields and showing that behavioural factors, particularly emotions, are relevant to understanding firms’ reactions to disruptions. Second, we advance the upper echelons theory through an empirical study that highlights the relevance of managers’ perception and the influence of more distal stakeholders. Third, we operationalise and validate a measurement scale for the perception of CEs in the upstream supply chain. Additionally, this study can also guide practitioners in understanding the importance of emotional and relational factors in decision-making during supply chain disruptions. By recognising the impact of emotions on cooperative practises (bridging), suppliers can effectively foster cooperation from buyers, resulting in increased investments and long-term relationships. Similarly, buyers can make informed decisions by considering managers' emotions and perceptions, leading to improved responses to disruptions.
Drawing on survey data collected from 221 managers of different companies, we tested the proposed relationships using structural equation modelling. The current situation following the pandemic provides a unique scenario of generalised disruptions, a business context that would be difficult to replicate in other circumstances, even using experiments or simulation-based methodology.
2. Theoretical background and hypothesis development
2.1 Upper echelons theory
Hambrick and Mason (1984) introduced the upper echelons theory into the management literature. This theory argues that managers behave according to their specific way of interpreting the situations they face, and that personalised interpretation depends on their experiences, personality, and values. This conceptualisation provides a theoretical basis for understanding organisations’ decisions by studying their managers and their perceptions of the environment (Hambrick and Mason, 1984). Building upon this foundation, subsequent research has expanded on the theory’s premises, highlighting the pivotal role of leaders, including top management teams and board members, in shaping organisational strategies and behaviours. Therefore, managers are not only interpreters of strategic situations but also catalysts for action, translating external and internal motivations into tangible organisational initiatives (Dubey et al., 2019; Feng et al., 2022; Huo et al., 2021; Li et al., 2023).
The development of the upper echelons theory has enabled progress on very diverse topics in recent years, with a particular growing interest in empirical work in supply chain management and B2B research. For example, to study the relationship between CEO characteristics and firm performance (Wang et al., 2016), representation of women in the top management team and environmental strategies (Kumar and Paraskevas, 2018), external pressures in the adoption of circular economy practices (Dubey et al., 2019), buyer’s perception of supply disruption risks (Ellis et al., 2010), lean management within the Toyota network (Potter, 2022), or digital supply chains and information sharing (Wei et al., 2020). For example, to study industrial AI transformation (Xu and Zhang, 2023) or digital supply chains and information sharing (Wei et al., 2020).
In the supply chain management context, decisions within the focal firm are influenced by the performance of its suppliers and the quality of their relationships. The upper echelons theory would set the focus on the managers operating at these interfaces. Their perception of the network can offer insights into the strategic decisions guiding supply chain management practises (Huo et al., 2021). Therefore, we adopt the upper echelons theory to improve our understanding of the psychological and social processes that lead managers in the interfaces with suppliers to make certain decisions (Hambrick, 2007). In addition, we to respond to the need for empirical studies that describe how managers perceive or interpret specific information and its consequences (Neely et al., 2020) in the context of generalised disruptions.
2.2 Collective emotions and organisational response
Humans’ individual behaviour may depend not only on social identity and the sense of belonging to a group but also on the CEs generated in that specific context over time (Fritsche et al., 2018). Similarly, a firm’s behaviour may differ depending on the specific environment in which its supply chain is embedded. Managers of different companies involved in such supply chain relations are continuously in contact and thus influence each other. According to the upper echelons theory, such contact impacts decisions, affecting processes, operations, strategies, and business results (Simsek et al., 2018).
CEs are defined as emotions that are shared by individuals in a certain group or community (Farny et al., 2019). CEs have not, however, been conceptualised consistently in the literature. Research published in leading journals uses different terms for CEs, such as group emotion, shared emotion, collective affect, collective mood, and emotional climate (Menges and Kilduff, 2015).
Despite the lack of consensus on the conceptualisation, there has been a growing interest in and integration of CEs in management-related research. For example, the relationship between co-workers’ shared emotions and client satisfaction (Barsade and O’Neill, 2014); organisational crisis management and workers’ negative feelings (Ayoko et al., 2017); and leadership (Bono and Ilies, 2006). Menges and Kilduff (2015) listed several empirical articles in organisation science that discuss the relationship between emotions and various dimensions, such as decision-making processes, team creativity, productivity, and ethical behaviour in organisations.
Most of the emotion-related literature is linked to human resources research, although this topic has also become relevant in operations research (Urda and Loch, 2013). However, operations and management research still need a deeper understanding of the influence of emotions (Ayoko et al., 2017; Barsade and O’Neill, 2014; Farny et al., 2019; Sanchez-Burks and Huy, 2009; Urda and Loch, 2013), especially deeper knowledge of the consequences of the group’s shared emotions in the supply chain context. This is important because CEs may affect the maintenance of the structure itself, as a member’s perception of a lack of shared affect could increase the likelihood of turnover (Barsade and Knight, 2015). Individual emotions (e.g. anger) have been shown to influence a company’s decisions on supplier retention after a supply disruption (Polyviou et al., 2018). However, CEs may differ from individual ones, and further empirical research is needed to understand this distinction (Menges and Kilduff, 2015).
To contribute to the theoretical and practical development of the role of CEs in B2B research, we adapted the framework proposed by Farny et al. (2019) (Table 1). Their work identifies the CEs that arise in a group facing a critical situation and explains how these emotions can facilitate the creation of institutions in a post-disaster context.
In the supply chain context, such critical situations are referred to as disruptions. Supply chain disruptions refer to the emergence of a shared critical situation that affects a specific group of companies, altering the regular flow of different assets. Following the disruption, managers are motivated to respond proactively to restore stability and improve operating processes (Bode and Wagner, 2015). Therefore, it is important to determine what factors influence the decision to adopt different types of organisational responses.
To analyse the relevance of CEs, we need to study their effect on specific organisational responses as they reflect the decision-making process by managers. An extensive review of the literature on supply chain risk management highlighted the two main organisational responses to these risks: bridging and buffering (Bode et al., 2011; Manhart et al., 2020).
The bridging strategy aims to reduce uncertainty by strengthening the focal firm’s current relationships (Fennell and Alexander, 1987; Mishra et al., 2016). Actions within the framework of bridging can be defined as cooperative (Timmer and Kaufmann, 2019) and focus on existing relationships. In the context of institutional creation, Farny et al. (2019) argued that emotions play a key role in the continuation of creation work practises in a group. Similarly, CEs in the environment may help to justify a specific organisational response oriented towards consolidating existing relationships to reduce the negative impact of future disruptions. Examples of bridging actions in the supply chain include deeper integration (e.g. vertical integration), negotiation of a longer-term contract; and investing in joint structures (e.g. joint ventures), or even mergers and acquisitions (Al-Balushi and Durugbo, 2020; Bode et al., 2011; Mishra et al., 2016).
In contrast to bridging, the buffering strategy involves external measures beyond the firm’s existing relationships to reduce vulnerability and minimise the negative impact of environmental threats, such as supply chain disruptions (Bode et al., 2011; Fennell and Alexander, 1987). This response is sometimes considered uncooperative towards current suppliers, but it does not necessarily imply terminating existing connexions. Instead, firms can use their resources to explore solutions beyond these relationships (Laari et al., 2023) while maintaining them, especially as temporary measures following a disruption (Küffner et al., 2022). Examples of buffering actions include seeking redundant suppliers, redesigning products, and stockpiling inventory (Timmer and Kaufmann, 2019).
Research has examined the application of these strategies as responses to different types of disruption in the supply chain. For instance, to cope with disruptions due to political factors or IT-related issues such as cyberattacks (Al-Balushi and Durugbo, 2020; Manhart et al., 2020). However, scholars note a lack of research on the role individuals play within organisations in executing one strategy or the other to respond to a disruptive event in the supply chain (Timmer and Kaufmann, 2019). One exception was the experiment by Mir et al. (2017) that focused on individual analysis of managers. The authors concluded that not only rational factors such as cost-benefit analysis but also decision-makers’ perceptions of suppliers, could influence their decisions to change suppliers (buffering).
Farny et al. (2019) identified CEs in a society affected by a large-scale natural disaster. Similarly, we argue that CEs are also present in a firm’s specific supply environment after experiencing a general disruption. These emotions may arise because of common experiences, shared norms, and specific societal conditions, such as an organisational crisis (Ayoko et al., 2017). Given the role that emotional processes play in managers’ behaviour (Polyviou et al., 2018) and therefore in the organisation’s response, we propose the following hypotheses:
The more managers perceive CEs in their supply environment, the more they will pursue bridging as an organisational response to a disruption.
