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Measuring strategic fit using big data analytics in the automotive supply chain: a data source triangulation-based research

Anup Kumar, Santosh Kumar Shrivastav and Subhajit Bhattacharyya

International Journal of Productivity and Performance Management, 2022, vol. 72, issue 10, 2977-2999

Abstract: Purpose - This study proposes a methodology based on data source triangulation to measure the “strategic fit” for the automotive supply chain. Design/methodology/approach - At first, the authors measured the responsiveness of the Indian automobile supply chain, encompassing the top ten major automobile manufacturers, using both sentiment and conjoint analysis. Second, the authors used data envelopment analysis to identify the frontiers of their supply chain. The authors also measured the supply chain's efficiency, using the balance sheet. Further, the authors analyzed the “strategic fit” zone and discussed the results. Findings - The results indicate that both the proposed methods yield similar outcomes in terms of strategic fitment. Practical implications - The study outcomes facilitate measuring the strategic fit, thereby leveraging the resources available to align. The methodology proposed is both easy to use and practice. The methodology eases time and costs by eliminating hiring agencies to appraise the strategic fit. This valuable method to measure strategic fit can be considered feedback for strategic actions. This methodology could also be incorporated possibly as an operative measurement and control tool. Originality/value - Data triangulation meaningfully enhances the accuracy and reliability of the analyses of strategic fit. Data triangulation leads to actionable insights relevant to top managers and strategic positioning of top managers within a supply chain.

Keywords: Strategic fit; Data envelopment analysis; Automobile supply chain; Sentiment analysis; Big data (search for similar items in EconPapers)
Date: 2022
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Persistent link: https://EconPapers.repec.org/RePEc:eme:ijppmp:ijppm-11-2021-0672

DOI: 10.1108/IJPPM-11-2021-0672

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