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How top leaders’ support affects open government data (OGD)-driven innovation capacity of firms: Based on the TOE framework perspective

Published online by Cambridge University Press:  14 March 2024

Yu Wang
Affiliation:
Key Laboratory of Computing Power Network and Information Security, Ministry of Education, Shandong Computer Science Center (National Supercomputer Center in Jinan), Qilu University of Technology (Shandong Academy of Sciences), Jinan, China Shandong Provincial Key Laboratory of Computer Networks, Shandong Fundamental Research Center for Computer Science, Jinan, China SHANDONG SCICOM Information and Economy Research Institute Co.,Ltd., Jinan, China
Hui Jiang
Affiliation:
School of Information Management and Artificial Intelligence, Zhejiang University of Finance and Economics, Hangzhou, China
Delong Han
Affiliation:
Key Laboratory of Computing Power Network and Information Security, Ministry of Education, Shandong Computer Science Center (National Supercomputer Center in Jinan), Qilu University of Technology (Shandong Academy of Sciences), Jinan, China Shandong Provincial Key Laboratory of Computer Networks, Shandong Fundamental Research Center for Computer Science, Jinan, China
Mingle Zhou
Affiliation:
Key Laboratory of Computing Power Network and Information Security, Ministry of Education, Shandong Computer Science Center (National Supercomputer Center in Jinan), Qilu University of Technology (Shandong Academy of Sciences), Jinan, China Shandong Provincial Key Laboratory of Computer Networks, Shandong Fundamental Research Center for Computer Science, Jinan, China SHANDONG SCICOM Information and Economy Research Institute Co.,Ltd., Jinan, China
Gang Li*
Affiliation:
Key Laboratory of Computing Power Network and Information Security, Ministry of Education, Shandong Computer Science Center (National Supercomputer Center in Jinan), Qilu University of Technology (Shandong Academy of Sciences), Jinan, China Shandong Provincial Key Laboratory of Computer Networks, Shandong Fundamental Research Center for Computer Science, Jinan, China
*
Corresponding author: Gang Li; Email: [email protected]
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Abstract

The innovation value of open government data (OGD) drives firms to the participation in OGD-driven innovation. However, to fully excavate the innovation value of OGD for firms, it is essential to explore the factors and mechanisms that affect OGD-driven innovation capacity. On the basis of the technology–organization–environment (TOE) framework, a theoretical model affecting OGD-driven innovation capacity is proposed for analysis by partial least squares structural equation modeling with 236 sample data from China. The results indicate that top leaders’ support positively impacts on OGD-driven innovation capacity in firms. And we also prove that technical competence, organizational arrangement, and innovation support partially mediate the relationship between top leaders’ support and OGD-driven innovation capacity on the basis of the TOE framework. Consequently, the findings provide new research perspectives and practical guidance for promoting OGD-driven innovation capacity in firms.

Type
Research Article
Copyright
© The Author(s), 2024. Published by Cambridge University Press in association with Australian and New Zealand Academy of Management.

Introduction

Government agencies collect and publish open government data (OGD), which anyone or any organization may freely access, use, and share (Kalampokis, Tambouris, & Tarabanis, Reference Kalampokis, Tambouris and Tarabanis2011; Kassen, Reference Kassen2013). A significant aspect of OGD is its potential to enhance the value of a firm’s current offerings or facilitate the development of new products and services (Magalhaes & Roseira, Reference Magalhaes and Roseira2020; Susha, Grönlund, & Janssen, Reference Susha, Grönlund and Janssen2015). The present study defines the term ‘OGD-driven innovation capacity’ as the capacity of a firm to utilize OGD for the purpose of developing innovative products or services. In this paper, we define this capacity as an OGD-driven innovation capacity, i.e., a firm’s capacity to employ OGD for product or service innovation.

There is a shortage of study on the capacity to apply OGD at the firm level in the existing academic literature (Magalhaes & Roseira, Reference Magalhaes and Roseira2020; Wang & Lo, Reference Wang and Lo2020; Zhao & Fan, Reference Zhao and Fan2018). Firms anticipate to enjoy innovative advantages from using OGD (Janssen, Charalabidis, & Zuiderwijk, Reference Janssen, Charalabidis and Zuiderwijk2012; Jetzek, Avital, & Bjorn-Andersen, Reference Jetzek, Avital and Bjorn-Andersen2014). Unfortunately, deriving possible innovation advantages from a massive dataset like OGD is a difficult procedure. Lack of understanding to use or comprehend the data, inability to mine and apply the information, lack of necessary tools to process the data, and other obstacles can all stymie OGD-driven innovation capacity (Janssen, Charalabidis, & Zuiderwijk, Reference Janssen, Charalabidis and Zuiderwijk2012). The issue is clear: which forces within the firm can overcome those obstacles to enhance OGD-driven innovation capacity?

According to previous studies, top leaders’ support plays a critical role in enhancing firms’ innovation capacity. Weiner, Shortell, and Alexander (Reference Weiner, Shortell and Alexander1997) demonstrate that when top leaders are supportive of innovation activities, employee engagement increases. At the same time, top leaders’ support can give appropriate resources to guarantee that innovation activities run smoothly (Wang & Lo, Reference Wang and Lo2020). In addition, top leaders’ support has a key role in interpreting information and ensuring employees know what to do and how to do it (Daft & Weick, Reference Daft and Weick1984; Garcia-Ortega, Lopez-Navarro, & Galan-Cubillo, Reference Garcia-Ortega, Lopez-Navarro and Galan-Cubillo2021; Kaplan, Klebanov, & Sorensen, Reference Kaplan, Klebanov and Sorensen2012). Despite the prominent role of top leaders’ support in firms’ innovation activities, there is a lack of robust research confirming the influence of top leaders’ support on OGD-driven innovation capacity, and the underlying mechanisms are not yet clear.