The more managers perceive CEs in their supply environment, the more they will pursue buffering as an organisational response to a disruption.
2.3 The moderating effect of supply chain resilience
Supply chain resilience is “the adaptive capability of the supply chain to prepare for unexpected events, respond to disruptions, and recover from them by maintaining continuity of operations at the desired level of connectedness and control over structure and function” (Ponomarov and Holcomb, 2009, p. 131). Because supply chain resilience is inherent to a certain network itself (Kim et al., 2015), it depends on existing inter-organisational relationships. It is also a significant factor in the analysis of the scope of the impact of a disruption on the supply chain and the measures taken by affected firms (Katsaliaki et al., 2022). When a supply chain is considered resilient to adverse events, the configuration of its existing interrelations can be sufficient to reduce the negative impact of this disruption (Hasani and Khosrojerdi, 2016). However, when major disruptions occur, the impact of the disruption might not be preventable and firms would actively respond to them (Bode and Wagner, 2015).
Yet, little attention has been paid to the empirical analysis of the relationship between supply chain resilience capability and its influence on decision-makers when applying organisational response strategies (e.g. buffering and bridging) in the face of severe disruptions.
Based on the foregoing, we argue that although CEs can influence organisational response, the capability to manage disruptions effectively -or supply chain resilience-is an important factor in understanding decision-making processes. Supply chain resilience may thus act as a factor that moderates the relationship between the perception of CEs and the type of organisational response, providing a more comprehensive understanding of the dynamics between emotions and firm responses to disruptions.
Supply chain resilience positively moderates the relationship between CEs perception and the pursuit of bridging.
Supply chain resilience positively moderates the relationship between CEs perception and the pursuit of buffering.
3. Methodology
3.1 Sampling and data collection
Primary data were collected because attitudes and behaviours are better assessed by asking the decision-makers themselves (Straits and Singleton, 2018). As this work aims to explain the relationships between variables in real business contexts, rather than through experiments or case studies, a survey instrument was considered more appropriate. An initial version of the survey was sent to three different academics, all of whom had in-depth expertise in supply chain and operations management. We used the feedback of these experts to improve the initial version of the survey and eliminate any structural problems from the measures. Afterwards, twenty companies performed a pre-test that was not included in the final sample.
The survey used a 7-point Likert scale to capture variability in the answers. The design avoided common scale formats (or anchors) to prevent potential item-related systematic bias (Straits and Singleton, 2018). To reduce non-respondent bias, we developed a short and dynamic survey with a friendly interface adapted to multiple formats (web, smartphone and tablet).
For a proper integration of the theoretical foundation of the upper echelons theory and the supply chain management perspective, additional efforts were made to obtain adequate respondents. LinkedIn was thus used to identify and contact suitable respondents, as this platform has been established as a useful tool for empirical study in operations and supply chain research (Shee et al., 2018). Rather than looking for a specific type of firm, we controlled the process to ensure that the job position of potential respondents was purchasing manager, logistics manager, supply chain manager, or procurement manager. Consequently, our sample consists of Spanish-based firms that have the above-mentioned profiles in their organisation and consequently have people in direct contact with suppliers. These positions are appropriate as they are present at the interfaces of relationships among firms. Therefore, managers currently holding one of the abovementioned positions, based on the information from their LinkedIn profiles, compose the sampling frame. We thus ensure the inclusion of relevant respondents, which is crucial for methodological alignment with the theoretical framework.
Within that specific framework, we randomly contacted managers by two different means to increase the likelihood of response: direct messages sent via LinkedIn and direct emails to the firm. We incorporated motivational elements designed to increase the response rate. First, the emails were nominative, making explicit reference to the potential respondent based on the information obtained manually on LinkedIn. Second, we composed personalised emails that referred to the specific firm and the importance of its participation in advancing knowledge (Straits and Singleton, 2018). We conducted an F-test using G*Power statistical software to determine the recommended sample size to achieve a statistical power of 95%, which was set at 215 respondents (Faul et al., 2009). Finally, 1121 contacts were made to obtain 221 useful responses. The efforts on the data collection strategy resulted in a response rate of 19.71%, which is similar to or even higher than that reported in recent operations management research on risk and supply chain disruptions (Fan et al., 2020).
This contacting strategy was also designed to minimise response bias problems. We explicitly emphasise the anonymity and confidentiality of the responses. Along with the use of self-administered questionnaires, we aimed to reduce potential social-desirability bias and inconvenience of data collection for participants (Dillman et al., 2014). In addition, the demographic characteristics of the sample (Table 2) show the diversity of the companies included in the study, contributing to reducing potential respondent bias.
3.2 Measures
Collective emotions
We used the variables identified in the ethnographic study by Farny et al. (2019). To maintain content validity, we adapted the original scales of the six CEs identified to the supply chain context (Table 1), incorporating the opinions of the experts who took the pre-test. The variable perception of CEs is a formative second-order composite established by six different first-order variables measured reflectively. A high level of some of these first-order variables indicates that the respondent’s perception of that specific CE is very positive.
Organisational response
Buffering and bridging strategies were operationalised following Bode et al. (2011). To contextualise the respondents, we used the disruption caused by the COVID-19 pandemic as a significant event to reflect their firm’s organisational response.
Supply chain resilience
We used the scale applied and validated by Golgeci and Ponomarov (2013) and Ponomarov (2012). This measure is considered appropriate because it has received broad support in recent publications in the field of risk mitigation strategies (Um and Han, 2021), across different levels of disruption (Wong et al., 2020) and degrees of environmental dynamism (Yu et al., 2019).
Control variables
Different variables were used to control the model and study the possible effects of existing relationships. We included firm size, differentiating large from small and medium-sized firms. We also controlled for years the firm had been operating in the sector because the strength of existing business relationships may be affected by time. Similarly, we grouped the industries into manufacturing, services, and “other” industries, to check for potential differences among groups by applying the recommendations for structural equation modelling (Benitez et al., 2020) and creating a composite from the existing categories. Finally, we also controlled for years of the respondent’s experience, which is a very significant factor in our study. Knowing decision-makers’ backgrounds is important because the upper echelons theory argues that they make decisions based on their experience and perceptions.
4. Results
4.1 Statistical analysis technique
The proposed theoretical model was empirically tested using structural equation modelling based on partial least squares (PLS-SEM). For the analysis, SmartPLS 3.2.8 software was used, which is a common tool in similar empirical B2B research (Gani et al., 2022). The analysis involved a two-step process. The first step tested the measurement model by analysing the validity, consistency, and reliability of the measures and proposed scales. The second step evaluates the structural model, applying a bootstrapping procedure with 5,000 samples to improve the statistical robustness of the empirical results. By taking this approach, we assess the strength and significance of the relationships hypothesised among the variables. We decided to use PLS because it is a common method in empirical applied research to overcome the limitations of restrictive assumptions such as multivariate normality (Streukens and Leroi-Werelds, 2016). It also allows the incorporation of both reflective and formative components in the analysis, as well as the calculation of latent variable scores to address the structural model (Hair et al., 2019).
4.2 Measurement model evaluation
To evaluate the measurement model, we follow similar research (e.g. Tan et al., 2022) and assess the convergent validity, discriminant validity, and reliability of the constructs under study. This first step confirmed convergent validity and indicator reliability. External (standardised) loadings were greater than 0.7 (Hair et al., 2011), indicating that the variable explains at least 50% of the variance of each indicator. We also confirmed that the average variance extracted (AVE) was above the recommended threshold of 0.5, as shown in Appendix.
Appendix presents the model’s internal consistency, confirmed by the Cronbach Alpha (CA), which must be between 0 and 1 (ideally above 0.7) to justify the non-redundancy of the items. To complement this test, we analysed composite reliability (CR), which should be a value above 0.7 (Hair et al., 2011).
A model’s discriminant validity is confirmed if one construct differs from the others according to empirical standards and if the phenomena that capture it are different from those that capture the other constructs in the model (Hair et al., 2011). Despite cross-loading yielding satisfactory results, we incorporated more robust complementary methods. The Fornell–Larcker criterion confirms that the square root of the AVEs for each construct is greater than their correlations with the other constructs, based on the correlation matrix (Table 3). Following the more recent recommendations of Henseler et al. (2016), we used the heterotrait-monotrait ratio (HTMT) (Table 3), which estimates the real correlation between two constructs if they were perfectly reliable. We found no problems with discriminant validity, as none of the values exceeded the established limit of 0.85 and no confidence interval of the HTMT statistic with bootstrapping contained the value of 1 (Henseler et al., 2015).
