Collaboration, eco-innovation and economic performance in the automotive industry

Gonzalo Maldonado Guzmám (Department of Marketing, Universidad Autónoma de Aguascalientes, Aguascalientes, Mexico)
Sandra Yesenia Pinzón Castro (Department of Marketing, Universidad Autónoma de Aguascalientes, Aguascalientes, Mexico)

International Journal of Industrial Engineering and Operations Management

ISSN: 2690-6090

Article publication date: 1 March 2023

Issue publication date: 25 August 2023

1639

Abstract

Purpose

Eco-innovation is emerging as one of the most important constructs that improve environmental sustainability of firms. However, it has been shown that companies alone cannot adequately develop eco-innovation activities, which is why they require the implementation of external collaboration activities with intermediaries, suppliers and stakeholders to achieve a higher level of eco-innovation activities and improve business performance of manufacturing firms. Therefore, this research fills this gap by exploring the importance of the relationship between collaboration and eco-innovation.

Design/methodology/approach

The research is conducted through an extensive literature review with a research model consisting of 5 measurement scales, 24 items and 4 hypotheses. A self-administered questionnaire was distributed to a sample of 460 firms in Mexico, analyzing the data set through confirmatory factor analysis and structural equation models.

Findings

The results obtained from this study suggest that collaboration has significant positive effects both on the eco-innovation of products, processes and management, as well as on the business performance of companies in the automotive industry.

Practical implications

The findings of this study have important implications both for the public administration (e.g. development of policies to support companies and financing programs) and for the managers of companies in the automotive industry (e.g. training program for employees and collaboration with other firms).

Originality/value

This paper fills a research gap by expanding the limited body of knowledge that relates collaboration eco-innovation and business performance, which is why this research aims to fill this existing gap in the literature and explore the relationship between collaboration, eco-innovation and business performance.

Keywords

Citation

Maldonado Guzmám, G. and Pinzón Castro, S.Y. (2023), "Collaboration, eco-innovation and economic performance in the automotive industry", International Journal of Industrial Engineering and Operations Management, Vol. 5 No. 3, pp. 200-219. https://doi.org/10.1108/IJIEOM-09-2022-0041

Publisher

:

Emerald Publishing Limited

Copyright © 2023, Gonzalo Maldonado Guzmám and Sandra Yesenia Pinzón Castro

License

Published in International Journal of Industrial Engineering and Operations Management. 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 no 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

The deforestation of natural resources and climate change are generating strong social pressure on manufacturing companies to align their objectives of innovation and economic performance with sustainability (Schot and Steinmueller, 2018). The most appropriate approach to achieve this alignment is eco-innovation (Kanda et al., 2022), since these types of activities are aligned with innovation adoption that improve both environmental and production performance and eco-products consumption (Geng et al., 2021). However, eco-innovation activities require extensive collaboration with stakeholders, particularly in the automotive industry, through the combination of available resources in organizations (Kanda et al., 2021), since collaboration facilitates the interaction, construction of synergies and resolution of conflicts between the participating companies, thereby improving not only the efficiency and effectiveness of eco-innovation but also its economic performance (Cramer, 2020; Kanda et al., 2020; Janahi et al., 2022).

Additionally, eco-innovation promotes solutions to environmental and sustainability problems, and is considered in the literature as an important strategy in manufacturing companies due to the environmental benefits it generates (Janahi et al., 2021). However, there are few studies published in the literature that provide empirical evidence of the adoption and implementation of collaboration in eco-innovation activities (Janahi et al., 2021), particularly in eco-innovation of products, processes and management that improve economic performance (Geng et al., 2021). For this reason, a call is made for the scientific and academic community to guide their studies in the exploration of collaborative activities that allow the adoption and implementation of eco-innovation, not only in manufacturing companies in developed countries (Simms et al., 2020), but also in emerging economy countries (Yi et al., 2020).

The objective of this study is the analysis and discussion of the effects of collaboration on eco-innovation practices and economic performance. Thus, to achieve this objective, an empirical study was implemented in the context of companies in the automotive industry in Mexico, through a sample of 460 companies and estimating the model using structural equations with SmartPLS (Ringle et al., 2022). This context is interesting for two reasons. On the one hand, not only because it is considered in the literature that the automotive industry is economically interested in reducing the consumption of energy and materials in its production process (Ceschin and Vezzoli, 2010), but also because it is the industry that generates the highest percentage of the GDP of the Mexican economy. On the other hand, because there is little empirical evidence in the literature that collaboration with suppliers, government authorities and customers facilitate both the implementation of eco-innovation practices and economic performance (Nikolaou et al., 2016; Pacheco et al., 2017; Kanda et al., 2018).

The results obtained in this study show evidence of the existence of a positive effect of collaboration on eco-innovation practices (eco-innovation of products, processes and management) and economic performance. Therefore, this study contributes to the eco-innovation literature in two essential aspects. First, the existence of a limited number of empirical studies that have considered the role of collaboration in eco-innovation practices (Chen et al., 2019), particularly the limited number of studies that analyze specific practices of eco-innovation (in products, processes and management) (Tumelero et al., 2019) and its implication in economic performance (Di María et al., 2019). Second, it contributes to the generation of knowledge about the effects and conditions in which collaboration affects eco-innovation practices and economic performance (Bossle et al., 2016; He et al., 2018), especially in developing countries, as is the case of Mexico (Bossle et al., 2016; Aloise and Macke, 2017; Chen et al., 2017; Sanni, 2018).

For these reasons, the overall effect of collaboration in eco-innovation practices and economic performance may still be considered inconclusive. Therefore, to complement and expand the limited body of knowledge, this paper addresses the following research question: What is the relationship between collaboration, eco-innovation and economic performance in the automotive industry? The rest of the paper is structured as follows: Section 2 presents the literature review and hypotheses; Section 3 introduces the research methodology; the analysis and interpretation of results are included in Section 4; lastly, Section 5 provides derived conclusions, limitations and future research directions.

2. Literature review

Today, most manufacturing firms face various complex and multifaceted problems, which require collaboration with other companies for the integration of skills and knowledge that generate optimal and more holistic solutions (Budiarso et al., 2021). Therefore, it is not uncommon to find in the literature that companies' ability to innovate successfully is through collaboration with other companies and organizations (West and Advisory, 2020; Nguyen et al., 2020), particularly because collaboration it is a powerful business tool for manufacturing firms, regardless of their size, sector or industry to which they belong (Budiarso et al., 2021). Thus, collaboration creates spaces and opportunities for companies to improve eco-innovation activities, through effective use of their resources (Cramer, 2020) and capabilities (Aspeteg and Bergek, 2020), which can substantially improve their level of economic performance (Kanda et al., 2020).

This study is based on the theory of resources and capacities of firms (Barney, 1986; Wernerfelt, 1984), particularly because this theory explains how manufacturing firms can take advantage of resources and capacities of other companies and organizations (Calvo et al., 2022). This theory argues that manufacturing firms that have certain types of resources (tangible or intangible) and capabilities that are valuable, rare, difficult to imitate and organized to generate value have a competitive advantage (Barney et al., 2021), and that competitive advantage is increased through collaboration (Calvo et al., 2022). Thus, from a business perspective, manufacturing firms relate the external activities of eco-innovation (consumer preferences, legal framework incentives and pressure from stakeholders), with internal activities, supported by an increase in efficiency of the business (reduction of internal consumption of energy and raw materials) (Calvo et al., 2022).

2.1 Collaboration and products eco-innovation

The literature establishes the existence of several terms to designate eco-innovation such as green innovation, ecological innovation and environmental innovation (González-Moreno et al., 2019), which are generally used to describe all those innovations that reduce negative impacts on the environment and that improve sustainability (Araújo and Franco, 2021). Regardless of the term used, the most important thing is to establish is that eco-innovation is emerging in the innovation literature not only as a need to manage the levels of pollution emitted by manufacturing firms, particularly those that make up the industry, but also as an essential variable that significantly improves economic performance (Kerdpitak et al., 2019), especially when collaboration with other companies and public and private organizations (Niesten et al., 2017) such as funders (Polzin et al., 2016), universities (Kivamaa et al., 2017), project developers (Aspeteg and Bergek, 2020) and business development organizations (Kanda et al., 2020).