Existing research has examined the internal mechanisms of top leaders for firm innovation, including organizational learning (Liao, Chen, Hu, Chung, & Liu, Reference Liao, Chen, Hu, Chung and Liu2017), knowledge sharing (Yu, Wang, Li, & Lin, Reference Yu, Wang, Li and Lin2022), work environment (Amabile, Schatzel, Moneta, & Kramer, Reference Amabile, Schatzel, Moneta and Kramer2004), and psychological need satisfaction (Reb, Narayanan, & Chaturvedi, Reference Reb, Narayanan and Chaturvedi2014). However, most of these studies emphasize employees’ psychological sentiments as mediators while ignoring the mediating effects of organizational structure, technological resources, and other objective existences. There is also a lack of a framework to summarize the intrinsic factors that affect OGD-driven innovation capacity. (Amabile et al., Reference Amabile, Schatzel, Moneta and Kramer2004; Liao et al., Reference Liao, Chen, Hu, Chung and Liu2017; Reb, Narayanan, & Chaturvedi, Reference Reb, Narayanan and Chaturvedi2014) As a result, this study employs the technology–organization–environment (TOE) framework, a general and adaptable innovation adoption framework, to analyze the path of top leaders’ support for OGD-driven innovation capacity from three perspectives: technological, organizational, and environmental (Tornatzky, Fleischer, & Chakrabarti, Reference Tornatzky, Fleischer and Chakrabarti1990). This study believes that top leaders’ support can improve a firm’s OGD-driven innovation capacity by enhancing its technical competence, optimizing organizational arrangements, and creating a supportive environment for OGD-driven innovation.

In summary, this study offers two main contributions. First, this study focuses on the internal perspective of firms and examines the influence of top leaders’ support on OGD-driven innovation capacity. Second, this study utilizes the TOE framework as a mediator to thoroughly investigate the mechanisms by which top leaders’ support influences OGD-driven innovation capacity.

Theoretical background and hypothesis development

OGD-driven innovation capacity

OGD is described as ‘making public sector data freely and publicly available for value extraction’ (Kalampokis, Tambouris, & Tarabanis, Reference Kalampokis, Tambouris and Tarabanis2011). Recently, governments have increasingly emphasized the innovation value of OGD and taken a series of measures. For example, the UK has established the Open Data User Group for the promotion of private sector innovation in OGD (Open Data User Group, 2012). And China has held competitions such as the ‘Zhejiang Open Data Innovation and Application Competition’ for the improvement of the innovative application of OGD by individuals, universities, and firms (Zhejiang Open Data Innovation and Application Competition, 2020). These national measures indicate that the government is actively stimulating the innovative application of OGD among users. Simultaneously, firms should also seize the opportunity to overcome multiple obstacles and enhance their capacity to employ OGD for product or service innovation, called OGD-driven innovation capacity.

Most academic research on OGD at the firm level has focused on OGD adoption. For example, Kaasenbrood, Zuiderwijk, Janssen, de Jong, and Bharosa (Reference Kaasenbrood, Zuiderwijk, Janssen, de Jong and Bharosa2015) developed a framework for identifying factors influencing OGD adoption in private organizations. Wang and Lo (Reference Wang and Lo2020) constructed a firm-level model of factors influencing OGD adoption based on a socio-technical perspective. However, these research works only examine the factors driving OGD adoption rather than the factors impacting firms’ OGD-driven innovation capacity. In addition, Jetzek, Avital, and Bjorn-Andersen (Reference Jetzek, Avital and Bjorn-Andersen2014) developed a framework of OGD-driven innovation generation mechanisms to explain how firms stimulate the generation of economic and social value through OGD. This study, however, ignores a vital premise: whether firms have the capacity to drive innovation and achieve economic and social value through OGD. We must explore OGD-driven innovation capacity as a result of the fact that firms will face technical, organizational, and other obstacles after the introduction of OGD as a new innovation resource. The value of OGD-driven innovation cannot be achieved unless firms have enough capacity to cope with these obstacles.

Top leaders’ support and OGD-driven innovation capacity

Top leaders serve as executive sponsors for a given project (Yang, Reference Yang2008). The role of top leaders in the project is mainly responsible for providing precise guidance and allocating appropriate resources to meet the project’s goals (Hsu, Liu, Tsou, & Chen, Reference Hsu, Liu, Tsou and Chen2019; Rodríguez, Pérez, & Gutiérrez, Reference Rodríguez, Pérez and Gutiérrez2008; Rosenbloom, Reference Rosenbloom2000). Therefore, in this study, top leaders’ support can be defined as an act of proactive sponsorship by providing specific guidance and committing appropriate resources to OGD-driven innovation projects (Hsu et al., Reference Hsu, Liu, Tsou and Chen2019; Rodríguez, Pérez, & Gutiérrez, Reference Rodríguez, Pérez and Gutiérrez2008).

