AI Governance in the Context of the EU AI Act: A Bibliometric and Literature Review Approach
- URL: http://arxiv.org/abs/2502.03468v1
- Date: Wed, 08 Jan 2025 11:01:11 GMT
- Title: AI Governance in the Context of the EU AI Act: A Bibliometric and Literature Review Approach
- Authors: Byeong-Je Kim, Seunghoo Jeong, Bong-Kyung Cho, Ji-Bum Chung,
- Abstract summary: This study analyzed the research trends in AI governance within the framework of the EU AI Act.
Our findings reveal that research on AI governance, particularly concerning AI systems regulated by the EU AI Act, remains relatively limited compared to the broader AI research landscape.
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- Abstract: The rapid advancement of artificial intelligence (AI) has brought about significant societal changes, necessitating robust AI governance frameworks. This study analyzed the research trends in AI governance within the framework of the EU AI Act. This study conducted a bibliometric analysis to examine the publications indexed in the Web of Science database. Our findings reveal that research on AI governance, particularly concerning AI systems regulated by the EU AI Act, remains relatively limited compared to the broader AI research landscape. Nonetheless, a growing interdisciplinary interest in AI governance is evident, with notable contributions from multi-disciplinary journals and open-access publications. Dominant research themes include ethical considerations, privacy concerns, and the growing impact of generative AI, such as ChatGPT. Notably, education, healthcare, and worker management are prominent application domains. Keyword network analysis highlights education, ethics, and ChatGPT as central keywords, underscoring the importance of these areas in current AI governance research. Subsequently, a comprehensive literature review was undertaken based on the bibliometric analysis findings to identify research trends, challenges, and insights within the categories of the EU AI Act. The findings provide valuable insights for researchers and policymakers, informing future research directions and contributing to developing comprehensive AI governance frameworks beyond the EU AI Act.
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