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Big data analytics capabilities and organizational performance: the mediating effect of dual innovations

Author

Listed:
  • Xiaofeng Su
  • Weipeng Zeng
  • Manhua Zheng
  • Xiaoli Jiang
  • Wenhe Lin
  • Anxin Xu

Abstract

Purpose - Following the rapid expansion of data volume, velocity and variety, techniques and technologies, big data analytics have achieved substantial development and a surge of companies make investments in big data. Academics and practitioners have been considering the mechanism through which big data analytics capabilities can transform into their improved organizational performance. This paper aims to examine how big data analytics capabilities influence organizational performance through the mediating role of dual innovations. Design/methodology/approach - Drawing on the resource-based view and recent literature on big data analytics, this paper aims to examine the direct effects of big data analytics capabilities (BDAC) on organizational performance, as well as the mediating role of dual innovations on the relationship between (BDAC) and organizational performance. The study extends existing research by making a distinction of BDACs' effect on their outcomes and proposing that BDACs help organizations to generate insights that can help strengthen their dual innovations, which in turn have a positive impact on organizational performance. To test our proposed research model, this study conducts empirical analysis based on questionnaire-base survey data collected from 309 respondents working in Chinese manufacturing firms. Findings - The results support the proposed hypotheses regarding the direct and indirect effect that BDACs have on organizational performance. Specifically, this paper finds that dual innovations positively mediate BDACs' effect on organizational performance. Originality/value - The conclusions on the relationship between big data analytics capabilities and organizational performance in previous research are controversial due to lack of theoretical foundation and empirical testing. This study resolves the issue by provides empirical analysis, which makes the research conclusions more scientific and credible. In addition, previous literature mainly focused on BDACs' direct impact on organizational performance without making a distinction of BDAC's three dimensions. This study contributes to the literature by thoroughly introducing the notions of BDAC's three core constituents and fully analyzing their relationships with organizational performance. What's more, empirical research on the mechanism of big data analytics' influence on organizational performance is still at a rudimentary stage. The authors address this critical gap by exploring the mediation of dual innovations in the relationship through survey-based research. The research conclusions of this paper provide new perspective for understanding the impact of big data analytics capabilities on organizational performance, and enrich the theoretical research connotation of big data analysis capabilities and dual innovation behavior.

Suggested Citation

  • Xiaofeng Su & Weipeng Zeng & Manhua Zheng & Xiaoli Jiang & Wenhe Lin & Anxin Xu, 2021. "Big data analytics capabilities and organizational performance: the mediating effect of dual innovations," European Journal of Innovation Management, Emerald Group Publishing Limited, vol. 25(4), pages 1142-1160, April.
  • Handle: RePEc:eme:ejimpp:ejim-10-2020-0431
    DOI: 10.1108/EJIM-10-2020-0431
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