The contribution of top leaders’ support to OGD-driven innovation capacity manifests itself in two ways. First, from an economic standpoint, OGD does not have value on its own but rather integrates with other factors of production to generate value (Mei, Reference Mei2018). Top leaders may use their positions and power to deploy the various elements of innovation activities in an efficient manner (Wang & Lo, Reference Wang and Lo2020). This deployment facilitates the integration of OGD with the firm’s current resources, helps to overcome the institutional, human, and technological barriers that OGD-driven innovation activities confront, and improves the firm’s capacity to recognize commercial opportunities and capitalize on innovation. Simply put, top leaders’ support increases the probability of success for OGD-driven innovation by providing the necessary resources.

Second, top leaders’ support is able to strengthen the interaction between employees and OGD through their own influence. A key role of top leaders is to interpret information (Daft & Weick, Reference Daft and Weick1984). When top leaders express support for OGD-driven innovation activities, for example, by communicating their goals and benefits through letters, sensitization sessions, etc., they can shift employees’ attention to OGD-driven innovation (Garcia-Ortega, Lopez-Navarro, & Galan-Cubillo, Reference Garcia-Ortega, Lopez-Navarro and Galan-Cubillo2021; Kaplan, Klebanov, & Sorensen, Reference Kaplan, Klebanov and Sorensen2012). Another key role of top leaders’ support is to provide clarity of goals, which can help eliminate uncertainty about the adoption of new things within the firm and promote innovation (Kaplan, Klebanov, & Sorensen, Reference Kaplan, Klebanov and Sorensen2012; Weiner, Shortell, & Alexander, Reference Weiner, Shortell and Alexander1997). In accordance with Koziol-Nadolna (Reference Koziol-Nadolna2020), the supporting behaviors of leaders (e.g., articulating goal expectations and providing rewards) can effectively stimulate employees’ innovativeness, resulting in a flexible and open innovation firm. In addition, existing literature suggests that top leaders play an important role in promoting organizational learning (Shao, Feng, & Hu, Reference Shao, Feng and Hu2017). After introducing the new knowledge of OGD into the firm, top leaders can enhance employees’ learning and interaction with OGD by providing open data literacy boot camps (Iryna, Åke, & Marijn, Reference Iryna, Åke and Marijn2015).

In conclusion, this study makes the case that the top leaders’ support is, in fact, a proactive leadership approach that qualifies as transformational leadership. By exercising influence, establishing goals and incentives, and other means, this kind of leader may have a direct impact on how the organization views and responds to OGD-driven innovation (Zhou, Wang, Jiang, Li, & Li, Reference Zhou, Wang, Jiang, Li and Li2023). We propose the following hypothesis:

Hypothesis 1a: Top leaders’ support plays a proactive role in OGD-driven innovation capacity.

TOE framework as a mediator

OGD-driven innovation, in terms of output results, is the process by which firms use OGD, a new factor of production, to develop new products or services. Multiple variables will undoubtedly impact firms’ OGD-driven innovation capacity during this phase of innovation adoption and deployment. As a result, we require a broad framework to clarify these impacts and their consequences.

Many researchers have acknowledged Tornatzky and Fleischer’s TOE framework as a broad categorization framework for innovation adoption studies (Liang, Wang, Dong, Zhang, & Qi, Reference Liang, Wang, Dong, Zhang and Qi2021; Tornatzky, Fleischer, & Chakrabarti, Reference Tornatzky, Fleischer and Chakrabarti1990; Wang & Lo, Reference Wang and Lo2016; Zhang, Zhao, Zhang, Meng, & Tan, Reference Zhang, Zhao, Zhang, Meng and Tan2017). The TOE framework, which is highly adaptable and extensively relevant, categorizes the factors influencing innovation adoption as technical, organizational, and environmental. By examining these three aspects, we may gain a better understanding of the direct and indirect effects of top leaders’ support on OGD-driven innovation capacity.

Technical competence

OGD is free, gratis, and accessible data and is often viewed as a public good with a non-competitive nature (Zuiderwijk, Janssen, Poulis, & Kaa, Reference Zuiderwijk, Janssen, Poulis and Kaa2015). Therefore, access to OGD does not help firms build a competitive advantage. Importantly, firms need to have the technical competence to mine and utilize OGD, discover hidden relationships from data sets, and transform them into innovation paradigms in order to create competitive advantage with OGD (Zuiderwijk et al., Reference Zuiderwijk, Janssen, Poulis and Kaa2015; Zurada & Karwowski, Reference Zurada and Karwowski2011).

Hardware and software infrastructure, as well as qualified technical employees, are examples of technical competencies. Data mining requires sophisticated data processing and analysis equipment, such as high-performance CPUs and hard drives, as well as applications such as plug-ins, visualizations, and software libraries (Iryna, Åke, & Marijn, Reference Iryna, Åke and Marijn2015; Seifert, Reference Seifert2004). Firms must have a dependable and modern hardware and software infrastructure in order to increase their data identification, mining, and application capabilities, therefore making OGD more valuable and useful. Furthermore, human competencies and skills are required to comprehend the data (Janssen, Charalabidis, & Zuiderwijk, Reference Janssen, Charalabidis and Zuiderwijk2012; Zuiderwijk et al., Reference Zuiderwijk, Janssen, Poulis and Kaa2015). Using digital technology to harvest potentially useful information from OGD for business innovation also necessitates the expertise of technical people trained in big data analytics (Ghasemaghaei & Calic, Reference Ghasemaghaei and Calic2019; Wamba et al., Reference Wamba, Gunasekaran, Akter, Ren, Dubey and Childe2017).