In this sense, Kemp and Pearson (2007) and Horbach (2008) considered that collaboration with other firms facilitates implementation of eco-innovation in manufacturing firms, particularly because of the technology for the development of products eco-innovation (Kishna et al., 2017). However, since eco-innovation is considered in the literature to represent the technological frontier, in which manufacturing firms in general have very little experience (Tumelero et al., 2018), it is not possible to accept that technology alone is the solution for the transition to a more sustainable society (Fisccher and Pascucci, 2017). Therefore, to achieve a more sustainable society, it is necessary to develop and increase products eco-innovation for which collaboration appears in the literature as a possible solution (De Giorgi et al., 2015; Souto and Rodríguez, 2015), since through collaboration the use of resources is optimized (Burki et al., 2019), and enabling the effective use of support systems resources (Cramer, 2020).

Likewise, collaboration with suppliers, intermediaries and stakeholders allow companies in the automotive industry to access their resources and skills, through different activities such as access to new markets (Polzin et al., 2016), or the formation of supplier networks that facilitate the exchange of knowledge, skills, experiences and learning (Geels and Deuten, 2006), which allows substantially improving products eco-innovation (Kanda et al., 2018). In addition, collaboration with intermediaries and suppliers can directly support manufacturing firms in the development of their eco-innovation activities (Agogué et al., 2017), since intermediaries are not only the ones with more information about tastes and consumer preferences but can also support companies in products eco-innovation (Hakkarainen and Hyysalo, 2016), improving business results (Melander and Pazirandeh, 2019) and supports with its resources and capabilities in the development of more environmentally friendly products (Ketelsen et al., 2020).

Collaboration with other companies and organizations facilitates and improves the development of products eco-innovation in manufacturing companies (De Marchi, 2012), through access to financial resources and the integration of the vision of the companies that make up the supply chain (Garcés-Ayerbe et al., 2019). Likewise, there is empirical evidence that establishes that collaboration has greater significant positive effects on the products eco-innovation when it works in isolation (Melander and Pazirandeh, 2019), since the heterogeneity of business partners, suppliers, clients, organizations, governments and universities generate a higher level of synergy (Becker and Dietz, 2004). The more or better collaboration will generate more benefits for firms, teams and organizations including better environmentally friendly products (Cronwell and Gardner, 2020). Therefore, considering the information presented in the previous paragraphs, it is possible to propose the following research hypothesis.

H1.

Collaboration has significant positive effects on products eco-innovation.

2.2 Collaboration and processes eco-innovation

Collaboration refers to the activities carried out by firms with other companies and organizations for the use and exchange of information to creation of products, development of ideas, exchange of data, development of plans jointly and improvement of production processes (Garcés-Ayerbe et al., 2019). In particular, the lack of resources and the limited existing knowledge within the manufacturing companies of the automotive industry, necessary for the development of processes eco-innovation, can be compensated through collaboration with suppliers, clients, centers of research and government agencies (Kobarg et al., 2020), which can not only share their resources and knowledge, but also the technology for the development of eco-innovation of production processes (Tumelero et al., 2019). Literature considers eco-innovation a result of collaborative knowledge exchanges, and includes a wide diversity of firms in conditions of interdependence that improves eco-innovation process (Saleh et al., 2022).

In this sense, processes eco-innovation can be implemented more easily and in a faster way, working collaboratively with other firms and organizations than if the companies carry it out individually (Araújo and Franco, 2021), since the return investment and economic performance can be higher if firms share their resources and knowledge with other firms and organizations (González-Moreno et al., 2019). In this sense, collaboration is becoming a fundamental activity not only for the significant improvement of environmental sustainability and the increase of competitive capacities in manufacturing companies (Burki and Dahlstrom, 2017), but also for the development of the process eco-innovation in the companies that make up the supply chain (Burki et al., 2019). For this reason, literature establishes that processes eco-innovation can be considered as a dynamic capacity, which allows manufacturing firms to survive the changes demanded by the market in the short and long terms (Gil-Alana et al., 2020; Hilmersson and Hilmersson, 2021).

Likewise, the literature on innovation shows that collaboration with suppliers, business partners and organizations can be effective both, in reducing negative environmental impacts and in recycling some components used in products eco-innovation (Tumelero et al., 2019). In addition, the exchange of technology that reduces the level of CO2 and greenhouse gases, significantly improves the internal processes of companies in the automotive industry, and allows compliance with environmental regulations and legislation (De Marchi, 2012). However, eco-innovation practices are not always available to all companies in the supply chain, so collaborative activities with major stakeholders will allow manufacturing firms to adopt and improve processes eco-innovation (Cainelli and Mazzanti, 2013; De Giorgi et al., 2015). Therefore, social and stakeholder pressure is forcing manufacturing firms to improve processes innovation, and this can be achieved through collaboration with business partners and other actors (Shen et al., 2021).

Based on collaboration point of view, researchers and academics argue that manufacturing firms can be more innovative in their processes, only when they can create an outstanding level of collaborative knowledge (Elia et al., 2020). Therefore, processes eco-innovation that improve the environment and sustainability requires actions, involvement and change of roles of all the actors that participate in collaborative activities (e.g. managers, stakeholders, government, consumers, researchers, etc.) (Janahi et al., 2021). Thus, collaboration demands greater proactivity on the part of manufacturing firms, in order to incorporate strategies that promote the adoption of eco-innovation practices (Tang et al., 2020) such as participation of the different stakeholders in the production processes (Huiling and Dan, 2020; Arranz et al., 2020). Thus, considering the information presented above, it is possible to propose the following research hypothesis.

H2.

Collaboration has significant positive effects on processes eco-innovation.

2.3 Collaboration and management eco-innovation

In the innovation literature, it is established that eco-innovation is commonly oriented toward the management of a more sustainable future for manufacturing firms, through the development of various social, economic and, especially, environmental actions (Aboelmaged, 2018). In addition, there is a consensus among researchers and academics that eco-innovation generally refers to the products eco-innovation, that are not only more environmentally friendly, but also reduce the use of environmental resources and generate a lower level of industrial waste (Araújo and Franco, 2021), which could significantly reduce negative impact on both environment and global warming, emission of CO2, greenhouse gases and industrial waste emitted in the process of industrialization of products (Kong et al., 2016). In this sense, Bocken and Geradts (2020) emphasize the need for manufacturing firms to collaborate in eco-innovation activities, both to increase the dynamic capacities of organizations and improve environmental sustainability.

However, studies published in the literature indicate that management eco-innovation practices is an overly complex activity, which is why manufacturing companies, particularly those that make up the automotive industry, have to carry out collaborative activities with suppliers, business partners, universities and public and private organizations to facilitate the implementation of the different organizational changes that companies require to significantly improve the management eco-innovation (Hemmelskamp, 1999; Kemp and Pearson, 2007; Horbach, 2008; De Marchi, 2012; Cainelli and Mazzanti, 2013; De Giorgi et al., 2015; Souto and Rodríguez, 2015), since collaboration with stakeholders that make up the supply chain not only facilitates the production of eco-products more friendly to the environment, but also the development of management eco-innovation activities (Tumelero et al., 2019), since studies published in literature have shown that eco-innovation management is an elementary activity to achieve a higher level of business growth (Malmeström and Johansson, 2015; Mu et al., 2019).

In this sense, in literature it is possible to find that eco-innovation management is a vital function in the survival of manufacturing firms, since this activity allows organizations to adopt activities of collaboration, reconstruction, growth and sustainability (Saleh et al., 2022). Lo et al. (2021) demonstrated the importance for organizations of the management capacity of eco-innovation in development of long-term sustainable value propositions, which allows manufacturing firms to respond as quickly as possible to the changes that current markets demand (Sakis, 2020; Ivanov, 2020; Correa et al., 2021). Therefore, collaboration plays an essential role in eco-innovation management, since collaboration is usually considered in literature as a great facilitator of organizational agility that helps manufacturing firms to respond both to unforeseen emergencies and to short-term and long-term crises (Wang et al., 2017; Saleh et al., 2022).

Additionally, innovation has been considered in literature as a creative dynamic skill, which allows manufacturing firms to respond to unforeseen situations demanded by the market (Saleh et al., 2022). Greco et al. (2021) showed that difference between successful and unsuccessful firms is eco-innovation activities, and even more efficiency in innovation management, for which literature has emphasized the importance of better manufacturing firms and their eco-innovation management skills, through collaboration with other companies and organizations, which will allow them to remain competitive (Steinmo and Rasmussen, 2018; Yesil and Dogan, 2019). However, few studies published in the literature have analyzed collaboration in eco-innovation, which not only improves business results but also long-term management of environmental sustainability (Laasch, 2019; Bocken and Geradts, 2020). Thus, considering the information presented above, it is possible to propose the following research hypothesis.