We tested for multi-collinearity through using variance inflation factors (VIFs) and obtained values under 5 – the limits recommended by Hair et al. (2011), with one exception. One item of the construct of bridging, imported from the existing literature and measured reflexively, exceeded this threshold (VIF of 5.6). Because the item is significant to the construct and we did not wish to lose content validity, we decided not to eliminate the item.
4.3 Structural measurement and hypothesis testing
The structural model evaluation assesses the significance of the relationships hypothesised in the proposed research model (Figure 1). After obtaining a positive evaluation of the measurement model, we extracted the latent variable scores from the different variables composing the formative second-order composite, which reflects the perception of CEs. This process standardised the scores between −1 and 1, which we used as indicators to measure the second-order construct (Sarstedt et al., 2019). Appendix displays the weights and significance of each first-order variable in the perception of CEs. In addition, the predictive power of the model was calculated as part of the structural model validation. We used the blindfolding technique to calculate Q2 values for dependent constructs, which were positive. Positive Q2 values denote the path model’s predictive relevance (Hair et al., 2014).
Finally, we evaluate the fit of the empirical data to the theoretical model by evaluating the discrepancies between the empirical matrix and the implicit correlation matrix in the model (Benitez et al., 2020; Henseler et al., 2015). For this purpose and following Henseler et al. (2016), we evaluated the value of the standardised root mean square residual (SRMR), for which the model obtained 0.07 for the saturated model, showing an adequate fit (<0.08) according to a conservative approach (Hu and Bentler, 1998). Also, the values of the discrepancies of the geodesic distance (dG) and the unweighted least squares distance (dULS) remained lower than the 95% (HI95) and the 99% (HI99) quantiles after a bootstrap sampling process (Henseler et al., 2016), suggesting an adequate fit of the model.
Table 4 presents the results of the structural equation modelling, displaying values for the strength and significance of the relationships hypothesised, as well as the beta values of the control variables’ effect on the dependent variables in the model.
The results show that a greater perception of positive CEs motivates greater organisational response in terms of both bridging and buffering, but that each strategy is adopted with different intensity and for different reasons. A positive and significant relationship between greater perception of positive CEs in the supply environment and organisational response oriented towards bridging confirms H1a (p < 0.001). Thus, the greater the degree of perception of CEs, the more the organisation’s response is based on new strategies that reinforce the environment’s collaborative relationship and behaviour, in line with other authors (Ashnai et al., 2016). We also confirmed H1b (p < 0.05), establishing a positive relationship between the perception of CE and buffering.
The analysis showed that supply chain resilience positively moderates the relationship between CE and organisational response oriented to bridging, confirming H2a (p < 0.05). Figure 2 shows that a different degree of supply chain resilience can strongly influence the relationships between CE and bridging, especially in the presence of a high degree of CEs.
On the other hand, we find no evidence of a moderating effect of supply chain resilience on the relationship between CE and buffering, and thus cannot confirm H2b (p = 0.336).
The control variables are not significantly related to the dependent variables. The size of the firm does not influence on the selection of buffering (p = 0.835) or bridging (p = 0.579) as responses against disruptions. Industry categorisation was also not significant (p = 0.749 and p = 0.475, respectively), indicating, for example, that manufacturing firms’ behaviour was not significantly different from that of service firms. The years that the company has been operating (firm age) did not have a significant effect on specific firm response to disruptions either, neither buffering (p = 0.424) nor bridging (p = 0.089). However, respondent’s years of experience shows a positive and significant relationship to the development of bridging responses in response to disruptions (p < 0.01). Not buffering (p = 0.192). Thus, the more years of work experience, the greater the manager’s inclination to apply an organisational response oriented to bridging.
5. Discussion
This article illuminates the internal processes that shape organisations’ responses to severe disruptions in the supply chain. It also increases the understanding of the role of CEs in operations and supply chain management research. Taking supply chain resilience into account, we use the upper echelons theory to explain how managers’ perception of their supply environment affects their way of responding to especially turbulent situations.
Our findings support H1a, linking the pursuit of bridging with a perception of a high degree of CE. The focal firm trusts existing contacts to solve problems related to the supply chain and focuses on investments in this direction. This response means that CEs function to motivate not only the creation of new institutions (Farny et al., 2019) but also the strengthening of existing connexions in the context of disruption in supply chain management. To achieve this more advanced collaborative strategy, a company can implement changes such as greater information integration, long-term contracts, and even deeper interaction, such as the creation of joint ventures, mergers, or acquisitions.
The pursuit of buffering when collective emotions are perceived, as stated in H1b, may initially seem counterintuitive. For example, Mishra et al. (2016) found that trust negatively correlates with buffering actions. Although trust is not an identical variable, it serves as a proxy for comparison between studies, given its role as a behavioural and relational construct denoting confidence in business partners, regarding them as truthful and benevolent (Sahay, 2003). On the contrary, we find a positive relationship. These results can be explained in three different ways. First, in line with conclusions drawn in past literature (Bode et al., 2011), the disruption itself leads the focal firm to question its prior beliefs about existing relationships, as strong dependence on specific suppliers could increase risks in turbulent situations. The focal firm may thus seek alternative solutions (e.g. redesign products to avoid depending completely on a certain supplier). Second, in a context of major disruptions, firms may opt to engage in complementary activities even when the perception of CE is high and other bridging actions are being implemented. Buffering actions can complement bridging strategies and serve as post-disruption and temporary measures (Küffner et al., 2022). For example, stockpiling can effectively serve as a buffering mechanism against disruption in the short run, but it might not be sufficient for a long-term crisis. Although this practise is effective in the short term, it may not be sufficient for a long-term crisis. Third, the perception of positive CEs could reduce aversion to establishing new relationships with companies in the firm’s supply environment, making buffering actions such as seeking redundant suppliers or switching suppliers less difficult to initiate.
We also empirically observe that supply chain resilience moderates a company’s reaction to a disruption (H2a). Existing research has examined how bridging and buffering actions can lead to supply chain resilience when major disruptions occur, acting as antecedents (Holgado and Niess, 2023). We extend these findings and show that the existing degree of supply chain resilience also influences decision-making processes regarding firm response to disruptions. In the presence of a high perception of CEs, stronger supply chain resilience incentivises the choice of cooperative practises within existing relationships, thereby reinforcing and strengthening pre-existing links. As Figure 2 shows, this moderator effect weakens when the perception of CEs is low. The pursuit of bridging is thus negative when elements such as security, trust, and hope are not perceived in the supply environment, even if supply chain resilience is high. Since supply chain resilience is an inherent characteristic of existing structures and relationships (Kim et al., 2015), its moderating effect is not significant in the relationship between the perception of CE and the search for alternative solutions (H2b), as this motivation seeks to reduce dependence on existing relationships.
The findings identify another factor that significantly influences decisions about organisational response: the respondent’s years of experience. We argue that having many years of work experience leads one to forge a better relationship with partners, creating social capital that can affect organisational decisions in the face of severe disruptions.
5.1 Theoretical implications
The arguments provided and the results obtained advance the study of behavioural supply chain management and the role of emotions in operations research. This article represents the first step towards empirical operationalisation of the perception of CEs in a group—in our context, CEs that arise in the supply environment. The inter-organisational nature of supply chains, coupled with the study of disruptive events, provides an appropriate context to justify the implementation of the theoretical model and to expand the literature on firm responses to disruptions.
In response to the literature’s call for empirical contributions to the study of CEs in operations and management research (Menges and Kilduff, 2015), we found that the perception of certain emotions in the environment can influence how managers make decisions regarding their supply chain. Consequently, it is important to consider the background and perception of managers to understand and foresee how companies may react to disruptions. This finding extends studies that found that the cognitive processes and personality of managers can affect responses to supply chain events (Timmer and Kaufmann, 2019) by identifying antecedents associated with psychological factors and more distal stakeholders. In particular, it expands the body of supply chain management literature on emotions beyond isolated constructs (e.g. anger, joy) (Chugh et al., 2023). Indeed, the results illustrate the relevance and applicability of the concept of collective emotions in the B2B context.