As mentioned earlier, top leaders’ support is a proactive behavior in OGD-driven innovation activities. As a result, top leaders’ support may effectively maximize the firm’s technology resources to better serve OGD-driven innovation activities. On the one hand, top leaders’ support is seen as a significant component impacting an organization’s IT resources (Ragu-Nathan, Apigian, Ragu-Nathan, & Tu, Reference Ragu-Nathan, Apigian, Ragu-Nathan and Tu2004; Sohal, Moss, & Ng, Reference Sohal, Moss and Ng2001). The support of top leaders indicates the emphasis placed on IT resources and can have a direct impact on the procurement and setup of hardware and software infrastructure. On the other hand, top leaders may assure appropriate human resources for OGD-driven innovation activities by deploying in-house technical professionals, recruiting outside technical talent, and increasing general employees’ abilities. Finally, we propose the following hypothesis:

Hypothesis 1b: Top leaders’ support positively influences technical competence.

Hypothesis 2: Technical competence positively influences OGD-driven innovation capacity.

Hypothesis 2a: Technical competence plays a mediation role between top leaders’ support and OGD-driven innovation capacity.

Organizational arrangement

With market competition intensifying and technological change accelerating, the foundation of firms’ success lies not only in the introduction of new technologies but also in the organizational and management innovations required to achieve and maintain competitiveness, such as the optimization and upgrading of organizational structures (Teece, Reference Teece2007; Vaccaro, Jansen, Van Den Bosch, & Volberda, Reference Vaccaro, Jansen, Van Den Bosch and Volberda2012). We suggest that top leaders’ support can significantly alter organizational arrangement because top leaders have significant sway over organizational resource allocation. We regard organizational arrangement as the institutional setup and staffing arrangement in OGD-driven innovation activities in this study.

When OGD is brought into a firm’s innovation production system, it challenges the firm’s traditional innovation organizational structure and, unavoidably, shocks the interests of existing departments. To alleviate this shock, top leaders must create a new organizational institution for OGD-driven innovation that avoids conflicts of interest (Zhao & Fan, Reference Zhao and Fan2018, Reference Zhao and Fan2021). Furthermore, the new organization has resulted in a completely different employment arrangement. Top leaders can use this chance to develop a professional OGD innovation and R&D team (termed an OGD-based R&D organization) by internal staff redeployment and recruitment of new staff (Zhou et al., Reference Zhou, Wang, Jiang, Li and Li2023). Professional employees and an adequate workforce are certain to improve the OGD-driven innovation capacity (Lee & Kwak, Reference Lee and Kwak2012).

Smart top leaders can increase OGD-driven innovation capacity by using transformational leadership strategies in this new team, such as fostering innovative thinking via motivating inspiration and effective people cohesiveness through personal care (Chan & Mak, Reference Chan and Mak2014; Zhou et al., Reference Zhou, Wang, Jiang, Li and Li2023). Simultaneously, the new organization results in a reallocation of firm resources (Yukl, Gordon, & Taber, Reference Yukl, Gordon and Taber2002), for example, greater in-house training and more investment in OGD-driven innovation activities. Ambitious employees will take advantage of training, financing, and other possibilities to strengthen OGD-driven innovation capabilities, leading to improved career growth. Finally, we propose the following hypothesis:

Hypothesis 1c: Top leaders’ support positively influences organizational arrangement.

Hypothesis 3: Organizational arrangement positively influences OGD-driven innovation capacity.

Hypothesis 3a: Organizational arrangement plays a mediation role between top leaders’ support and OGD-driven innovation capacity.

Innovation support

According to the theory of organizational behavior, an organization’s survival and growth are dependent on the creativity of its people, and organizations may successfully boost employee creativity by creating a favorable work environment (Amabile & Conti, Reference Amabile and Conti1999). We believe that top leaders may create a good work environment by engaging in innovation-support behaviors such as financial assistance, presentations, and training, which stimulate workers to participate in OGD-related knowledge and skills, hence increasing OGD-driven innovation capacity.

While OGD enters the firm’s production system as an emerging innovation resource, it also brings new knowledge and new risks (Magalhaes & Roseira, Reference Magalhaes and Roseira2020; Zuiderwijk, Helbig, Gil-García, & Janssen, Reference Zuiderwijk, Helbig, Gil-García and Janssen2014). Employees must learn how to use OGD efficiently to achieve innovation in a situation with inconsistent open standards and potential privacy and security risks. Existing literature indicates that top leaders are good at supporting organizational learning and pushing employees to learn new knowledge and experiment with new ideas (Shao, Feng, & Hu, Reference Shao, Feng and Hu2017). Assume that top leaders communicate their support for and even participate in OGD-driven innovation. In such situation, their followers will become more aware of the need of gaining OGD-related knowledge and skills. In addition, top leaders’ leadership styles affect employees’ attitudes toward innovation. Top leaders with transformational leadership styles, for example, promote radical innovations (Zhou et al., Reference Zhou, Wang, Jiang, Li and Li2023). When the outcome of innovative activities is uncertain, transformational leaders’ encouraging and supportive attitudes toward new ideas can boost employees’ confidence in innovative activities and reduce their concerns about potential risks, creating a favorable climate for innovation (Shao, Feng, & Hu, Reference Shao, Feng and Hu2017; Shin & Zhou, Reference Shin and Zhou2003). Finally, we propose the following hypothesis:

Hypothesis 1d: Top leaders’ support positively influences innovation support.

Hypothesis 4: Innovation support positively influences OGD-driven innovation capacity.

Hypothesis 4a: Innovation support plays a mediation role between top leaders’ support and OGD-driven innovation capacity.

Our theoretical model is shown in Fig. 1.

Figure 1. Theoretical model.

