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Effect of Executives’ Vigilant Managerial Cognition on Enterprise Resilience: A Natural Language Processing and Machine Learning Analysis

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  • Zhao, Chen
  • Lin, Chen
  • Liu, Yonghong
  • Gao, Zhonghua

Abstract

Resilient enterprises thrive under adverse conditions given their preparedness for crises. This study proposes that executives’ vigilant managerial cognition is essential for enhancing enterprise resilience. To measure this cognition, the study developed a textual index using machine learning methods and analyzed a sample of Chinese enterprises to assess the impact of executives’ vigilant managerial cognition on enterprise resilience. The findings indicate that this cognition is positively related to enterprise resilience, where the relationship is stronger in enterprises with robust internal controls. The primary contribution of this study is the conceptualization of vigilant managerial cognition and its established positive relationship with enterprise resilience. Furthermore, by introducing a novel quantitative measure of managerial cognition through textual analysis and machine learning, the study paves the way for future research on managerial cognition within firms.

Suggested Citation

  • Zhao, Chen & Lin, Chen & Liu, Yonghong & Gao, Zhonghua, 2025. "Effect of Executives’ Vigilant Managerial Cognition on Enterprise Resilience: A Natural Language Processing and Machine Learning Analysis," Management and Organization Review, Cambridge University Press, vol. 21(1), pages 102-130, February.
  • Handle: RePEc:cup:maorev:v:21:y:2025:i:1:p:102-130_6
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