Artificial Intelligence in Top Management : A Bibliometric Performance Analysis
Mots-clés:
Artificial Intelligence, Top Management, Bibliometric Analysis, PRISMARésumé
Context: This study examines the integration of Artificial Intelligence (AI) into top management (TM) decision-making, emphasizing its potential to improve strategic planning, operational efficiency, and competitive dynamics.
Objective: The research traces the historical evolution of AI in TM literature, identifies key institutions, authors, and funding bodies driving innovation, and highlights interdisciplinary connections and unresolved challenges.
Method: Using a PRISMA-guided bibliometric analysis of 171 peer-reviewed articles from Scopus, the study identifies three growth phases: minimal activity (1984–2003), gradual adoption (2004–2015), and exponential growth (2016–2024).
Results and Discussion: The Chinese Academy of Sciences, West Virginia University, and scholars such as Mohaghegh and Al-Sartawi are key contributors. The U.S. and China lead, driven by corporate investments and national AI strategies. Thematic analysis reveals three core clusters: AI-driven decision support systems, strategic automation, and ethical/regulatory challenges.
Conclusion: AI enhances managerial efficiency but introduces complexities, including algorithmic bias and human-AI trust gaps. Limitations include database biases and a lack of longitudinal studies on AI’s organizational impact. The study recommends interdisciplinary collaboration, ethical AI frameworks for executive roles, and empirical validation of AI’s long-term strategic value.
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Copyright (c) 2025 Youssef Er-Rays, Ismail El Mir, Hamid Ait-Lemqeddem, Badreddine El Moutaqi, Mustapha Ezzahir

Ce travail est disponible sous licence Creative Commons Attribution - Pas d’Utilisation Commerciale 4.0 International.


