Data and measures

Data collection

Using the Credamo Questionnaire Platform (https://www.credamo.com/home.html) to collect data, we distributed 300 questionnaires to firms that intend or have performed OGD-driven innovation, with all questionnaires returned. After excluding questionnaires with missing or duplicate options, we obtained 236 valid questionnaires, with an effective response rate of 78.7%. The demographics of the samples are shown in Table 1, and the descriptive statistics of firms are shown in Table 2. The questionnaire is divided into two sections: the first section comprises personal and firm-related information, while the second section comprises questions related to each item and all graded on a 7-point Likert scale.

Table 1. Sample demographics

Table 2. Firm descriptive statistics

In practice, respondents’ replies may contradict the truth for a variety of reasons, including respondents’ failure to grasp the questions, respondents’ refusal to answer honestly, and respondents’ ambiguity regarding the facts to be replied. As a result, various steps were made in this investigation to assure the quality of the findings. For example, academic experts were widely consulted to revise the questionnaire’s items in order to eliminate the possibility that the items would be difficult to understand or unclearly stated; and it was promised that the information in the questionnaire would only be used for academic research and would not be published to the public in order to gain the respondents’ trust and to fill in the information honestly. Furthermore, we screened respondents using the Credamo Questionnaire Platform’s sample-paying service to guarantee that they were educated about OGD-driven innovation in their firms. The Credamo survey platform has a rigorous and scientific methodology in place to assist this study in inviting qualified target demographics to participate in the survey.

Measures

Top leaders’ support

The measurement of top leaders’ support is adapted from Wang and Lo (Reference Wang and Lo2020), comprising four items: your top leaders understand the value of OGD for innovation; your top leaders are very enthusiastic about OGD-driven innovation; your top leaders expect to enhance products or develop new products by means of OGD; and your top leaders will provide resources to implement OGD-driven innovation better.

Technical competence

The measurement of a firm’s technology competence consists of three items: the firm has OGD-related IT infrastructure (both software and hardware); the firm provides training in OGD-related technology skills and knowledge; and the firm’s employees have OGD-related technology and expertise. These items are adapted from Zhao and Fan (Reference Zhao and Fan2018) and Zhao and Fan (Reference Zhao and Fan2021).

Organizational arrangement

The measurement of organizational arrangements is adapted from Zhao and Fan (Reference Zhao and Fan2021) and consists of three items: top leaders’ attention and active participation in OGD-driven innovation activities; the establishment of a working group or institution dedicated to OGD-driven innovation activities; and the staffing of professionals responsible for specific activities of OGD-driven innovation activities.

Innovation support

The measurement of innovation support is adapted from Jaw, Lo, and Lin (Reference Jaw, Lo and Lin2010) and consists of four items: adequate budget invested in OGD-driven innovation; adequate time and workforce invested in OGD-driven innovation; encouragement of new ideas from employees on OGD-driven innovation; and adequate rewards for employees who come up with new ideas.

OGD-driven innovation capacity

The measurement of OGD-driven innovation capacity is adapted from Li and Atuahene‐Gima (Reference Li and Atuahene‐Gima2002) and consists of four items: significant financial resources invested in OGD-driven innovation; improvement of existing products or development of new products through OGD; increased market launch of new products and services through OGD; and increased overall investment in development and marketing for OGD-driven innovation.

Control variables

First, the firm’s age was controlled as a result that younger firms may have a higher incentive for innovation than mature firms (Balasubramanian & Lee, Reference Balasubramanian and Lee2008). Furthermore, we controlled the firm’s size, as size typically leads to economies of scale, allowing larger firms to obtain competitiveness over smaller firms (Dukeov, Bergman, Heilmann, Platonov, & Jaschenko, Reference Dukeov, Bergman, Heilmann, Platonov and Jaschenko2018; Hansen, Reference Hansen1992). Third, we additionally controlled for industry category, assigning a value of ‘1,’ ‘2’, and ‘3’ to primary industry, secondary industry, and tertiary industry, respectively. Ultimately, as Slevin and Covin (Reference Slevin and Covin1997) point out, hostility can pose a threat to organizational survival and growth and may affect the organization’s innovation decisions and performance. We chose hostility as another control variable and measured it by adapting the two-item scale of Slevin and Covin (Reference Slevin and Covin1997). The reliability of this scale was 0.84.

Data analysis method

The variance-based method (partial least squares structural equation modeling [PLS-SEM]) was employed for data analysis, and SmartPLS software was applied for empirical tests. The PLS-SEM method is appropriate for complicated models with multiple constructs, indicators, and structural paths, as well as for small sample data with non-normal distribution (Hair, Ringle & Sarstedt, Reference Hair, Ringle and Sarstedt2011). Therefore, based on the model in this paper, the justifications for choosing the PLS-SEM method are as follows: (1) the model is reasonably sophisticated (numerous constructs, indicators, and paths); (2) the sample size is comparatively limited (236); and (3) the data are non-normal distributed. Furthermore, in this study, the recommended two-step procedure was applied to assess the measurement and structural models, respectively (Hair et al., Reference Hair, Ringle and Sarstedt2011).

Analysis and results

Measurement model

All constructs and indicators in this measurement model were evaluated for reliability and validity. We first evaluated the reliability of each indicator with suggested loadings above 0.7 (Hair, Risher, Sarstedt, & Ringle, Reference Hair, Risher, Sarstedt and Ringle2019). It is shown in Table 3 that all out loadings are above 0.7, suggesting good indicator reliability. And the internal consistency reliability was evaluated on the basis of three criteria, that is Cronbach’s α (CA), ${\rho _A}$, and composite reliability (CR) (Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019). It is shown in Table 4 that the values of CA, ${\rho _A}$, and CR for all constructs are higher than 0.7 (Benitez, Henseler, Castillo, & Schuberth, Reference Benitez, Henseler, Castillo and Schuberth2020), indicating good reliability of the measurement scales.

