Relationship Between Artificial Intellegence and Leadership in Decision Making: A Bibliometric Analysis
DOI:
https://doi.org/10.30588/jmp.v15i1.2110Keywords:
Artificial Intelligence, AI, Strategic Decision-Making, Ethic, LeadershipAbstract
This study investigates the relationship between artificial intelligence (AI) and leadership in decision-making within the context of a rapidly evolving digital landscape. The integration of AI in leadership is a timely topic due to its transformative potential. This research examines the impact of AI on leadership and decision-making processes. Despite growing interest, limited research explores AI's implications for leadership using bibliometric approaches, particularly regarding ethical and social dimensions. A bibliometric analysis was performed on publications from 1982 to 2025, concentrating on countries with advanced technological infrastructure. Visualization tools such as VOSviewer are used to identify trends, key themes, and collaborative networks. The findings highlight significant contributions from the U.S., China, and the EU, with research emphasizing AI-driven decision-making, leadership styles, and predictive analytics. AI fosters collaborative, data-driven leadership, though gaps remain in understanding ethical challenges. AI significantly enhances leadership decision-making by enabling data-informed strategies and adaptive styles. Organizations must address ethical concerns and provide training to maximize AI's potential while ensuring responsible implementation.
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