H3.

Collaboration has significant positive effects on management eco-innovation.

2.4 Collaboration and economic performance

For a little over two decades, companies have been increasing their efforts to adopt more sustainable business practices (Sharma and Henriques, 2005), which is forcing them to modify their product portfolio, production processes and supply chain management in response to restrictive government regulations, changing consumer tastes and preferences and pressure from NGOs (Ahlström and Sjöström, 2005; Hoejmose et al., 2012). In this sense, companies in the automotive industry must make substantial changes in their production processes to improve environmental conditions (Carroll and Shabana, 2010), for which they will require collaboration with other companies and organizations that help them to changes are made more quickly, in such a way that allows them to reduce production costs and increase the level of economic performance (Seuring and Gold, 2013).

Likewise, collaboration with suppliers, stakeholders and government agencies allow companies in the automotive industry, not only to focus investment and development on improving sustainability and the environment, but also on improving their production systems, which can generate a substantial increase in the level of economic performance (Chen et al., 2019). Thus, manufacturing firms will be able to use the resources and knowledge of the stakeholders that participate in collaborative activities, to obtain more and better economic results (Tumelero et al., 2019). Therefore, environmental efforts to introduce eco-innovation in manufacturing firms, and establish a sustainable relationship with the planet, is a recurring theme in current literature and even more so when it is directly related to the economic performance that companies can achieve (Cheng and Shiu, 2012; Cheng et al., 2014; Hojnik et al., 2018).

Additionally, the literature establishes that the influence of collaboration on the economic performance of firms in the automotive industry has generally been measured through indicators such as return on investment, sales, market share and profits or earnings (Im and Workman, 2004). In addition, some studies published in the innovation literature have found a significant positive influence of collaboration on economic performance, essentially when it has been related to the implementation of eco-innovation in manufacturing companies (Cheng and Shiu, 2012; Cheng et al., 2014; Hojnik et al., 2018). Therefore, it is possible to establish that collaboration in eco-innovation activities of manufacturing companies could generate a higher level of economic performance (Belderbos et al., 2004), since there is empirical evidence that demonstrates the existence of a significant positive relationship between collaboration and economic performance, only through the relationship with eco-innovation activities (Lee and Min, 2015).

Finally, the efforts of firms in the automotive industry to introduce eco-innovation in products, processes and management is one of the fundamental elements that stimulate collaboration with suppliers, stakeholders and government agencies, thereby generating greater level of economic performance (Tether, 2002; Chesbrough, 2003). However, the results obtained are not sufficient, which is why researchers, academics and professionals from the industry must guide their studies in providing more empirical evidence of the relationship between collaboration and economic performance, when they are directly related to eco-innovation practices (Tumelero et al., 2019). Thus, considering the information presented above, it is possible to propose the following research hypothesis.

H4.

Collaboration has significant positive effects on economic performance.

3. Methodology

To respond to the research hypotheses raised, an empirical study was carried out in the manufacturing firms of the automotive industry in Mexico, analyzing the relationship between collaboration, eco-innovation and economic performance. In a first phase of the study, a “Business Panel” was held in which five entrepreneurs from the automotive industry participated, two representatives of government agencies related to financial support to companies and three academics from innovation area who were given the survey that would be applied for analysis and discussion. The results obtained in this first phase allowed the design of a survey to collect information, which was applied to a pilot sample of 10 entrepreneurs from the automotive industry, making minor adjustments to writing, appearance and spelling. Pilot studies are essential to ensure validity when questionnaires are self-administered or contain self-developed scales (Bryman, 2016; Hair et al., 2016).

3.1 Sample design and data collection

The reference framework used in this study was the directory of companies in the automotive industry in Mexico, which had 909 firms registered as of November 30, 2018, the companies belonging to various local, regional and national business organizations and chambers, therefore, the empirical study did not focus on a particular business group or association. In addition, the survey for the information collection was applied to a sample of 460 firms selected by means of a simple random sampling, with a maximum error of ±4% and a reliability level of 95%, representing 50.6% of the total of the population and applying the survey during the months of January to March 2019. Likewise, it should be noted that all the managers interviewed are directly responsible for the development of innovation in their respective companies, which allowed obtaining very valuable and interesting information for the deep knowledge and experience they have in the industry.

3.2 Measurement development

One of the most recurrent problems in the current literature on business sciences and innovation is how to measure innovation itself (Zhang et al., 2019), which is why it is important to precisely define the measurement of innovation activities. Therefore, to measure collaboration, an adaptation of the scale proposed by Belderbos et al. (2004) and Eurostat (2012), who considered that the collaboration can be measured through four items. Likewise, Klewitz and Hansen (2014) extensively reviewed the literature on eco-innovation and found that it is commonly measured through three elements: products eco-innovation, processes eco-innovation and management eco-innovation. For this reason, in this empirical study the three most cited indicators in the literature for measuring eco-innovation will be used: eco-innovation in products, processes and management.

Thus, for the measurement of eco-innovation, an adaptation was made to the scales proposed by Hojnik et al. (2014) and Segarra-Oña et al. (2014), measuring products eco-innovation through four items, processes eco-innovation through four items and management eco-innovation through six items. Finally, to measure economic performance, the scale proposed by Bag (2014) was used, who measured this construct through six items. A five-point Likert-type scale was chosen to strike a balance between complexity for respondents and accuracy for analysis (Forza, 2016; Hair et al., 2016). Table 1 shows the items and factorial loads of the four scales used in the theoretical model, and it is observed that all the values are greater than 0.6, as recommended by Hair et al. (2019).

In this study, the use of a composite model was considered pertinent, which is essential reason for use of partial least squares structural equation modeling (PLS-SEM) (Sarstedt et al., 2016), using SmartPLS 4.0 software (Ringle et al., 2022), since composite indicators are considered in literature as the operational definition of emergent construct that mediates all the effects of the model, and the composites measured through composite indicators do not have an error term (Hair et al., 2021). For the estimation of path models, PLS-SEM generally uses Model A or Model B. Model A is related to correlation weights derived from bivariate correlations between each indicator and the construct, while Model B is relating to weights of the regression (Sarstedt et al., 2016). The five constructs used in this empirical study are type A compounds, as shown in Table 1.

Additionally, given that data were collected using the same instrument applied to same informant (company manager), it can cause biases that alter responses that could lead to Type I (false positive) or Type II (false negative) errors, the evaluation of common method variance (CMV) was using, following the recommendations of Podsakoff et al. (2012). Traditionally, the method most used by researchers to verify the possible effect of CMV is Harman's one-factor test (Podsakoff et al., 2003), which consists of subjecting practically all the items of the scales to exploratory factorial analysis (EFA), forcing extraction to a single factor (Andersson and Bateman, 1997; Mossholder et al., 1998; Iverson and Maguire, 2000; Aulakh and Gencturk, 2000).

To verify the suitability of data and possible effect of CMV, an EFA was applied, through principal components method and with varimax rotation, calculating Kaiser–Meyer–Olkin coefficients (KMO) and Bartlett's sphericity test. Results that are obtained support the use of EFA with data of this sample, with a KMO value = 0.865 and Bartlett's test is statistically significant [X2 (276) = 8972.77, p < 0.000]. If there is a CMV problem, common factor extracted should have a value greater than 50% of the variance (Podsakoff et al., 2003), but the common factor extracted from data is 36.12%, which is lower than the recommended value, which suggests that CMV is not a threat to sample data of this study, and does not seem to significantly affect the relationships between variables of the research model (Podsakoff et al., 2012).

4. Analysis and results

To respond to the four hypotheses proposed in this study, the use of PLS-SEM with the SmartPLS 4 software was considered pertinent; since PLS-SEM is considered, an approach based on composites that linearly combine indicators to form composite variables (Lohmöller, 1987), which generally serve as proxies for the concepts being evaluated (Rigdon, 2016). Likewise, PLS-SEM approach allows adjusting the estimates of the structural equation models, when common factor models are estimated (Bentler and Huang, 2014; Dijkstra and Schermelleh-Engel, 2014; Dijkstra and Henseler, 2015; Hair et al., 2021), as is the case of the model in this study.