Table 3. Outer loadings and VIF

Note. TLS = top leaders’ support; TC = technical competence; OA = organization arrangement; IS = innovation support; OGDIC = OGD-driven innovation capacity; VIF = variance inflation factor.

Bold values are the outer loadings of the constructs.

Table 4. Reliability and discriminant validity of the constructs

Note. TLS = top leaders’ support; TC = technical competence; OA = organization arrangement; IS = innovation support; OGDIC = OGD-driven innovation capacity.

Bolded values are the square root of the average variance extracted (AVE).

Convergent validity is evaluated by the average variance extracted (AVE) (Fornell & Larcker, Reference Fornell and Larcker1981), and the AVE value above 0.5 is considered that the construct explains no less than 50% of the variance of its indicators (Hair et al., Reference Hair, Ringle and Sarstedt2011). It is shown in Table 4 that all AVE values are above 0.5 and have favorable convergent validity. Discriminant validity, usually evaluated by the Fornell–Larcker criterion, is the degree to which a construct indeed differs from other constructs (Fornell & Larcker, Reference Fornell and Larcker1981), requiring that the square root of AVE should be above the correlation between constructs (Hair et al., Reference Hair, Ringle and Sarstedt2011). Table 4 indicates that the measurement model is in favorable discriminant validity.

In addition, Table 5 shows that a total of 236 respondents participated in this survey, giving the mean and standard deviation, and giving the correlation between all constructs. The results in Table 5 show that there is a good correlation between the various constructs, which is suitable for further hypothesis analysis.

Table 5. Descriptive statistics and correlation result

Note. M = mean; SD = standard deviation; TLS = top leaders’ support; TC = technical competence; OA = organization arrangement; IS = innovation support; OGDIC = OGD-driven innovation capacity.

Structural model

Following the evaluation of the measurement model, the structural model is examined. PLS-SEM typically tests the relationships among the constructs of the structural model by means of examining the coefficient of determination (${R^2}$), significance and correlation of the path coefficients, and effect sizes (${f^2}$) (Benitez et al., Reference Benitez, Henseler, Castillo and Schuberth2020; Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019). In this stage, we evaluate the structural model to determine whether the hypotheses presented earlier are valid.

Since the relationship between the constructs is a series of regression equations, we need to check multicollinearity to ensure that it does not bias the regression results (Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019). In accordance with Benitez et al. (Reference Benitez, Henseler, Castillo and Schuberth2020), the variance inflation factor was selected to check multicollinearity. It is shown in Table 3 that all variance inflation factor values are under the standard threshold of 3, indicating an absence of multicollinearity.

The evaluation results of the structural model are obtained by running the bootstrapping program with 5,000 iterations of subsamples. Figure 2 indicates the model evaluation results, where the explained variance of endogenous variables (${R^2}$) as well as the standardized path coefficients ($\beta $) of endogenous variables are given. As is illustrated in Fig. 2, top leaders’ support ($\beta $ = 0.21, p < .05), technical competence ($\beta $ = 0.15, p < .05), organizational arrangement ($\beta $ = 0.37, p < .001), and innovation support ($\beta $= 0.22, p < .05) play a significant role in OGD-driven innovation capacity. Consequently, hypotheses H1a, H2, H3, and H4 are supported. In addition, top leaders’ support plays a significant role in technical competence ($\beta $ = 0.65, p < .001), organizational arrangement ($\beta $ = 0.66, p < .001), and innovation support ($\beta $ = 0.63, p < .001), respectively. Thus, hypotheses H1b, H1c, and H1d are supported. Table 6 shows the results of all direct hypotheses.

Figure 2. Estimated relationships of the structural model.

Table 6. The results of all direct hypotheses

Note. TLS = top leaders’ support; OGDIC = OGD-driven innovation capacity; TC = technical competence; OA = organizational arrangement; IC = innovation support; SD = standard deviation; LLCI = low-level confidence interval; ULCI = up-level confidence interval.

* p < .05, ***p < .001.

${R^2}$, known as in-sample predictive power, is often used to assess the variance explained of all endogenous constructs (Benitez et al., Reference Benitez, Henseler, Castillo and Schuberth2020; Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019), which is also a measurement of the explanatory power of a model (Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019). On the measurement scale, the ${R^2}$ values of 0.75, 0.50, and 0.25 are regarded as substantial, moderate, and weak levels of explanatory power, respectively (Hair et al., Reference Hair, Ringle and Sarstedt2011; Henseler, Ringle, & Sinkovics, Reference Henseler, Ringle, Sinkovics, Sinkovics and Ghauri2009). It is illustrated in Fig. 2 that our structural model explicates 42% of the variance (${R^2}$) in technical competence, 43% in organizational arrangement, 40% in innovation support, and 68% in OGD-driven innovation capacity, respectively. Consequently, our model has moderate explanatory power.