At the same time, we complement previous research on the outcome of buffering and bridging strategies in supply chain management (Reimann et al., 2017) by identifying factors (e.g. collective emotions) related to buyer information processing. Emotions perceived from a wider group (such as in the case of the supply environment) do play a role in the context of upstream supply chain management. These findings complement the existing literature on firms’ response spectrum. Research has highlighted the relevance of different variables that may influence the firms’ responses to disruptions. Among these antecedents, we can find perceptual dimensions such as growth aspiration or personality traits (Kariv et al., 2024; Timmer and Kaufmann, 2019) or relational dimensions such as governance, power, and dependency (Al-Balushi and Durugbo, 2020; Liu and Wei, 2021; Su et al., 2014). We complement these perspectives by acknowledging the relevance of both emotions and individuals’ cognition in decision-making processes (Cristofaro, 2019; Timmer and Kaufmann, 2019), showing that the perception of emotions by decision-makers is also an antecedent that helps explain firms’ behaviour under disruptive situations.
This article also contributes to the very small body of empirical upper echelons theory literature in operations research (Neely et al., 2020) by examining how specific information managers perceive is used when making decisions on how to face disruptions. The findings of this study are consistent with previous research that has also demonstrated the relevance of the relational perspective and managers' perceptions in understanding buyer-supplier relationships (Gallear et al., 2022). Studying managers’ particular perceptions helps understand the black box of managers’ emotions, which have been shown to be significant in the study of behavioural factors for decision-making. We extend recent B2B studies in emotions showing that not only do managers’ own emotions influence firm response (Chugh et al., 2023) but also how they perceive emotions in their environment.
We also found that existing firm capabilities related to their supply structure (e.g. supply chain resilience) play a moderating role in the organisation’s response and future configuration of relationships with suppliers. Although supply chain resilience has been studied extensively as a dependent variable (Fan et al., 2020; Um and Han, 2021), our study shows that the existing level of supply chain resilience also influences organisational decisions made in turbulent contexts such as disruptions. Thus, the results of this study suggest that a combination of both a company's inherent variables (such as its capabilities) and behavioural considerations (such as managers' perception of the environment) is necessary to better understand the decision-making process of a company. Although these factors are individually important, they might not be sufficient on their own. Therefore, it is essential to combine these elements to fully comprehend the factors that influence a company’s choices.
5.2 Managerial implications
Our study has implications for both buyers and suppliers. We found that the likelihood of choosing cooperative practises (bridging) with suppliers after a disruption increases when managers perceive collective emotions. Since behavioural elements such as emotions have been identified as relevant to understanding firms’ decision-making under disruptive contexts, managers of supplier firms need to consider not only the perception of their clients in terms of capabilities and performance but also pay attention to the emotional and relational perspective, which has been shown to influence the buyers’ organisational response after a disruption. By improving how they are perceived in terms of emotions, customers may engage in bridging actions with them to face disruptions. This, in turn, may lead to increased investments and longer-term contracts, thereby affecting the firm’s competitive position against rivals. This is especially relevant in highly concentrated industries, in which the number of competitors is lower and strengthening relationships with existing customers is key for survival, especially in a context of disruption. Managers are therefore advised not to ignore their emotional climate in their supply environment, as it may help to anticipate the organisational response from suppliers and be better prepared to effectively respond jointly to supply chain disruptions.
On the other hand, buyer firms can make more informed choices and improve decision-making in response to disruptions by considering managers’ perceptions and emotions. These insights can inform supply chain management practises, prompting the integration of emotional assessment tools and training programmes that enable managers to better assess and respond to emotional cues within the supply chain. Managers could thus tailor their response strategies based on the prevailing emotional climate. Firms whose managers perceive a high degree of CEs in their environment and wish to maintain and stabilise relationships should thus bid to create a collaborative network based on bridging strategies. This investment could focus, for example, on the integration of information systems, the inclusion of partners in strategic decision-making about the supply chain, or investing in common structures (e.g. joint ventures, vertical integration). However, buffering actions can also be pursued and complement the firm’s strategy, especially as temporary and post-disruption measures. By temporarily changing the means of transport, diversifying the supply base, or seeking redundant suppliers, the firm can also proactively react to minimise the consequences of the disruption (Küffner et al., 2022).
Additionally, managers’ experience in the field has been found to influence a firm’s response to bridging actions. Top management teams of companies in industries that are embedded in highly complex or very dynamic environments may be interested in hiring more experienced managers for positions directly involved in purchasing, logistics, or supply chain management. This is because bridging actions can help strengthen existing relationships and develop longer-term relationships.
5.3 Limitations and future research
The interpretation of this work should consider its context and the existing limitations, which may also guide future research streams. One main constraint of the initial study design is its reliance on a single respondent per observational unit. To reduce this limitation, we follow web questionnaire guidelines to obtain valuable answers, such as the personalisation of emails or the short length of the survey (Dillman et al., 2014).
Furthermore, consistent with the theoretical framework provided by the upper echelons theory, great efforts were made to identify and contact specific managers relevant to the study. Common method bias could also explain the correlation observed between the variables (Podsakoff et al., 2003). Although this bias cannot be eliminated completely, the survey was designed to reduce it to the greatest extent possible using psychological separation of the main construct, different response formats, or by conveying a message of security to minimise social desirability bias.
At the same time, conducting a cross-sectional study prevents us from properly establishing a causal relationship between variables. Future research should take the time frame into account and determine the differences between short and long-term responses and variability in the degree of CEs perception. For example, stockpiling (buffering) may be helpful immediately after a disruption but change over time, especially in the case of very long-term disruptions (Ivanov and Dolgui, 2020). We also encourage researchers to capture multiple perspectives within the same group to draw conclusions at a higher level of analysis, such as the network level. For these conclusions, it would not only be interesting to understand the decision-making process but also to include performance variables to seize the effects of those choices.
The pursuit of buffering as an organisational response also depends on the firm’s ability to build new relationships, whereas bridging relies on its ability to strengthen existing ones. Researchers are encouraged to deepen their current understanding of the effects of behavioural factors and relationship management capabilities on organisational response. It would also be important to explore this relationship at lower levels of supply chain risk management strategies, focussing on the consequences of specific actions rather than a more general strategy, such as buffering or bridging. At the same time, the operationalisation of CEs enables future research in relationships within the firm. Therefore, understanding the role of emotions in intra-firm sets would also contribute to current research.
Finally, researchers are encouraged to incorporate behavioural factors into their models, along with related firm structural characteristics or capabilities, to gain a better understanding of how these elements are linked and to appreciate the relevance of human factors in business management.
5.4 Conclusion
This study highlights the role of emotions in shaping organisational responses to disruptions in the supply chain. The findings present exciting opportunities for further exploration in understanding the impact of emotions on buyer-supplier relationships. Managers are not static assets as their cognition and perception of the environment are under continuous change, which affects the firm’s behaviour. Therefore, they should not be disregarded in research aimed at better understanding B2B relationships and organisational strategies.