4.1 Reliability and validity of measurement scales

The reliability and validity of the four measurement scales were assessed using Cronbach's alpha, composite reliability index (CRI), Dijkstra–Henseler rho and extracted variance index (EVI), as suggested by Hair et al. (2019). In addition, the discriminant validity of the four measurement scales used was evaluated through three substantial elements: Fornell and Larcker criterion, cross loadings and, particularly, Heterotrait–Monotrait ratio (HTMT) of the correlations (Henseler et al., 2015; Hair et al., 2019). The results obtained show that Cronbach's alpha has values that oscillate between 0.873–0.927, the CRI has values between 0.913–0.943 and the Dijkstra–Henseler rho has values that oscillate between 0.876–0.933, which indicates that they are good values and are above the recommended values (Bagozzi and Yi, 1988; Hair et al., 2014, 2019). Similarly, the EVI has values that oscillate between 0.674–0.800 that are above the levels recommended in the literature (Fornell and Larcker, 1981; Bagozzi and Yi, 1988).

Regarding discriminant validity, the obtained results show that the Fornell and Larcker criterion is fulfilled in such a way that the shared variance between pairs of constructs is less than the variance extracted for each individual construct. The most effective measure is the HTMT (Henseler et al., 2015), since the HTMT is an estimate of what the real correlation between two constructs would be if they were measured in a perfect way. An HTML value lower than 0.85 is recommended (Henseler et al., 2015). In our case, the HTMT ratio varies between 0.236 and 0.533, showing very satisfactory levels far from the recommended maximum of 0.8. Table 2 shows in greater detail the results obtained from the reliability and validity of the measurement scales.

4.2 Structural model

Table 3 shows the results obtained from PLS-SEM application, which generally satisfy the evaluation criteria, since the values of the SRMR, geodetic discrepancy (dG) and unweighted least squares discrepancy (dULS) are below HI 99%, which allows verifying the significance of the theoretical model (Dijkstra and Henseler, 2015). The estimation of the theoretical model verifies that collaboration has a significant positive effect both on products eco-innovation, processes eco-innovation and management eco-innovation, as well as on firms' economic performance in the automotive industry. In particular, the coefficient linked in the relationship between collaboration and products eco-innovation is 0.342 with a p-value of 0.000 is significant, as well as the coefficients of the relationship of collaboration with processes eco-innovation (0.258; p-value 0.000) and management eco-innovation (0.345; p-value 0.000). These results show empirical evidence in favor of hypotheses H1, H2 and H3, which allows us to establish that the adoption of collaboration generates a higher level of eco-innovation practices in companies.

Finally, the results obtained show that collaboration with suppliers, stakeholders, government agencies and universities generate a significant positive effect on economic performance of firms in the automotive industry (0.445; p-value 0.000), which provides empirical evidence in favor of hypothesis H4. Therefore, it is possible to establish that, on the one hand, evidence is provided that shows that collaboration plays a fundamental role in development of eco-innovation activities in companies in the automotive industry and, on the other hand, collaboration carried out by companies in automotive industry, not only generates an increase in eco-innovation practices (eco-innovation in products, processes and management), but also a significant increase in the level the economic performance of organizations.

5. Discussion

The results obtained support the relationship between collaboration and products eco-innovation in firms in automotive industry in Mexico, and are consistent with results obtained in studies published by De Marchi (2012), Hakkarainen and Hyysalo (2016) and Kanda et al. (2018), who found a significant positive relationship between collaboration and products eco-innovation (H1). One of the main reasons for this positive effect could be that stakeholders share with companies both, information collected on tastes and preferences of customers and consumers, as well as their resources and capabilities, which not only facilitates the development of eco-products that are friendlier to the environment, but also the preference for this type of product by consumers, which could substantially improve level of economic performance of companies.

The positive effects of collaboration in processes eco-innovation in firms in the automotive industry are in line with the studies published in literature by Garcés-Ayerbe et al. (2019), Tumelero et al. (2019) and Burki et al. (2019) establish a significant positive relationship between collaboration and processes eco-innovation and supports hypothesis H2. The reason for this positive effect could be that companies seek to improve efficiency both in the use of materials and energy, as well as a significant reduction in costs through production and processes innovation. Therefore, to achieve these goals, collaboration with other companies and organizations, through the exchange of knowledge, skills and resources will substantially improve not only processes eco-innovation but also the level of economic performance of companies.

In addition, this study provides robust empirical evidence that supports the positive effect of collaboration on management eco-innovation in firms in the automotive industry, since the results found are consistent with the results obtained by De Giorgi et al. (2015), Souto and Rodriguez (2015) and Tumelero et al. (2019), provide empirical evidence in favor of H3, which indicates that collaboration has significant positive effects on management eco-innovation. One of the essential reasons that establishes this positive effect may be the strong social pressure to which firms in the automotive industry are exposed, due to changes in management systems that improve the sustainability and environmental conditions of the localities where they are located or established, as well as the pressure exerted by stakeholders to adapt their management systems to market demands.

Additionally, the positive effects of collaboration on the level of economic performance of firms in the automotive industry are in line with studies recently published in innovation literature such as the one by Hojnik et al. (2018), Chen et al. (2019) and Tumelero et al. (2019), provide empirical evidence like that of this study, which supports hypothesis H4. The reason for this positive effect may be that firms in the automotive industry seek not only to comply with existing government environmental regulations in the localities where they are located, but also that the exchange of resources and capacities that they carry out with their main stakeholders, through the various collaborative activities, are reflected in a substantial increase in its level of economic performance, thereby combining sustainability with financial aspects.

6. Conclusions, limitations and future research

In literature it is common to find that manufacturing firms, particularly those that make up the automotive industry, are seen as one of the largest sources of environmental pollution, especially in countries with emerging economies, such as Mexico. However, this view is at odds with the current view in literature that establishes the resurgence and reinvention of manufacturing firms as industrial networks, in which significant proactive and pragmatic efforts are being made beyond a traditional procurement-oriented industry of profits, as shown by the results of this study, by providing evidence of a significant positive relationship between collaboration and eco-innovation of products, processes and management, which allows us to conclude that sustainability and environmental issues are not in contrast with economic performance.

In this context, it can be concluded that this study contributes to the connection between eco-innovation activities and theory of resources and capabilities of firms, to identify collaborative activities that can accelerate or reduce the growth and development of the company's eco-innovation of products, processes and management systems in the automotive industry. This study opens the door to future research. First, previous studies that analyze the relationship between collaboration and eco-innovation are relatively scarce, compared to those studies that have focused on its conceptualization (Tumelero et al., 2019), which from our point of view lack a substantial contribution Therefore, future studies should focus on the analysis of collaborative activities with other dimensions of eco-innovation and the level of economic performance to verify the results obtained.

Second, analysis of the relationship between collaboration, eco-innovation and economic performance is a relatively recent topic in the literature, but it is also true that this topic is recently gaining the attention of researchers, academic and professionals in the field industry, which allows us to conclude that the relationship between the three constructs is an unfinished topic that is currently open to discussion (Kanda et al., 2018). For this reason, it would be pertinent that future studies focus on intrinsic aspects of collaborative activities such as the location of stakeholders, green technology used by stakeholders, and digitization of stakeholder information processes, which will allow firms in the automotive industry, not only substantially improve the eco-innovation of their products, processes and management systems, but also their level of economic performance.

Finally, regarding the methodology used in this study, it is possible to conclude that the development of successful case studies of firms in the automotive industry can help scientific and academic community to obtain a deeper understanding of why positive relationships were achieved among the above constructs. Additionally, regarding the use of PLS-SEM statistical technique used in this study, it is possible to conclude that in future studies other techniques could be used that consider both a greater amount of information and visibility, as well as a greater data efficiency, such as panel data analysis. However, the costs and time of collecting the information required by this type of statistical techniques should also be considered.

This empirical study has various limitations that are important to consider when interpreting and discussing the results obtained. Therefore, a first limitation of this study is related to the measurement scales of the collaboration, eco-innovation and economic performance, since these three constructs were measured through various subjective indicators obtained by applying a survey. Therefore, in future studies, the use of objective data from companies in the automotive industry (e.g. collaborations agreements, percentage of recycling of raw materials, percentage of cost reduction and percentage of profit margin) will be pertinent, in order to verify if the results obtained differ or not from those obtained in this research paper.