In addition to evaluating the ${R^2}$ as the explanatory power of all endogenous constructs, the model’s quality should be assessed by the effect sizes (${f^2}$) (Liang et al., Reference Liang, Wang, Dong, Zhang and Qi2021). In case that an exogenous construct is left out from the model, we can use ${f^2}$ to assess the effect of this omitted construct on the ${R^2}$ value of an endogenous construct (Mikalef, Krogstie, Pappas, & Pavlou, Reference Mikalef, Krogstie, Pappas and Pavlou2020). Based on the guideline, the ${f^2}$ values of 0.02, 0.15, and 0.35 refer to small, medium, and large effect sizes, respectively (Hair et al., Reference Hair, Risher, Sarstedt and Ringle2019). ${f^2}$ effect sizes’ results of all exogenous constructs are shown in Table 7. Top leaders’ support (0.06), technical competence (0.03), and innovation support (0.08) have a small effect size on OGD-driven innovation capacity. In contrast, organizational arrangement (0.17) has a medium effect size toward OGD-driven innovation capacity.

Table 7. The results of ${f^2}$ effect sizes

Mediating effect test

Previous research has frequently used the four-step Sobel test approach to assess for mediating effects (Arpaci, Kesici, & Baloğlu, Reference Arpaci, Kesici and Baloğlu2018; Sobel, Reference Sobel1982). Nevertheless, the Sobel test is inappropriate for analyzing indirect effects (Nitzl, Roldan, & Cepeda, Reference Nitzl, Roldan and Cepeda2016; Preacher & Hayes, Reference Preacher and Hayes2008), and in this study, the Sobel test is unnecessary. As a result that after 5,000 iterations of the bootstrapping procedure, PLS can test the direct and indirect effects of the model (Arpaci, Kesici, & Baloğlu, Reference Arpaci, Kesici and Baloğlu2018; Hair, Hult, Ringle, & Sarstedt, Reference Hair, Hult, Ringle and Sarstedt2017; Preacher & Hayes, Reference Preacher and Hayes2008) and still obtain a high statistical power in the case of small samples (Hair, Sarstedt, Hopkins, & Kuppelwieser, Reference Hair, Sarstedt, Hopkins and Kuppelwieser2014; Henseler, Reference Henseler2010).

The mediating effect test results for this study’s model are shown in Table 8. On the basis of the results in Table 8, we conclude that the direct and indirect effects (mediating paths) of top leaders’ support on OGD-driven innovation capacity are of significance regardless of whether the technical competence, organizational arrangement, or innovation support is introduced. Consequently, we confirm that technical competence, organizational arrangement, and innovation support all partially mediate the relationship between top leaders’ support and OGD-driven innovation capacity, and hypotheses H2a, H3a, and H4a are all supported.

Table 8. Mediation effect test

Note. TLS = top leaders’ support; OGDIC = OGD-driven innovation capacity; TC = technical competence; OA = organizational arrangement; IS = innovation support; LLCI = low-level confidence interval; ULCI = up-level confidence interval.

* p < .05, ***p < .001.

Discussion

Based on the results of PLS-SEM, this study first confirms the positive correlation between top leaders’ support and OGD-driven innovation capacity. This finding highlights the importance of top leaders’ support for firms’ adoption and application of OGD while keeping consistent with earlier studies on the relationship between top leaders’ support and firm innovation (Hsu et al., Reference Hsu, Liu, Tsou and Chen2019; Yu et al., Reference Yu, Wang, Li and Lin2022). Furthermore, technical competence, organizational arrangement, and innovation support play a partial mediating role between top leaders’ support and OGD-driven innovation capacity. This implies that top leaders’ support is not an empty promise but can enhance OGD-driven innovation capacity by influencing the internal state of the organization.

Second, organizational arrangement has the highest degree of influence on OGD-driven innovation capacity ($\beta $ = 0.37, p < .001) among all factors and the largest mediating effect ($\beta $ = 0.24, p < .001) between top leaders’ support and OGD-driven innovation capacity. As mentioned by Andrews, Beynon, and McDermott (Reference Andrews, Beynon and McDermott2016), organizational structure is crucial in determining the emergence of high or low capacity. Our study further confirms that flexible, effective, and well-staffed organizational arrangements are a key factor in enhancing OGD-driven innovation capacity.

Third, technical competence has the smallest direct effect on OGD-driven innovation capacity ($\beta $ = 0.15, p < .05) and the smallest mediating effect ($\beta $ = 0.10, p < .05) between top leaders’ support and OGD-driven innovation capacity. There may have two explanations for this: on the one hand, with the increase of highly educated population, firms can efficiently recruit relevant technical employees, and those well-educated employees can easily acquire OGD-related knowledge and skills through training. On the other hand, new generation computing resources, such as cloud computing services, provide hardware and software resources to firms on demand through the network, reducing the cost of hardware and software configuration for firms (Khayer, Bao, & Nguyen, Reference Khayer, Bao and Nguyen2020). Therefore, technical competence is not a major influencer of OGD-driven innovation capacity.

Finally, the direct effect ($\beta $ = 0.22, p < .05) of innovation support on OGD-driven innovation capacity is as moderate as the mediating effect ($\beta $ = 0.14, p < .05) between top leaders’ support and OGD-driven innovation capacity. Although the innovation support is not the most critical factor influencing OGD-driven innovation capacity, it cannot be ignored. Creating a supportive environment for OGD-driven innovation can subconsciously raise employees’ awareness of enhancing OGD-driven innovation capacity.

Conclusion

Top leaders’ support plays an important management and decision-making role in firms’ OGD-driven innovation activities. Using the TOE framework, this paper develops a theoretical model to understand the impact of top leaders’ support on OGD-driven innovation capacity. The findings of this study indicate that top leaders’ support significantly affects OGD-driven innovation capacity. The results also show that technical competence, organizational arrangement, and innovation support partially mediate the relationship between top leaders’ support and OGD-driven innovation capacity.