Figures
Conceptualisation of CEs
Collective emotion | Definition adapted to supply chain context | Adapted from |
---|---|---|
Collective Confidence | Shared feeling that the supply chain can improve their situation in the future | Curtin (1982), De Rivera (1992) |
Feeling of Security | Companies in the supply chain do not perceive either threats or dangers, or threats or dangers they believe they will be able to overcome | Rivera et al. (2007) |
Compassionate Empathy | Noticing, feeling, and responding to another supply chain company’s problems | Dutton et al. (2006) |
Affective Solidarity | In response to an event, each member of the supply chain contributes to enhancing the sense of community | Jasper (2011), Farny et al. (2019) |
Collective Hope | Group members actively respond to supply chain events because they share strong feelings of belonging | Seo et al. (2012) |
Harmonious Passion | Motivation to engage in new activities and change willingly and freely, in harmony with other activities performed | Vallerand et al. (2003) |
Source(s): Authors’ own work
Sample characteristics
Frequency | Percent | |
---|---|---|
Firm age | ||
1–20 | 62 | 28.1 |
21–40 | 70 | 31.7 |
41–60 | 50 | 22.6 |
>60 | 39 | 17.6 |
Total | 221 | 100 |
Number of employees | ||
<50 | 72 | 32.6 |
50–250 | 68 | 30.8 |
251–1000 | 37 | 16.7 |
>1000 | 45 | 20.4 |
Total | 221 | 100 |
Respondent’s years of experience | ||
<10 | 89 | 40.3 |
10–19 | 64 | 29 |
20–29 | 46 | 20.8 |
≥30 | 22 | 10 |
Total | 221 | 100 |
Firm sales (million EUR) | ||
<1 | 16 | 7.2 |
1–6.9 | 54 | 24.4 |
7–39.9 | 63 | 28.5 |
>40 | 88 | 39.8 |
Total | 221 | 100 |
Industry | ||
Manufacturing | 81 | 36.7 |
Wholesale and Retail Trading | 53 | 24 |
Others | 22 | 10 |
Transportation and storage | 15 | 6.8 |
Other general services | 15 | 6.8 |
Construction | 12 | 5.4 |
Agriculture | 8 | 3.6 |
Information and communication | 8 | 3.6 |
Professional, scientific and technical activities | 7 | 3.2 |
Total | 221 | 100 |
Source(s): Authors’ own work
Fornell-Larcker criterion and HTMT ratio
Bridging | Buffering | Confidence | Empathy | Hope | Passion | SCR | Security | Solidarity | |
---|---|---|---|---|---|---|---|---|---|
Bridging | 0.876 | 0.616 | 0.364 | 0.349 | 0.496 | 0.400 | 0.421 | 0.460 | 0.398 |
Buffering | 0.556 | 0.829 | 0.225 | 0.114 | 0.293 | 0.257 | 0.266 | 0.208 | 0.192 |
Confidence | 0.322 | 0.218 | 0.854 | 0.397 | 0.377 | 0.376 | 0.342 | 0.513 | 0.442 |
Empathy | 0.31 | 0.097 | 0.35 | 0.858 | 0.521 | 0.528 | 0.582 | 0.681 | 0.821 |
Hope | 0.427 | 0.275 | 0.318 | 0.449 | 0.82 | 0.793 | 0.701 | 0.551 | 0.536 |
Passion | 0.366 | 0.244 | 0.337 | 0.477 | 0.7 | 0.831 | 0.681 | 0.646 | 0.650 |
SCR* | 0.383 | 0.253 | 0.308 | 0.525 | 0.61 | 0.628 | 0.799 | 0.641 | 0.471 |
Security | 0.375 | 0.191 | 0.404 | 0.549 | 0.43 | 0.535 | 0.533 | 0.813 | 0.722 |
Solidarity | 0.345 | 0.158 | 0.378 | 0.711 | 0.46 | 0.581 | 0.422 | 0.572 | 0.868 |
Note(s): The Fornell-Larcker criterion is in the diagonal and below the diagonal. The HTMT ratio is above the diagonal
*SCR accounts for Supply Chain Resilience
Source(s): Authors’ own work
Significance of model relationships
Relation | Hypothesis | Path coefficients | p value | Results |
---|---|---|---|---|
Direct effect | ||||
CE → Bridging | H1a | 0.444 | 0.000*** | Supported |
CE → Buffering | H1b | 0.227 | 0.014* | Supported |
Moderating effect | ||||
SCR → CE*Bridging | H2a | 0.160 | 0.024* | Supported |
SCR → CE *Buffering | H2b | 0.055 | 0.336 | Not supported |
Control variables | ||||
Firm Size → Bridging | – | 0.035 | 0.579 | Not significant |
Firm Size → Buffering | – | 0.015 | 0.835 | Not significant |
Firm Age → Bridging | – | 0.093 | 0.089 | Not significant |
Firm Age → Buffering | – | −0.061 | 0.424 | Not significant |
Industry → Bridging | – | −0.080 | 0.475 | Not significant |
Industry → Buffering | – | −0.030 | 0.749 | Not significant |
Years of Experience → Bridging | – | 0.153 | 0.005** | Significant |
Years of Experience → Buffering | – | 0.086 | 0.192 | Not significant |
Note(s): *p < 0.05; **p < 0.01; ***p < 0.001
Source(s): Authors’ own work
Constructs and indicators
Construct | Measurement indicators | Weights/Loadings | CA | CR | AVE | |
---|---|---|---|---|---|---|
Confidence Adapted from (De Rivera, 1992; Curtin, 1982) | Please evaluate your supply environment relative to the following statements | 0.210*** | 0.817 | 0.889 | 0.728 | |
CON1 | Its performance will be better next year than it is now | 0.823*** | ||||
CON2 | It will be more competitive next year than it is now | 0.846*** | ||||
CON3 | The role of my company in the environment will improve in the next year | 0.890*** | ||||
– | Its current performance is better than last year’s performance. ⸸ | |||||
– | I think it is a good time for the supply environment to acquire important assets, such as machinery or advanced software. ⸸ | |||||
Feeling of Security Adapted from (Rivera et al., 2007) | Please rate the following statements about the group of companies that compose your supply environment | 0.228*** | 0.739 | 0.853 | 0.661 | |
SEC1 | We believe that our contribution to the environment will cover our essential business needs | 0.721*** | ||||
SEC2 | We care about each other | 0.866*** | ||||
SEC3 | We like and respect the values and traditions of other companies in the environment | 0.844*** | ||||
– | We are open to having meetings with companies outside the current environment. ⸸ | |||||
– | There are opportunities to improve the environment and obtain better performance within it. ⸸ | |||||
– | We do not feel misled by others. ⸸ | |||||
– | We are confident that other members will listen to us if we have any concerns or suggestions. ⸸ | |||||
– | If we have a problem, the other companies in the environment will help us. ⸸ | |||||
– | All members receive in proportion with what we deserve. ⸸ | |||||
Compassionate Empathy Adapted from (Dutton et al., 2006) | The companies in my supply environment | 0.172*** | 0.880 | 0.918 | 0.736 | |
EMP1 | Invest a large amount of resources (time, budget …) in helping other companies in the environment | 0.838*** | ||||
EMP2 | Generate different resources to help the other companies in the environment that need them | 0.888*** | ||||
EMP3 | Provide the help other companies need in a short period of time | 0.865*** | ||||
EMP4 | Adapt help to the specific needs of each case | 0.840*** | ||||
Affective Solidarity Adapted from (Jasper, 2011; Farny et al., 2019) | The companies in my supply environment | 0.204*** | 0.835 | 0.901 | 0.753 | |
SOL1 | Think that what really matters is solidarity and mutual aid | 0.895*** | ||||
SOL2 | Collaborate with the vision and objectives of the entire supply environment | 0.917*** | ||||
SOL3 | Are open to welcoming any company that joins the environment | 0.785*** | ||||
Collective Hope Adapted from (Seo et al., 2012) | Please indicate how the companies in the supply environment to which you belong feel during unexpected events associated with strategic change | 0.274*** | 0.837 | 0.892 | 0.676 | |
HOP1 | Attentive | 0.706*** | ||||
HOP2 | Active | 0.821*** | ||||
HOP3 | Determined | 0.870*** | ||||
HOP4 | Strong | 0.880*** | ||||
– | Interested ⸸ | |||||
– | Alert ⸸ | |||||
– | Excited ⸸ | |||||
– | Enthusiastic ⸸ | |||||
– | Inspired ⸸ | |||||
– | Proud ⸸ | |||||
Harmonious Passion Adapted from (Vallerand et al., 2003) | When changes occur in the network, the companies in my supply environment | 0.237*** | 0.925 | 0.940 | 0.690 | |
PAS1 | Allow these changes to happen and have a variety of experiences | 0.851*** | ||||
PAS2 | Discover new and positive things | 0.864*** | ||||
PAS3 | Have significant experiences | 0.821*** | ||||
PAS4 | Highlight our distinctive qualities even more | 0.862*** | ||||
PAS5 | Implement the changes without altering the other activities in the company | 0.765*** | ||||
PAS6 | Experience those changes passionately, while still maintaining control | 0.854*** | ||||
PAS7 | Are completely devoted to these changes | 0.794*** | ||||
Supply Chain Resilience Adapted from (Golgeci and Ponomarov, 2013) | Our supply chain is able to | 0.905 | 0.925 | 0.638 | ||
SCR1 | Respond adequately to unexpected disruptions by quickly restoring its product flow | 0.772*** | ||||
SCR2 | Return to its original state quickly after being disrupted | 0.769*** | ||||
SCR3 | Move to a new, more desirable state after being disrupted | 0.722*** | ||||
SCR4 | Deal with the financial consequences of supply chain disruptions | 0.830*** | ||||
SCR5 | Maintain the desired level of connection among supply chain members when a disruption occurs | 0.855*** | ||||
SCR6 | Maintain proper functioning among supply chain members when a disruption occurs | 0.860*** | ||||
SCR7 | Extract valuable knowledge from disruptions and other unexpected events (such as COVID-19) | 0.773*** | ||||
Organisational response Adapted from (Bode et al., 2011) | ||||||
Bridging | At the time of the disruption (such as that produced by COVID-19), to what extent did your business unit pursue, or made plans to pursue, the following activities? | 0.897 | 0.929 | 0.768 | ||
BRI1 | Improve collaboration with suppliers in order to overcome the disruption | 0.859*** | ||||
BRI2 | Cooperate more intensively with suppliers | 0.942*** | ||||
BRI3 | Improve information exchange with suppliers | 0.915*** | ||||
BRI4 | Involve suppliers in risk management activities (e.g. developing a joint contingency plan) | 0.779*** | ||||
– | Tighten control mechanisms on suppliers (e.g. more monitoring). ⸸ | |||||
Buffering | At the time of the disruption (such as that produced by COVID-19), to what extent did your business unit pursue, or make plans to pursue, the following activities? | 0.787 | 0.867 | 0.687 | ||
BUF1 | To become less dependent on its suppliers or usual brands | 0.707*** | ||||
BUF2 | Seek protective mechanisms against disturbances in supply of the item purchased | 0.918*** | ||||
BUF3 | Search for or develop one or more alternative supplier(s) for the item purchased | 0.847*** |
Note(s): *p < 0.05; **p < 0.01; ***p < 0.001
⸸: Items removed to meet the reliability and validity criteria
Source(s): Authors’ own work
References
Al-Balushi, Z. and Durugbo, C.M. (2020), “Management strategies for supply risk dependencies: empirical evidence from the gulf region”, International Journal of Physical Distribution and Logistics Management, Vol. 50 No. 4, pp. 457-481, doi: 10.1108/IJPDLM-06-2019-0201.