A second limitation of this study is that the relationship between collaboration, eco-innovation practices and economic performance may have better results if a moderating variable of the individual characteristics of the managers of manufacturing firms is integrated (e.g. leadership, commitment, managerial capacity and experience). Therefore, in future studies it would be pertinent to add some moderating variable that significantly improves the relationship between collaboration, eco-innovation and economic performance, in order to corroborate whether the results obtained are similar or better to those obtained in this study, or to replicate this same study in another sector or country to corroborate the results.

The third and final limitation of this study is that only four items were considered for the direct measurement of the collaboration, three constructs and fourteen items for the measurement of the eco-innovation practices, and six items for the measurement of the economic performance, which were the most cited in the scientific literature, but no type or dimension of the collaboration, eco-innovation and economic performance was considered, so in future studies it will be relevant to consider other types of measurement scales or some of the most cited dimensions in the scientific literature to corroborate the results obtained, or apply this same survey in other countries of Latin America and in other sectors of economic activity to verify whether the results are similar.

Measurement model assessment

IndicatorsConstructsFactor loads (p-value)
Collaboration (CO)
Cronbach's alpha: 0.916; Dijkstra–Henseler's rho (ρA): 0.916; CRI (ρc): 0.940; AVE: 0.798
CO1Customers0.884 (0.000)
CO2Suppliers0.892 (0.000)
CO3Government offices to obtain information services from the sector (regulations, performance indicators, programs that promote innovation, protection of innovations, probable technological partners, etc.)0.902 (0.000)
CO4Higher Education Institutions (Universities, Technological Institutes, etc.)0.896 (0.000)
Product Eco-innovation (PE)
Cronbach's alpha: 0.927; Dijkstra–Henseler's rho (ρA): 0.933; CRI (ρc): 0.943; AVE: 0.733
PE1It constantly improves its product life cycle standards and conducts product life cycle studies0.868 (0.000)
PE2It uses or develops new energy sources with a tendency to reduce CO2 emissions0.894 (0.000)
PE3It uses the eco-label system required by each destination country for its products0.853 (0.000)
PE4It uses and manufactures eco-innovative components and materials that are made from recycled raw materials0.789 (0.000)
Process Eco-innovation (RE)
Cronbach's alpha: 0.917; Dijkstra–Henseler's rho: 0.932; CRI: 0.941; AVE: 0.800
RE1Treat your wastewater0.883 (0.000)
RE2Uses sterilization methods for its components or technological devices0.899 (0.000)
RE3Produces or uses fabric components that use fabric sanitizing technologies0.924 (0.000)
RE4Use ecological or recyclable paper in its processes0.870 (0.000)
Management Eco-innovation (ME)
Cronbach's alpha: 0.873; Dijkstra–Henseler's rho (ρA): 0.876; CRI (ρc): 0.913; AVE: 0.726
ME1Has a management system that reuses obsolete components and equipment0.830 (0.000)
ME2Has an ISO 14001 Certification or similar0.816 (0.000)
ME3It has constant audits of energy saving and ecology by the state and/or municipal authorities of its locality0.885 (0.000)
ME4It constantly carries out seminars or training courses for staff related to eco-innovation0.891 (0.000)
ME5It has well-defined policies that promote and support eco-innovation activities throughout the organization0.903 (0.000)
ME6It has a monitoring and control system for wastewater generated by the company0.807 (0.000)
Economic Performance (EP)
Cronbach's alpha: 0.903; Dijkstra–Henseler's rho (ρA): 0.909; CRI (ρc): 0.925; AVE: 0.674
EP1Economic benefits have increased0.748 (0.000)
EP2The profit margin has increased0.772 (0.000)
EP3Return on assets has increased0.823 (0.000)
EP4Increased return on investment0.828 (0.000)
EP5Sales volume has increased0.886 (0.000)
EP6Sales performance has increased0.860 (0.000)

Note(s): CRI: composite reliability index; AVE: averaged variance extracted

Measurement model. Reliability, validity and discriminant validity

Panel A. Reliability and validity
VariablesCronbach's alphaCRIDijkstra–Henseler rhoEVI
Collaboration0.9160.9400.9160.798
Product eco-innovation0.9270.9430.9330.733
Process eco-innovation0.9170.9410.9320.800
Management eco-innovation0.8730.9130.8760.726
Economic Performance0.9030.9250.9090.674
Panel B. Fornell–Larcker CriterioHeterotrait–Monotrait ratio (HTMT)
Variables123451234
1. Collaboration0.893
2. Product eco-innovation0.3650.856 0.394
3. Process eco-innovation0.2580.4940.894 0.2780.533
4. Management eco-innovation0.3420.4200.3590.852 0.3800.4640.397
5. Economic Performance0.4450.3080.2180.3140.8210.4860.3360.2360.353
Panel C. Cross-loadings
VariablesCEIEPIERIEOIOPEVariablesCEIEPIERIEOIOPE
CEI10.8840.3230.1800.3500.381EOI10.2820.2970.5090.8300.260
CEI20.8920.3250.2460.3510.400EOI20.2930.2960.3530.8160.287
CEI30.9020.2690.2610.2920.410EOI30.3180.3480.4680.8850.239
CEI40.8960.3020.2340.3100.398EOI40.3070.3980.4140.8910.263
EPI10.2800.7890.2170.3070.261EOI50.3690.4300.4300.9030.305
EPI20.2710.8680.2980.3810.227EOI60.2960.3720.3710.8070.223
EPI30.2940.8940.3300.3900.280OPE10.3700.2610.1620.2540.748
EPI40.3150.8530.3680.3530.296OPE20.3090.2520.1200.2100.772
ERI10.2060.2770.8830.3740.161OPE30.3300.2670.2010.2690.823
ERI20.2080.3140.8990.3930.183OPE40.3570.2390.1630.2910.828
ERI30.2740.3260.9240.4830.211OPE50.4250.2650.2100.2560.886
ERI40.2220.3640.8700.5040.221OPE60.3820.2640.1620.2350.860

Note(s): CEI: Collaboration; EPI: Product eco-innovation; ERI: Process eco-innovation. EOI: Management eco-innovation. OPE: Economic performance. Panel A: Fornell–Larcker Criterion: Diagonal elements (italic) are the square root of the variance shared between the constructs and their measures (EVI). For discriminant validity, diagonal elements should be larger than off-diagonal elements. Panel B: Cross-loadings of the items for all the constructs

Structural model

PathsPath (t-value; p-value)95% confidence intervalf2Support
CEI → EPI (H1)0.342 (7.320; 0.000)[0.250–0.431]0.132Yes
CEI → ERI (H2)0.258 (6.262; 0.000)[0.181–0.344]0.071Yes
CEI → EOI (H3)0.365 (8.003; 0.000)[0.282–0.458]0.154Yes
CEI → OPE (H4)0.445 (8.818; 0.000)[0.345–0.454]0.247Yes
Endogenous variableAdjusted R2Model FitValueHI99
SRMR0.0560.181
EPI0.115dULS0.9240.951
ERI0.064dG0.6790.696
EOI0.132NFI0.799
OPE0.196rms Theta0.173

Note(s): CEI: Collaboration; EPI: Product eco-innovation; ERI: Process eco-innovation; EOI: Management eco-innovation; OPE: Economic performance. One-tailed t-values and p-values in parentheses; bootstrapping 95% confidence intervals (based on n = 5,000 subsamples) SRMR: standardized root mean squared residual; dULS: unweighted least squares discrepancy; dG: geodesic discrepancy; NFI: normal fit index; HI99: bootstrap-based 99% percentiles

References

Aboelmaged, M. (2018), “Direct and indirect effects of eco-innovation, environmental orientation and supplier collaboration on hotel performance: an empirical study”, Journal of Cleaner Production, Vol. 185 No. 5, pp. 537-549.

Agogué, M., Berthe, E., Fredberg, T., Le Masson, P., Segrestin, B., Stoetzel, M., Winer, M. and Yström, A. (2017), “Explicating the role of innovation intermediaries in the unknown: a contingency approach”, Journal of Strategic Management, Vol. 10 No. 1, pp. 19-39.

Ählström, J. and Sjöström, E. (2005), “CSOs and business partnerships: strategy for interaction”, Business Strategy Environment, Vol. 14 No. 1, pp. 230-240.

Aloise, P.G. and Macke, J. (2017), “Eco-innovation in developing countries: the case of manaus free trade zone (Brazil)”, Journal of Cleaner Production, Vol. 168 No. 1, pp. 30-38.