Theoretical and practical implications

Theoretical implications

Several theoretical implications are concluded below. First, prior literature has explored a large number of OGD-related topics at the governmental level, such as institutional capacity (Zhao & Fan, Reference Zhao and Fan2018), policy comparison (Bates, Reference Bates2014; Chatfield & Reddick, Reference Chatfield and Reddick2018), adoption (Wang & Lo, Reference Wang and Lo2016), and implementation evaluation (Zuiderwijk & Janssen, Reference Zuiderwijk and Janssen2014). Some scholars have gradually shifted their research from the government level to the firm level, with research topics covering adoption (Kaasenbrood et al., Reference Kaasenbrood, Zuiderwijk, Janssen, de Jong and Bharosa2015; Wang & Lo, Reference Wang and Lo2020), value generation mechanisms (Ahmadi Zeleti, Ojo, & Curry, Reference Ahmadi Zeleti, Ojo and Curry2016; Leviäkangas & Molarius, Reference Leviäkangas and Molarius2020), and realization paths (Jetzek, Avital, & Bjorn-Andersen, Reference Jetzek, Avital and Bjorn-Andersen2014). However, few studies have addressed the capacity of firms to leverage OGD for innovation. This paper shifts the focus of the current study to the firm’s OGD-driven innovation capacity.

Second, this study developed a model and verified its validity through empirical testing to advance the understanding of OGD-driven innovation capacity. Based on the TOE framework, a model has been proposed to identify the intrinsic drivers that influence OGD-driven innovation capacity, which has good explanatory power (67.7%). Unlike the theoretical models commonly used in technological innovation (e.g., Unified Theory of Acceptance and Use of Technology, Technology Acceptance Model, and Task-Technology Fit), this paper provides a different theoretical perspective for researchers of OGD-driven innovation capacity at the firm level.

Furthermore, the findings of this paper make up for and extend the research on firms’ innovation capacity. Previous literature has validated the positive contribution of top leaders’ support to a firm’s innovation capacity on different topics (Guo, Pang, & Li, Reference Guo, Pang and Li2018; Talke, Salomo, & Rost, Reference Talke, Salomo and Rost2010; Yu et al., Reference Yu, Wang, Li and Lin2022). And the findings of this study further validate that top leaders’ support has significant direct and indirect effects on a new innovation capacity such as OGD-driven innovation capacity. In addition, prior literature has examined the impact on innovation by primarily incorporating top leaders’ support into organizational arrangements (Zhao & Fan, Reference Zhao and Fan2021). This study argues that top leaders’ support affects organizational arrangements such as institutional settings and staffing, which in turn has an effect on innovation capacity.

Practical implications

Several practical implications are summarized below. To begin with, top leaders’ support is essential for improving OGD-driven innovation capacity. We encourage top leaders to attach great importance to the innovation value of OGD and optimize the configuration of technology and management within the organization from the top down, in order to prepare for the realization of OGD-driven innovation capacity. Second, the technical competence is essential, although it is not the most critical factor for firms to improve their OGD-driven innovation capacities. Firms are required to keep up with the next generation of information technology to avoid losing competitive advantage continuously. For example, top leaders can enhance the firm’s technical competence by training and developing relevant technological talents and introducing next-generation information technology (e.g., cloud computing). Third, top leaders should realize that verbal expressions of support for OGD-driven innovation are inadequate; they must be followed by action. For example, they can commit resources to establish OGD-driven innovation-related organizations and rationalize staffing arrangements. The organizational arrangement can reflect the firm’s readiness, and a reasonable and adequate organizational arrangement can fully optimize the firm’s workforce and management and enhance the ability of OGD-driven innovation. Finally, the innovation environment within the organization should be given attention. Top leaders should motivate employees to improve their OGD-driven innovation capacities by providing a stable innovation environment (e.g., training, financial support, reward, and punishment system).

Limitations and future directions

Although this study thoroughly examined the factors and mechanisms that influence the OGD-driven innovation capacity, there are some limitations listed as follows. First, the sample data in this paper is relatively small (236); therefore, we expect future studies to expand the sample size to examine better the factors influencing OGD-driven innovation capacity. Second, this study was exclusively undertaken in China. Although the findings have some implications for other countries to enhance OGD-driven innovation capacity, more research is required in the future in multi-regional and multi-cultural contexts for caution, particularly given the relative lack of research in this field. Finally, this study focuses on how factors internal to the firm (e.g., top leaders’ support) influence OGD-driven innovation. Future research could incorporate factors external to the firm (e.g., external pressures and government support) to develop new research models that would enrich the research perspective.

Acknowledgements

This work was supported by the Shandong Provincial Natural Science Foundation (NO.ZR2022QG016), the National Social Science Fund of China (NO.22FGLB010), and the Taishan Scholars Program (NO.tscy20221110).

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Figure 0

Figure 1. Theoretical model.

Figure 1

Table 1. Sample demographics

Figure 2

Table 2. Firm descriptive statistics

Figure 3

Table 3. Outer loadings and VIF

Figure 4

Table 4. Reliability and discriminant validity of the constructs

Figure 5

Table 5. Descriptive statistics and correlation result

Figure 6

Figure 2. Estimated relationships of the structural model.

Figure 7

Table 6. The results of all direct hypotheses

Figure 8

Table 7. The results of ${f^2}$ effect sizes

Figure 9

Table 8. Mediation effect test