Ashkanasy, N.M., Humphrey, R.H. and Huy, Q.N. (2017), “Integrating emotions and affect in theories of management”, Academy of Management Review, Vol. 42 No. 2, pp. 175-189, doi: 10.5465/amr.2016.0474.
Ashnai, B., Henneberg, S.C., Naudé, P. and Francescucci, A. (2016), “Inter-personal and inter-organizational trust in business relationships: an attitude-behavior-outcome model”, Industrial Marketing Management, Vol. 52, pp. 128-139, doi: 10.1016/j.indmarman.2015.05.020.
Ayoko, O.B., Ang, A.A. and Parry, K. (2017), “Organizational crisis: emotions and contradictions in managing internal stakeholders”, International Journal of Conflict Management, Vol. 28 No. 5, pp. 617-643, doi: 10.1108/IJCMA-05-2016-0039.
Azadegan, A., Syed, T.A., Blome, C. and Tajeddini, K. (2020), “Supply chain involvement in business continuity management: effects on reputational and operational damage containment from supply chain disruptions”, Supply Chain Management, Vol. 25 No. 6, pp. 747-772, doi: 10.1108/SCM-08-2019-0304.
Barsade, S.G. and Knight, A.P. (2015), “Group affect”, Annual Review of Organizational Psychology and Organizational Behavior, Vol. 2 No. 1, pp. 21-46, doi: 10.1146/annurev-orgpsych-032414-111316.
Barsade, S.G. and O'Neill, O.A. (2014), “What's love got to do with it? A longitudinal study of the culture of companionate love and employee and client outcomes in a long-term care setting”, Administrative Science Quarterly, Vol. 59 No. 4, pp. 551-598, doi: 10.1177/0001839214538636.
Benitez, J., Henseler, J., Castillo, A. and Schuberth, F. (2020), “How to perform and report an impactful analysis using partial least squares: guidelines for confirmatory and explanatory IS research”, Information and Management, Vol. 57 No. 2, 103168, doi: 10.1016/j.im.2019.05.003.
Bode, C. and Wagner, S.M. (2015), “Structural drivers of upstream supply chain complexity and the frequency of supply chain disruptions”, Journal of Operations Management, Vol. 36 No. 1, pp. 215-228, doi: 10.1016/j.jom.2014.12.004.
Bode, C., Wagner, S.M., Petersen, K.J. and Ellram, L.M. (2011), “Understanding responses to supply chain disruptions: insights from information processing and resource dependence perspectives”, Academy of Management Journal, Vol. 54 No. 4, pp. 833-856, doi: 10.5465/AMJ.2011.64870145.
Bono, J.E. and Ilies, R. (2006), “Charisma, positive emotions and mood contagion”, Leadership Quarterly, Vol. 17 No. 4, pp. 317-334, doi: 10.1016/j.leaqua.2006.04.008.
Boudreau, J., Hopp, W., McClain, J.O. and Joseph Thomas, L. (2003), “On the interface between operations and human resources management”, Manufacturing and Service Operations Management, Vol. 5 No. 3, pp. 179-202, doi: 10.1287/MSOM.5.3.179.16032.
Castillo, C. (2022), “Is there a theory of supply chain resilience? A bibliometric analysis of the literature”, International Journal of Operations and Production Management, Vol. 43 No. 1, pp. 22-47, doi: 10.1108/IJOPM-02-2022-0136.
Chugh, R., Gould, N., Leach, M.P. and Liu, A.H. (2023), “B2B Buyers' emotions and regulatory focus in justice and switch back decisions”, Industrial Marketing Management, Vol. 109, pp. 73-89, doi: 10.1016/J.INDMARMAN.2022.12.012.
Cristofaro, M. (2019), “The role of affect in management decisions: a systematic review”, European Management Journal, Vol. 37 No. 1, pp. 6-17, doi: 10.1016/J.EMJ.2018.12.002.
Curtin, R.T. (1982), “Indicators of consumer behavior: the university of Michigan surveys of consumers”, Public Opinion Quarterly, Vol. 46 No. 3, p. 340, doi: 10.1086/268731.
De Rivera, J. (1992), “Emotional climate: social structure and emotional dynamics”, International Review of Studies on Emotion, Vol. 2 No. 2, pp. 197-218.
Dillman, D.A., Smyth, J.D. and Christian, L.M. (2014), Internet, Phone, Mail, and Mixed-Mode Surveys: the Tailored Design Method, John Wiley and Sons.
Dubey, R., Gunasekaran, A., Childe, S.J., Papadopoulos, T. and Helo, P. (2019), “Supplier relationship management for circular economy: influence of external pressures and top management commitment”, Management Decision, Vol. 57 No. 4, pp. 767-790, doi: 10.1108/MD-04-2018-0396.
Dutton, J.E., Worline, M.C., Frost, P.J. and Lilius, J. (2006), “Explaining compassion organizing”, Administrative Science Quarterly, Vol. 51 No. 1, pp. 59-96, doi: 10.2189/asqu.51.1.59.
Ellis, S.C., Henry, R.M. and Shockley, J. (2010), “Buyer perceptions of supply disruption risk: a behavioral view and empirical assessment”, Journal of Operations Management, Vol. 28 No. 1, pp. 34-46, doi: 10.1016/j.jom.2009.07.002.
Fan, Y., Stevenson, M. and Li, F. (2020), “Supplier-initiating risk management behaviour and supply-side resilience: the effects of interpersonal relationships and dependence asymmetry in buyer-supplier relationships”, International Journal of Operations and Production Management, Vol. 40 Nos 7/8, pp. 971-995, doi: 10.1108/IJOPM-06-2019-0497.
Farny, S., Kibler, E. and Down, S. (2019), “Collective emotions in institutional creation work”, Academy of Management Journal, Vol. 62 No. 3, pp. 765-799, doi: 10.5465/amj.2016.0711.
Faul, F., Erdfelder, E., Buchner, A. and Lang, A.-G. (2009), “Statistical power analyses using G*Power 3.1: tests for correlation and regression analyses”, Behavior Research Methods, Vol. 41 No. 4, pp. 1149-1160, doi: 10.3758/BRM.41.4.1149.
Fawcett, S.E., Ogden, J.A., Magnan, G.M. and Bixby Cooper, M. (2006), “Organizational commitment and governance for supply chain success”, International Journal of Physical Distribution and Logistics Management, Vol. 36 No. 1, pp. 22-35, doi: 10.1108/09600030610642913.
Feng, T., Li, Z., Shi, H. and Jiang, W. (2022), “Translating leader sustainability orientation into green supply chain integration: a missing link of green entrepreneurial orientation”, Journal of Business and Industrial Marketing, Vol. 37 No. 12, pp. 2515-2532, doi: 10.1108/JBIM-05-2021-0241.
Fennell, M.L. and Alexander, J.A. (1987), “Organizational boundary spanning in institutionalized environments”, Academy of Management Journal, Vol. 30 No. 3, pp. 456-476, doi: 10.2307/256009.