Andersson, L.M. and Bateman, T.S. (1997), “Cynicism in the workplace: some causes and effects”, Journal of Organizational Behavior, Vol. 18 No. 1, pp. 449-469.

Araújo, R. and Franco, M. (2021), “The use of collaboration networks in search of eco-innovation: a systematic literature review”, Journal of Cleaner Production, Vol. 314 No. 1, pp. 1-14.

Arranz, N., Arroyabe, M., Li, J. and Arroyabe, J.C. (2020), “Innovation as a driver of eco-innovation in the firm: an approach from the dynamic capabilities theory”, Business Strategy Environment, Vol. 29 No. 1, pp. 1494-1503.

Aspeteg, J. and Bergek, A. (2020), “The value creation of diffusion intermediaries: brokering mechanisms and trade-offs in solar and wind power in Sweden”, Journal of Cleaner Production, Vol. 251 No. 4, pp. 1-11.

Aulakh, P.S. and Gencturk, E.F. (2000), “International principal-agent relationships-control, governance and performance”, Industrial Marketing Management, Vol. 29 No. 5, pp. 521-538.

Bag, S. (2014), “Impact of sustainable supply chain management on organizational performance: mediating effects of leadership”, Indian Journal of Management Science, Vol. 4 No. 3, pp. 10-25l.

Bagozzi, R.P. and Yi, Y. (1988), “On the evaluation of structural equation models”, Journal of the Academy of Marketing Science, Vol. 16 No. 1, pp. 74-94.

Barney, J.B. (1986), “Strategic factor markets: expectations, luck, and business strategy”, Management Science, Vol. 32 No. 10, pp. 1231-1241.

Barney, J.B., Ketchen, D.J. and Wright, M. (2021), “Resource-based theory and the value creation framework”, Journal of Management, Vol. 47 No. 7, pp. 1936-1955.

Becker, W. and Dietz, J. (2004), “R&D cooperation and innovation activities of firms-evidence from the German manufacturing industry”, Responsibility Policy, Vol. 33 No. 2, pp. 209-223.

Belderbos, R., Carree, M. and Lokshin, B. (2004), “Cooperative R&D and firm performance”, Responsibility Policy, Vol. 33 No. 10, pp. 1477-1492.

Bentler, P.M. and Huang, W. (2014), “On components, latent variables, PLS and simple methods: reactions to Rigdon's rethinking of PLS”, Long Range Planning, Vol. 47 No. 1, pp. 136-145.

Bocken, N.M. and Geradts, T.H. (2020), “Barriers and divers to sustainable business model innovation: organization design and dynamic capabilities”, Long Range Planning, Vol. 53 No. 4, pp. 1-11.

Bossle, M.B., Dutra de Barcellos, M., Vieira, L.M. and Sauvée, L. (2016), “The rivers for adoption of eco-innovation”, Journal of Cleaner Production, Vol. 113 No. 7, pp. 861-872.

Bryman, A. (2016), Social Research Methods, 5th ed., Oxford University Press, Oxford.

Budiarso, B., Sarjono, P.U., Sunitiyoso, Y. and Fitriati, R. (2021), “How to design parameters of firm governance affect collaboration process dimensions in professional service firms?”, Heliyon, Vol. 7 No. 1, pp. 1-13.

Burki, U. and Dahlstrom, R. (2017), “Mediating effects of green innovations on interfirm cooperation”, Australasian Marketing Journal, Vol. 25 No. 2, pp. 149-156.

Burki, U., Ersoy, P. and Najam, U. (2019), “Top management, green innovations, and the mediating effect of customer cooperation in green supply chains”, Sustainability, Vol. 11 No. 4, pp. 1-10.

Cainelli, C. and Mazzanti, M. (2013), “Environmental innovations in services: manufacturing-services integration and policy transmissions”, Responsibility Policy, Vol. 42 No. 9, pp. 1595-1604.

Calvo, N., Monje-Amor, A. and Villarreal, O. (2022), “When your value proposition is to improve others' energy efficiency: analyzing the internationalization dilemma of eco-innovations in SMEs”, Technological Forecasting and Social Change, Vol. 185 No. 1, pp. 1-13.

Carroll, A.B. and Shabana, K.M. (2010), “The business case for corporate social responsibility: a review of concepts, research and practice”, International Journal of Management Review, Vol. 12 No. 1, pp. 85-105.

Ceschin, F. and Vezzoli, C. (2010), “The role of public policy in stimulating radical environmental impact reduction in the automotive sector: the need of focus on product-service system innovation”, International Journal of Automotive Technology and Management, Vol. 10 No. 213, pp. 231-341.

Chen, J., Cheng, J. and Dai, S. (2017), “Regional eco-innovation in China: an analysis of eco-innovation levels and influencing factors”, Journal of Cleaner Production, Vol. 153 No. 1, pp. 1-14.

Chen, X., Wang, X. and Zhou, M. (2019), “Firms' green R&D cooperation behaviour in a supply chain: technological spillover, power and coordination”, International Journal of Production Economics, Vol. 218 No. 1, pp. 118-134.

Cheng, C.C. and Shiu, E.C. (2012), “Validation of proposed instruments for measuring eco-innovation: an implementation perspective”, Technovation, Vol. 32 No. 6, pp. 329-344.

Cheng, C.C., Yang, C.L. and Sheu, C. (2014), “The link between eco-innovation and business performance: a Taiwanese industry context”, Journal of Cleaner Production, Vol. 64 No. 1, pp. 81-90.

Chesbrough, H. (2003), Open Innovation: the New Imperative for Creating and Profiting from Technology, Harvard Business School Press, Boston, MA.

Correa, V.S., Queiroz, M.M. and Shigaky, H.B. (2021), “Social capital and individual entrepreneurial orientation: innovativeness, proactivity, and risk-taking in an emerging economy”, Benchmarking: An International Journal, Vol. 28 No. 7, pp. 2280-2298.

Cramer, J.M. (2020), “The function of transition brokers in the regional governance of implementing circular economy: a comparative case study of six Dutch regions”, Sustainability, Vol. 12 No. 7, pp. 1-21.

Cronwell, J.R. and Gardner, H.K. (2020), “High-stakes innovation: when collaboration in teams enhances (or undermines) innovation in professional service firms”, Journal of Professions and Organization, Vol. 7 No. 1, pp. 2-26.

De Georgi, C., Dal Palú, D. and Allione, C. (2015), “Development and results of a cross border network project, aimed at the engineering of eco-compatible products”, Journal of Cleaner Production, Vol. 106 No. 1, pp. 619-631.

De Marchi, V. (2012), “Environmental innovation and R&D cooperation: empirical evidence from Spanish manufacturing firms”, Responsible Policy, Vol. 41 No. 3, pp. 614-623.

Di Maria, E., De Marchi, V. and Spraul, K. (2019), “Who benefits from university-industry collaboration for environmental sustainability?”, International Journal of Sustainability and Higher Education, Vol. 20 No. 6, pp. 1022-1041.

Dijkstra, T. and Henseler, J. (2015), “Consistent partial least squares path modeling”, MIS Quarterly, Vol. 39 No. 2, pp. 297-2316.

Dijkstra, T.K. and Schmermelleh-Engel, E. (2014), “Consistent partial least squares for nonlinear structural equation models”, Psychometrika, Vol. 79 No. 4, pp. 585-604.

Elia, G., Margherita, A. and Passiante, G. (2020), “Digital entrepreneurship ecosystem: how digital technologies and collective intelligence are reshaping the entrepreneurial process”, Technological Forecasting and Social Change, Vol. 150 No. 1, pp. 1-12.

Eurostat (2012), “The community innovation survey 2012”, available at: http://ec.europa.eu/eurostat/web/microdata/community-innovation-survey (accessed 28 July 2022).

Fisccher, A. and Pascucci, S. (2017), “Institutional incentives in circular economy transition: the case of material uses in the Dutch textile industry”, Journal of Cleaner Production, Vol. 155 No. 1, pp. 17-32.

Fornell, C. and Larcker, D. (1981), “Evaluating structural equation models with unobservable variables and measurement error”, Journal of Marketing Research, Vol. 18 No. 1, pp. 39-50.

Forza, C. (2016), “Surveys”, in Karlsson, C. (Ed.), Research Methods for Operations Management, 2nd ed., Routledge, New York, NY, pp. 54-73.

