International Journal of Advanced Natural Sciences and Engineering Researches, cilt.8, sa.11, ss.445-464, 2024 (Hakemli Dergi)
This study aims to investigate the emerging trends and research patterns surrounding generative AI in computer programming education through bibliometric analysis. It seeks to identify descriptive characteristics of existing literature, influential research contributions, core terms, and future research directions. A bibliometric analysis was conducted using data from the Scopus database, focusing on publications related to generative AI in programming education. The analysis employed techniques such as citation analysis, co-author analysis, and keyword co-occurrence, utilizing R Studio and VOSviewer for data visualization. The analysis revealed 48 publications, predominantly research articles, with a significant increase in output during 2023-2024. Key journals identified include Applied Sciences and Computers and Education: Artificial Intelligence. Influential authors and countries were highlighted, with China and the USA leading in scientific production. Core terms included "programming education," "artificial intelligence," and "ChatGPT." The thematic map analysis identified motor themes such as "Programming" and "AI in Education," alongside emerging themes like "computational thinking," indicating areas requiring further exploration. This study contributes to the understanding of generative AI's role in programming education by mapping existing research and identifying gaps. The findings from this bibliometric analysis provide a basis for directing future research and cultivating a thorough understanding of how generative AI is shaping the future of computer programming education