Fritsche, I., Barth, M., Jugert, P., Masson, T. and Reese, G. (2018), “A social identity model of pro-environmental action (SIMPEA)”, Psychological Review, Vol. 125 No. 2, pp. 245-269, doi: 10.1037/rev0000090.
Gallear, D., Ghobadian, A., He, Q., Kumar, V. and Hitt, M. (2022), “Relationship between routines of supplier selection and evaluation, risk perception and propensity to form buyer–supplier partnerships”, Production Planning and Control, Vol. 33 No. 14, pp. 1399-1415, doi: 10.1080/09537287.2021.1872811.
Gani, A.B.D., Fernando, Y., Lan, S., Lim, M.K. and Tseng, M.-L. (2022), “Interplay between cyber supply chain risk management practices and cyber security performance”, Industrial Management and Data Systems, Vol. 123 No. 3, pp. 843-861, doi: 10.1108/IMDS-05-2022-0313.
Golgeci, I. and Ponomarov, S.Y. (2013), “Does firm innovativeness enable effective responses to supply chain disruptions? An empirical study”, Supply Chain Management, Vol. 18 No. 6, pp. 604-617, doi: 10.1108/SCM-10-2012-0331.
Hair, J.F., Ringle, C.M. and Sarstedt, M. (2011), “PLS-SEM: indeed a silver bullet”, Journal of Marketing Theory and Practice, Vol. 19 No. 2, pp. 139-152, doi: 10.2753/MTP1069-6679190202.
Hair, J.F. Jr, Hult, G.T.M., Ringle, C.M. and Sarstedt, M. (2014), A Primer on Partial Least Squares Structural Equation Modeling (PLS-SEM), SAGE Publications.
Hair, J.F., Risher, J.J., Sarstedt, M. and Ringle, C.M. (2019), “When to use and how to report the results of PLS-SEM”, European Business Review, Vol. 31 No. 1, pp. 2-24, doi: 10.1108/EBR-11-2018-0203.
Hambrick, D. (2007), “Upper echelons theory: an update”, Academy of Management Review, Vol. 32 No. 2, pp. 334-343, doi: 10.5465/AMR.2007.24345254.
Hambrick, D. and Mason, P. (1984), “Upper echelons: the organization as a reflection of its top managers”, Academy of Management Review, Vol. 9 No. 2, pp. 193-206, doi: 10.5465/amr.1984.4277628.
Hasani, A. and Khosrojerdi, A. (2016), “Robust global supply chain network design under disruption and uncertainty considering resilience strategies: a parallel memetic algorithm for a real-life case study”, Transportation Research Part E: Logistics and Transportation Review, Vol. 87, pp. 20-52, doi: 10.1016/J.TRE.2015.12.009.
Henseler, J., Ringle, C.M. and Sarstedt, M. (2015), “A new criterion for assessing discriminant validity in variance-based structural equation modeling”, Journal of the Academy of Marketing Science, Vol. 43 No. 1, pp. 115-135, doi: 10.1007/s11747-014-0403-8.
Henseler, J., Hubona, G. and Ray, P.A. (2016), “Using PLS path modeling in new technology research: updated guidelines”, Industrial Management and Data Systems, Vol. 116 No. 1, pp. 2-20, doi: 10.1108/IMDS-09-2015-0382.
Holgado, M. and Niess, A. (2023), “Resilience in global supply chains: analysis of responses, recovery actions and strategic changes triggered by major disruptions”, Supply Chain Management: An International Journal, Emerald Publishing Limited, Vol. 28 No. 6, pp. 1040-1059, doi: 10.1108/SCM-01-2023-0020.
Hu, L. and Bentler, P.M. (1998), “Fit indices in covariance structure modeling: sensitivity to underparameterized model misspecification”, Psychological Methods, Vol. 3 No. 4, pp. 424-453, doi: 10.1037/1082-989X.3.4.424.
Huo, B., Wang, K. and Zhang, Y. (2021), “The impact of leadership on supply chain green strategy alignment and operational performance”, Operations Management Research, Vol. 14 No. 1-2, pp. 152-165, doi: 10.1007/s12063-020-00175-8.
Ivanov, D. and Dolgui, A. (2020), “Viability of intertwined supply networks: extending the supply chain resilience angles towards survivability. A position paper motivated by COVID-19 outbreak”, International Journal of Production Research, Vol. 58 No. 10, pp. 2904-2915, doi: 10.1080/00207543.2020.1750727.
Ivanov, D., Sokolov, B. and Dolgui, A. (2014), “The Ripple effect in supply chains: trade-off ‘efficiency-flexibility- resilience’ in disruption management”, International Journal of Production Research, Vol. 52 No. 7, pp. 2154-2172, doi: 10.1080/00207543.2013.858836.
Jasper, J.M. (1998), “The emotions of protest: affective and reactive emotions in and around social movements”, Sociological Forum, Vol. 13 No. 3, pp. 397-424, doi: 10.1023/A:1022175308081.
Jasper, J.M. (2011), “Emotions and social movements: twenty years of theory and research”, Annual Review of Sociology, Vol. 37 No. 1, pp. 285-303, doi: 10.1146/annurev-soc-081309-150015.
Kariv, D., Krueger, N., Kashy, G. and Cisneros, L. (2024), “Process innovation is technology transfer too! How entrepreneurial businesses manage product and process innovation”, The Journal of Technology Transfer, doi: 10.1007/s10961-023-10061-7.
Katsaliaki, K., Galetsi, P. and Kumar, S. (2022), “Supply chain disruptions and resilience: a major review and future research agenda”, Annals of Operations Research, Vol. 319 No. 1, pp. 965-1002, doi: 10.1007/s10479-020-03912-1.
Kim, Y., Chen, Y.S. and Linderman, K. (2015), “Supply network disruption and resilience: a network structural perspective”, Journal of Operations Management, Vols 33-34 No. 1, pp. 43-59, doi: 10.1016/j.jom.2014.10.006.
Küffner, C., Münch, C., Hähner, S. and Hartmann, E. (2022), “Getting back into the swing of things: the adaptive path of purchasing and supply management in enhancing supply chain resilience”, Journal of Purchasing and Supply Management, Vol. 28 No. 5, p. 100802, doi: 10.1016/j.pursup.2022.100802.
Kumar, A. and Paraskevas, J.P. (2018), “A proactive environmental strategy: analyzing the effect of SCM experience, age, and female representation in TMTs”, Journal of Supply Chain Management, Vol. 54 No. 4, pp. 20-41, doi: 10.1111/jscm.12179.
Laari, S., Lorentz, H., Jonsson, P. and Lindau, R. (2023), “Procurement’s role in resolving demand–supply imbalances: an information processing theory perspective”, International Journal of Operations and Production Management, Emerald Publishing Limited, Vol. 43 No. 13, pp. 68-100, doi: 10.1108/IJOPM-06-2022-0382.
Li, M., Cao, G., Cui, L., Liu, X. and Dai, J. (2023), “Examining how government subsidies influence firms’ circular supply chain management: the role of eco-innovation and top management team”, International Journal of Production Economics, Vol. 261, 108893, doi: 10.1016/j.ijpe.2023.108893.
Liu, H. and Wei, S. (2021), “Leveraging interorganizational governance for bridging responses to supply chain disruptions : a polynomial regression analysis”, International Journal of Operations and Production Management, Vol. 41 No. 8, pp. 1350-1378, doi: 10.1108/IJOPM-07-2020-0480.
Manhart, P., Summers, J.K. and Blackhurst, J. (2020), “A meta-analytic review of supply chain risk management: assessing buffering and bridging strategies and firm performance”, Journal of Supply Chain Management, Vol. 56 No. 3, pp. 66-87, doi: 10.1111/jscm.12219.
Menges, J.I. and Kilduff, M. (2015), “Group emotions: cutting the gordian knots concerning terms, levels of analysis, and processes”, Academy of Management Annals, Vol. 9 No. 1, pp. 845-928, doi: 10.1080/19416520.2015.1033148.
Mir, S., Aloysius, J.A. and Eckerd, S. (2017), “Understanding supplier switching behavior: the role of psychological contracts in a competitive setting”, Journal of Supply Chain Management, Vol. 53, pp. 3-18, doi: 10.1111/jscm.12115.
Mishra, D., Sharma, R.R.K., Kumar, S. and Dubey, R. (2016), “Bridging and buffering: strategies for mitigating supply risk and improving supply chain performance”, International Journal of Production Economics, Vol. 180, pp. 183-197, doi: 10.1016/j.ijpe.2016.08.005.