Garcés-Ayerbe, C., Rivera-Torres, P. and Suárez-Perales, I. (2019), “Stakeholder engagement mechanisms and their contribution to eco-innovation: differentiated effects of communication and cooperation”, Corporate Social Responsibility and Environment Management, Vol. 26 No. 6, pp. 1321-1332.

Geels, F. and Deuten, J.J. (2006), “Local and global dynamics in technological development: a socio-cognitive perspective on knowledge flows and lessons from reinforced concrete”, Science Public Policy, Vol. 33 No. 1, pp. 265-275.

Geng, D., Lai, K. and Zhu, Q. (2021), “Eco-innovation and its role for performance improvement among Chinese small and medium-sized manufacturing enterprises”, International Journal of Production Economics, Vol. 231 No. 1, pp. 1-10.

Gil-Alana, L.A., Skare, M. and Claudio-Quiroga, G. (2020), “Innovation and knowledge as drivers of the great decoupling in China: using long memory methods”, Journal of Innovation and Knowledge, Vol. 5 No. 4, pp. 266-278.

González-Moreno, A., Triguero, A. and Sáez-Martínez, F.J. (2019), “Many or trusted partners for eco-innovation? The influence of breadth and depth of firms' knowledge network in the food sector”, Technological Forecasting and Social Change, Vol. 147 No. 1, pp. 51-62.

Greco, A., Eikelenboom, M. and Long, T.B. (2021), “Innovating for sustainability through collaborative innovation contest”, Journal of Cleaner Production, Vol. 311 No. 8, pp. 1-9.

Hair, J.F., Black, W.C., Babin, B.J. and Anderson, R.E. (2014), Multivariate Data Analysis, 7th ed., Pearson Education, Harlow.

Hair, J.F., Celsi, M., Money, A., Samouel, P. and Page, M. (2016), Essentials of Business Research Methods, 3rd ed., Routledge, New York, NY.

Hair, J., Hult, T., Ringle, C., Sarstedt, M., Castillo, J., Cepeda, G. and Roldan, J. (2019), Manual de Partial Least Squares PLS-SEM, OmniaScience, Madrid.

Hair, J.F., Sarstedt, M., Ringle, C.M., Gudergan, S.P., Castillo, J., Cepeda, G. and Roldan, J. (2021), Manual Avanzado de Partial Least Squares Structural Equation Modeling (PLS-SEM), OmniaScience, Madrid.

Hakkarainen, L. and Hyysalo, S. (2016), “The evolution of intermediary activities: broadening the concept of facilitation in living labs”, Technology Innovation Management Review, Vol. 6 No. 2, pp. 45-58.

He, F., Miao, X., Wong, C.W. and Lee, S. (2018), “Contemporary corporate eco-innovation research: a systematic review”, Journal of Cleaner Production, Vol. 174 No. 4, pp. 502-526.

Hemmelskamp, J. (1999), The Influence of Environmental Policy on Innovative Behaviour: an Econometric Study, Fundazione Eni Enrico Mattei, Rome.

Henseler, J., Ringle, C. 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.

Hilmersson, F.P. and Hilmersson, M. (2021), “Networking to accelerate the pace of SME innovations”, Journal of Innovation and Knowledge, Vol. 6 No. 1, pp. 43-49.

Hoejmose, S., Brammer, S. and Millington, A. (2012), “Green supply chain management: the role of trust and top management in B2B and B2C markets”, Industrial Marketing Management, Vol. 41 No. 6, pp. 609-620.

Hojnik, J., Ruzzier, M. and Lipnik, A. (2014), “Pursuing eco-innovation within southeastern European clusters”, The IUP Journal of Business Strategy, Vol. 11 No. 3, pp. 41-59.

Hojnik, J., Ruzzier, M. and Manolova, T.S. (2018), “Internationalization and economic performance: the mediating role of eco-innovation”, Journal of Cleaner Production, Vol. 171 No. 1, pp. 1312-1323.

Horbach, J. (2008), “Determinants of environmental innovation: new evidence from German panel data sources”, Responsible Policy, Vol. 37 No. 1, pp. 163-173.

Huiling, L. and Dan, L. (2020), “Value chain reconstruction and sustainable development of green manufacturing industry”, Sustainable Computing: Informatics and Systems, Vol. 28 No. 12, pp. 1-11.

Im, S. and Workman, J.P. (2004), “Market orientation, creativity, and new product performance in high-technology firms”, Journal of Marketing, Vol. 68 No. 2, pp. 114-132.

Ivanov, D. (2020), “Viable supply chain model: integrating agility, resilience and sustainability perspectives-lessons from and thinking beyond the COVID-19 pandemic”, Annals of Operations Research, Vol. 319, pp. 1411-1431, doi: 10.1007/s10479-020-03640-6.

Iverson, R.D. and Maguire, C. (2000), “The relationship between job and life satisfaction: evidence from a remote mining community”, Human Relations, Vol. 53 No. 2, pp. 807-839.

Janahi, N.A., Durugbo, C.M. and Al-Jayyousi, O.R. (2021), “Eco-innovation strategy in manufacturing: a systematic review”, Cleaner Engineering and Technology, Vol. 5 No. 1, pp. 1-20.

Janahi, N.A., Durugbo, M.C. and Al-Jayyousi, R.O. (2022), “Exploring network strategies for eco-innovation in manufacturing from a triple helix perspective”, Cleaner Logistics and Supply Chain, Vol. 4 No. 7, pp. 1-11.

Kanda, W., Hjelm, O., Clausen, J. and Bienkowska, D. (2018), “Roles of intermediaries in supporting eco-innovation”, Journal of Cleaner Production, Vol. 205 No. 1, pp. 1006-1016.

Kanda, W., Kuisma, M., Kivimaa, P. and Hjelm, O. (2020), “Conceptualizing the systematic activities of intermediaries in sustainability transitions”, Environment Innovation and Societal Transition, Vol. 36 No. 9, pp. 449-465.

Kanda, W., Geissdoerfer, M. and Hjelm, O. (2021), “From circular business models to circular business ecosystems”, Business Strategy Environment, Vol. 30 No. 1, pp. 2814-2829.

Kanda, W., Hjelm, O., Johansson, A. and Karlkvist, A. (2022), “Intermediation in support systems for eco-innovation”, Journal of Cleaner Production, Vol. 371 No. 9, pp. 1-12.

Kemp, R. and Pearson, P. (2007), “Final report MEI project about measuring eco-innovation”, available at: http://www.oecd.org/env/consumption-innovation/43960830.pdf (accessed 28 July 2022).

Kerdpitak, C., Mekkham, W., Srithong, C. and Jermsittiparset, K. (2019), “The mediating role of environmental collaborations in the relationship manufacturing technologies and green innovation among firms in Thai sports industry”, Journal of Human Sport Exercise, Vol. 14 No. 5, pp. 2223-2246.

Ketelsen, M., Janssen, M. and Hamm, U. (2020), “Consumers' response to environmentally-friendly food packaging: a systematic review”, Journal of Cleaner Production, Vol. 254 No. 5, pp. 1-10.

Kishna, M., Niesten, E., Negro, S. and Hekkert, M. (2017), “The role of alliances in creating legitimacy of sustainable technologies: a study on the field of bio-plastic”, Journal of Cleaner Production, Vol. 155 No. 1, pp. 7-16.

Kivimaa, P., Boon, W. and Antikainen, R. (2017), “Commercializing university inventions for sustainability: a case study of (non) intermediating cleantech at Aalto University”, Science Public Policy, Vol. 44 No. 1, pp. 631-644.

Klewitz, J. and Hansen, E.G. (2014), “Sustainability-oriented innovation in SMEs: a systematic review”, Journal of Cleaner Production, Vol. 65 No. 1, pp. 57-75.

Kobarg, S., Stumpf-Wollersheim, J., Schlägel, C. and Welpe, I.M. (2020), “Green together? The effects of companies' innovation collaboration with different partner types on ecological process and product innovation”, Industry and Innovation, Vol. 27 No. 9, pp. 953-990.

Kong, T., Feng, T. and Ye, C. (2016), “Advanced manufacturing technologies and green innovation: the role of internal environmental collaboration”, Sustainability, Vol. 8 No. 10, pp. 1-10.

Laasch, O. (2019), “An actor-networking perspective on business models: how being responsible ‘led to incremental but pervasive change”, Long Range Planning, Vol. 52 No. 3, pp. 406-426.

Lee, K.H. and Min, B. (2015), “Green R&D for eco-innovation and its impact on carbon emissions and firm performance”, Journal of Cleaner Production, Vol. 108 No. 1, pp. 534-542.

