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Technological transformation in HRM through knowledge and training: Innovative business decision making

Author

Listed:
  • del Val Núñez, Maria Teresa
  • de Lucas Ancillo, Antonio
  • Gavrila Gavrila, Sorin
  • Gómez Gandía, José Andrés

Abstract

Human resource management (HRM) is a crucial aspect of the global economy, and there is a wealth of literature available on various aspects of managing human resources. There is a need to take these concepts and turn them into practical applications, and organizations and academic institutions have a vital role to play. By providing training and digital tools to enhance innovation and decision making, these entities can prepare the next generation of human resources and business leaders for the challenges they may face. This is especially relevant in light of the economic impact of pandemics and other unpredictable global events, which can have long-lasting effects on the economy. To address these challenges, a study was conducted to explore the potential use of business game simulators (BGS) as a solution. The results of the study are promising, showing that BGS can enhance pandemic preparedness, increase competitiveness, and provide a more comprehensive organizational viewpoint. To explore this hypothesis, the study used specific constructs, which were subjected to empirical processing and analysis. The results indicate that simulating past pandemics through BGS can help HRM and businesses be better prepared for future crises, and the BGS learning approach can offer a more realistic, global perspective for organizations.

Suggested Citation

  • del Val Núñez, Maria Teresa & de Lucas Ancillo, Antonio & Gavrila Gavrila, Sorin & Gómez Gandía, José Andrés, 2024. "Technological transformation in HRM through knowledge and training: Innovative business decision making," Technological Forecasting and Social Change, Elsevier, vol. 200(C).
  • Handle: RePEc:eee:tefoso:v:200:y:2024:i:c:s0040162523008533
    DOI: 10.1016/j.techfore.2023.123168
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