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A human resources analytics and machine-learning examination of turnover: implications for theory and practice

Author

Listed:
  • Dan Avrahami
  • Dana Pessach
  • Gonen Singer
  • Hila Chalutz Ben-Gal

Abstract

Purpose - What do antecedents of turnover tell us when examined using human resources (HR) analytics and machine-learning tools, and what are the respective theoretical and practical implications? Although the turnover literature is expansive, empirical evidence on turnover antecedents studied using data science tools remains limited. Design/methodology/approach - To help reinvigorate research in this field, the authors propose a novel examination of turnover antecedents—competencies, commitment, trust and cultural values—using big data tools to develop a granular, case-dependent measure of turnover. Findings - Using archival data from 700,000 employees of a large organization collected over a period of ten years, the authors find that turnover is generally associated with varying levels of these antecedents. However, in more fine-grained analysis, their relation to turnover is contingent upon role, person and cultural background. Originality/value - The authors discuss the implications on turnover and strategic HR research and the potential of Artificial Intelligence and machine-learning methods in the design and implementation of managerial and HR planning initiatives.

Suggested Citation

  • Dan Avrahami & Dana Pessach & Gonen Singer & Hila Chalutz Ben-Gal, 2022. "A human resources analytics and machine-learning examination of turnover: implications for theory and practice," International Journal of Manpower, Emerald Group Publishing Limited, vol. 43(6), pages 1405-1424, March.
  • Handle: RePEc:eme:ijmpps:ijm-12-2020-0548
    DOI: 10.1108/IJM-12-2020-0548
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