Lo, F.Y., Wong, W.K. and Geovani, J. (2021), “Optimal combinations of factors influencing the sustainability of Taiwanese firms”, International Journal of Emerging Markets, Vol. 16 No. 5, pp. 909-928.

Lohmöller, J.B. (1987), LVPLS 1.8 (Computer Software), Zentralarchiv für Empirische Sozialforschung, Cologne.

Malmström, M.M. and Johansson, J. (2015), “Social exchange in collaborative innovation: maker or breaker”, Journal of Innovation and Entrepreneurship, Vol. 5 No. 1, pp. 1-20.

Melander, L. and Pazirandeh, A. (2019), “Collaboration beyond the supply network for green innovation: insight from 11 cases”, Supply Chain Management Journal, Vol. 24 No. 4, pp. 509-523.

Mossholder, K.W., Bennett, N., Kemery, E.R. and Wesolowski, M.A. (1998), “Relationships between bases of power and work reactions: the mediational role of procedural justice”, Journal of Management, Vol. 24 No. 1, pp. 533-552.

Mu, W., Bian, Y. and Zhao, J.L. (2019), “The role of online leadership in open collaborative innovation: evidence from blockchain open-source projects”, Industrial Management and Data Systems, Vol. 199 No. 9, pp. 1969-1987.

Nguyen, S.K., Vo, X.V. and Vo, T.M. (2020), “Innovation strategies and corporate profitability: the positive resources dependence from political network”, Heliyon, Vol. 6 No. 4, pp. 1-10.

Niesten, E., Jolink, A., Lopes de Sousa, A.B., Chappin, M. and Lozano, R. (2017), “Sustainable collaboration: the impact of governance and institutions on sustainable performance”, Journal of Cleaner Production, Vol. 155 No. 1, pp. 1-6.

Nikolaou, I., Nikolaidou, M. and Tsagarakis, K. (2016), “The response of small and medium-sized enterprises to potential water risks: an eco-cluster approach”, Journal of Cleaner Production, Vol. 112 No. 1, pp. 4550-4557.

Pacheco, D.A., ten Caten, C.S., Jung, C.F., Ribeiro, J.L.D., Navas, H.V.G. and Cruz-Machado, V.A. (2017), “Eco-innovation determinants in manufacturing SMEs: systematic review and research directions”, Journal of Cleaner Production, Vol. 142 No. 1, pp. 2277-2287.

Podsakoff, P.M., MacKenzie, S.B. and Podsakoff, N.P. (2012), “Sources of method bias in social science research and recommendations on how to control it”, Annual Review of Psychology, Vol. 63 No. 1, pp. 539-569.

Podsakoff, P.M., MacKenzie, S.B., Jeong-Yeong, L. 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.

Polzin, F., von Flotow, P. and Klerkx, L. (2016), “Addressing barriers to eco-innovation: exploring the finance mobilization functions of institutional innovation intermediaries”, Technology Forecasting and Social Change, Vol. 103 No. 1, pp. 34-46.

Rigdon, E.E. (2016), “Choosing PLS path modeling as analytical method in European management research: a realist perspective”, European Management Journal, Vol. 34 No. 6, pp. 598-605.

Ringle, C.M., Wende, S. and Becker, J.M. (2022), “SmartPLS 4 (computer software)”, available at: http://www.smartpls.com (accessed 28 July 2022).

Sakis, J. (2020), “Supply chain sustainability: learning from the COVID-19 pandemic”, International Journal of Operations and Production Management, Vol. 41 No. 1, pp. 63-73.

Saleh, A.K., Ribeiro-Navarrete, S., Lassala, C. and Skare, M. (2022), “Networking and knowledge creation: social capital and collaborative innovation in responding to the COVID-19 crisis”, Journal of Innovation and Knowledge, Vol. 7 No. 1, pp. 1-11.

Sanni, M. (2018), “Drivers of eco-innovation in the manufacturing sector of Nigeria”, Technological Forecasting and Social Change, Vol. 131 No. 3, pp. 303-314.

Sarstedt, M., Hair, J.F., Ringle, C.M., Thiele, K.O. and Gudergan, S.P. (2016), “Estimation issues with PLS and CBSEM: where the bies lies”, Journal of Business Research, Vol. 69 No. 10, pp. 3998-4010.

Schot, J. and Steinmueller, W.E. (2018), “Three frames for innovation policy: R&D, systems of innovation and transformative change”, Responsible Policy, Vol. 47 No. 1, pp. 1554-1567.

Segarra-Oña, M., Peiró-Signes, A. and Payá-Martínez, A. (2014), “Factors influencing automobile firm's eco-innovation orientation”, Engineering Management Journal, Vol. 26 No. 1, pp. 31-38.

Seuring, S. and Gold, S. (2013), “Sustainability management beyond corporate boundaries”, Journal of Cleaner Production, Vol. 56 No. 1, pp. 1-20.

Sharma, A. and Henriques, I. (2005), “Stakeholder influences on sustainability practices in the Canadian forest products industry”, Strategic Management Journal, Vol. 26 No. 1, pp. 156-180.

Shen, B., Xu, X., Chan, H.L. and Choi, T.M. (2021), “Collaborative innovation in supply chain systems: value creation and leadership structure”, International Journal of Production Economics, Vol. 235 No. 5, pp. 1-10.

Simms, C., Trott, P., van den Hende, E. and Hultink, E.J. (2020), “Barriers to the adoption of waste-reducing eco-innovations in the packaged food sector: a study in the UK and The Netherlands”, Journal of Cleaner Production, Vol. 224 No. 1, pp. 1-9.

Souto, J.E. and Rodríguez, A. (2015), “The problems of environmentally involved firms: innovation obstacles and essential issues in the achievement of environmental innovation”, Journal of Cleaner Production, Vol. 101 No. 1, pp. 49-58.

Steinmo, M. and Rasmussen, E. (2018), “The interplay of cognitive and relational social capital dimensions in university-industry collaboration: overcoming the experience barrier”, Research Policy, Vol. 47 No. 10, pp. 1964-1974.

Tang, K., Qiu, Y. and Zhou, D. (2020), “Does command-and-control regulation promote green innovation performance? Evidence from China's industrial enterprises”, Science of the Total Environment, Vol. 712 No. 4, pp. 1-11.

Tether, B. (2002), “Who co-operates for innovation, and why: an empirical analysis?”, Responsibility Policy, Vol. 31 No. 1, pp. 947-967.

Tumelero, C., Sbragia, R., Borini, F.M. and Franco, E.C. (2018), “The role of networks in technological capability: a technology-based companies' perspective”, Journal of Global Entrepreneurship Responsibility, Vol. 8 No. 7, pp. 1-19.

Tumelero, C., Sbragia, R. and Evans, S. (2019), “Cooperation in R&D and eco-innovation: the role in companies' socioeconomic performance”, Journal of Cleaner Production, Vol. 207 No. 1, pp. 1138-1149.

Wang, F., Zhao, J., Chi, M. and Li, Y. (2017), “Collaborative innovation capability in IT-enabled inter-firm collaboration”, Industrial Management and Data Systems, Vol. 117 No. 10, pp. 2364-2380.

Wernerfelt, B. (1984), “A resource-based view of the firm”, Strategic Management Journal, Vol. 5 No. 2, pp. 171-180.

West, M. and Advisory, E. (2020), “The state of innovation in professional service firms: who we are – builders of a better working world”, EY – Global, available at: https://www.ey.com/en_gl/who-we-are (accessed 28 July 2022).

Yesil, S. and Dogan, I.F. (2019), “Exploring the relationship between social capital, innovation capability and innovation”, Innovation, Vol. 21 No. 4, pp. 506-532.

Yi, M., Wang, Y., Yang, M., Fu, L. and Zhang, Y. (2020), “Government R&D subsides, environmental regulations, and their effect on green innovation efficiency of manufacturing industry: evidence from the Yangtze River economic belt of China”, International Journal of Environment Research and Public Health, Vol. 17 No. 1, pp. 1-17.

Zhang, D., Rong, Z. and Ji, Q. (2019), “Green innovation and firm performance: evidence from listed companies in China”, Resource, Conservation and Recycling, Vol. 144 No. 1, pp. 48-55.

Corresponding author

Gonzalo Maldonado Guzmám can be contacted at: gonzalo.maldonado@edu.uaa.mx

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