Neely, B.H., Lovelace, J.B., Cowen, A.P. and Hiller, N.J. (2020), “Metacritiques of upper echelons theory: verdicts and recommendations for future research”, Journal of Management, Vol. 46 No. 6, pp. 1029-1062, doi: 10.1177/0149206320908640.
Nishiguchi, T. and Beaudet, A. (1998), “Case study: the Toyota group and Aisin fire”, Sloan Management Review, Vol. 40 No. 1, pp. 49-59.
Podsakoff, P.M., MacKenzie, S.B., Lee, J.Y. and Podsakoff, N.P. (2003), “Common method biases in behavioral research: a critical review of the literature and recommended remedies”, Journal of Applied Psychology, Vol. 88 No. 5, pp. 879-903, doi: 10.1037/0021-9010.88.5.879.
Polyviou, M., Rungtusanatham, M.J., Reczek, R.W. and Knemeyer, A.M. (2018), “Supplier non‐retention post disruption: what role does anger play?”, Journal of Operations Management, Vol. 61, pp. 1-14, doi: 10.1016/j.jom.2018.07.001.
Ponomarov, S.Y. (2012), “Antecedents and consequences of supply chain resilience: a dynamic capabilities perspective”, PhD dissertation (Business Administration), The University of Tennessee, Knoxville, TN, pp. 1-151.
Ponomarov, S.Y. and Holcomb, M.C. (2009), “Understanding the concept of supply chain resilience”, The International Journal of Logistics Management, Vol. 20 No. 1, pp. 124-143, doi: 10.1108/09574090910954873.
Potter, A. (2022), “Exploring the role of lean managers within the Toyota supply network: evidence from a social media platform”, Production Planning and Control, Taylor and Francis Ltd., Vol. 33 No. 8, pp. 723-740, doi: 10.1080/09537287.2020.1831643.
Reimann, F., Kosmol, T. and Kaufmann, L. (2017), “Responses to supplier-induced disruptions: a fuzzy-set analysis”, Journal of Supply Chain Management, Vol. 53 No. 4, pp. 37-66, doi: 10.1111/jscm.12141.
Rivera, J.D., Kurrien, R. and Olsen, N. (2007), “Emotional climate of nations and culture of peace”, Journal of Social Issues, Vol. 63 No. 2, pp. 255-271, doi: 10.1111/j.1540-4560.2007.00507.x.
Sahay, B.S. (2003), “Understanding trust in supply chain relationships”, Industrial Management and Data System, MCB UP Ltd, Vol. 103 No. 8, pp. 553-563, doi: 10.1108/02635570310497602.
Sanchez-Burks, J. and Huy, Q.N. (2009), “Emotional aperture and strategic change: the accurate recognition of collective emotions”, Organization Science, Vol. 20 No. 1, pp. 22-34, doi: 10.1287/orsc.1070.0347.
Sarstedt, M., Hair, J.F., Cheah, J.-H., Becker, J.-M. and Ringle, C.M. (2019), “How to specify, estimate, and validate higher-order constructs in PLS-SEM”, Australasian Marketing Journal, Vol. 27 No. 3, pp. 197-211, doi: 10.1016/j.ausmj.2019.05.003.
Seo, M.-G., Shin, J. and Taylor, S. (2012), “Resources for change: the relationships of organizational inducements and psychological resilience to employees' attitudes and behaviors toward organizational change”, Academy of Management Journal, Vol. 55 No. 3, pp. 727-748, doi: 10.5465/amj.2010.0325.
Shee, H., Miah, S.J., Fairfield, L. and Pujawan, N. (2018), “The impact of cloud-enabled process integration on supply chain performance and firm sustainability: the moderating role of top management”, Supply Chain Management, Vol. 23 No. 6, pp. 500-517, doi: 10.1108/SCM-09-2017-0309.
Simsek, Z., Heavey, C. and Fox, B.C. (2018), “Interfaces of strategic leaders: a conceptual framework, review, and research agenda”, Journal of Management, Vol. 44 No. 1, pp. 280-324, doi: 10.1177/0149206317739108.
Straits, B.C. and Singleton, R.A. (2018), Social Research: Approaches and Fundamentals, Oxford University Press. Oxford University Press.
Streukens, S. and Leroi-Werelds, S. (2016), “Bootstrapping and PLS-SEM: a step-by-step guide to get more out of your bootstrap results”, European Management Journal, Vol. 34 No. 6, pp. 618-632, doi: 10.1016/J.EMJ.2016.06.003.
Su, F., Mao, J.Y. and Jarvenpaa, S.L. (2014), “How do IT outsourcing vendors respond to shocks in client demand? A resource dependence perspective”, Journal of Information Technology, Vol. 29 No. 3, pp. 253-267, doi: 10.1057/jit.2013.28.
Tan, C.L., Tei, Z., Yeo, S.F., Lai, K.-H., Kumar, A. and Chung, L. (2022), “Nexus among blockchain visibility, supply chain integration and supply chain performance in the digital transformation era”, Industrial Management and Data Systems, Emerald Publishing Limited, Vol. 123 No. 1, pp. 229-252, doi: 10.1108/IMDS-12-2021-0784.
Timmer, S. and Kaufmann, L. (2019), “Do managers' dark personality traits help firms in coping with adverse supply chain events?”, Journal of Supply Chain Management, Vol. 55 No. 4, pp. 67-97, doi: 10.1111/jscm.12212.
Um, J. and Han, N. (2021), “Understanding the relationships between global supply chain risk and supply chain resilience: the role of mitigating strategies”, Supply Chain Management, Vol. 26 No. 2, pp. 240-255, doi: 10.1108/SCM-06-2020-0248.
Urda, J. and Loch, C.H. (2013), “Social preferences and emotions as regulators of behavior in processes”, Journal of Operations Management, Vol. 31 Nos 1-2, pp. 6-23, doi: 10.1016/j.jom.2012.11.007.
Vallerand, R.J., Mageau, G.A., Ratelle, C., Léonard, M., Blanchard, C., Koestner, R., Gagné, M. and Marsolais, J. (2003), “Les Passions de 1’Âme: on Obsessive and Harmonious Passion”, Journal of Personality and Social Psychology, Vol. 85 No. 4, pp. 756-767, doi: 10.1037/0022-3514.85.4.756.
Von Scheve, C. and Ismer, S. (2013), “Towards a theory of collective emotions”, Emotion Review, Vol. 5 No. 4, pp. 406-413, doi: 10.1177/1754073913484170.
Wang, G., Holmes, R.M., Oh, I.S. and Zhu, W. (2016), “Do CEOs matter to firm strategic actions and firm performance? A meta-analytic investigation based on upper echelons theory”, Personnel Psychology, Vol. 69 No. 4, pp. 775-862, doi: 10.1111/peps.12140.
Wei, S., Ke, W., Lado, A.A., Liu, H., Kwok and Wei, K. (2020), “The effects of justice and top management beliefs and participation: an exploratory study in the context of digital supply chain management”, Journal of Business Ethics, Vol. 166 No. 1, pp. 51-71, doi: 10.1007/s10551-018-04100-9.
White, J.V. and Borgholthaus, C.J. (2022), “Who's in charge here? A bibliometric analysis of upper echelons research”, Journal of Business Research, Vol. 139, pp. 1012-1025, doi: 10.1016/J.JBUSRES.2021.10.028.
Wong, C.W.Y., Lirn, T.C., Yang, C.C. and Shang, K.C. (2020), “Supply chain and external conditions under which supply chain resilience pays: an organizational information processing theorization”, International Journal of Production Economics, Vol. 226, 107610, doi: 10.1016/j.ijpe.2019.107610.
Xu, P. and Zhang, Z. (2023), “Are scholar-type CEOs more conducive to promoting industrial AI transformation of manufacturing companies?”, Industrial Management and Data Systems, Vol. 123 No. 8, pp. 2150-2168, doi: 10.1108/IMDS-11-2022-0672.
Yu, W., Jacobs, M.A., Chavez, R. and Yang, J. (2019), “Dynamism, disruption orientation, and resilience in the supply chain and the impacts on financial performance: a dynamic capabilities perspective”, International Journal of Production Economics, Vol. 218, pp. 352-362, doi: 10.1016/j.ijpe.2019.07.013.
Acknowledgements
This research has been supported by the Governments of Spain and Andalusia, and the EU’s European Regional Development Fund (Research Projects C-SEJ-148-UGR23 and FPU19/02014). This publication is part of the R + D + I project PID 2021-124396NB-I00, funded by MICIU/AEI/10.13039/501100011033 and by “ERDF A way of making Europe”.