Examining Urban and Rural Information Needs through Topic Modeling: A Case of South Korea
  • Yang, Seungwon
  • Yang, Daechan
  • Son, Chaeri
  • Park, Hojin
  • Oh, Sanghee
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초록

This study explores the distinct information needs of urban and rural populations by analyzing six months of Q&A posts on Naver's Knowledge-iN in South Korea. Using Latent Dirichlet Allocation (LDA), KoBERT, and Non-negative Matrix Factorization (NMF), we compared major themes within urban and rural posts. Our findings show that both groups share interests and concerns regarding dental healthcare, transportation, education, and food. Urban posts emphasized daily life services and mobile technology, reflecting interests in convenience and connectivity. In contrast, rural posts focused on regional welfare, local spots, and family or emotional concerns, suggesting possible service gaps and unique social dynamics. Topic distributions varied across the three topic modeling methods: LDA revealed broader categories, NMF highlighted more specific segments, and KoBERT captured context-rich, nuanced themes. Overall, this comparative analysis underscores region-specific information needs and demonstrates the complementary benefits of multiple topic modeling techniques for understanding social and digital inequalities.

키워드

Information needsnaver.comSouth Koreatopic modelingurban and rural areas
제목
Examining Urban and Rural Information Needs through Topic Modeling: A Case of South Korea
저자
Yang, SeungwonYang, DaechanSon, ChaeriPark, HojinOh, Sanghee
DOI
10.1002/pra2.1360
발행일
2025
유형
Article
저널명
Proceedings of the Association for Information Science and Technology
62
1
페이지
1144 ~ 1148