Authors
Xuehua Shen, Bin Tan, ChengXiang Zhai
Publication date
2005/10/31
Book
Proceedings of the 14th ACM international conference on Information and knowledge management
Pages
824-831
Description
Information retrieval systems (e.g., web search engines) are critical for overcoming information overload. A major deficiency of existing retrieval systems is that they generally lack user modeling and are not adaptive to individual users, resulting in inherently non-optimal retrieval performance. For example, a tourist and a programmer may use the same word "java" to search for different information, but the current search systems would return the same results. In this paper, we study how to infer a user's interest from the user's search context and use the inferred implicit user model for personalized search. We present a decision theoretic framework and develop techniques for implicit user modeling in information retrieval. We develop an intelligent client-side web search agent (UCAIR) that can perform eager implicit feedback, e.g., query expansion based on previous queries and immediate result reranking based on …
Total citations
2005200620072008200920102011201220132014201520162017201820192020202120222023202431527315243563843519363423518202110149
Scholar articles
X Shen, B Tan, CX Zhai - Proceedings of the 14th ACM international conference …, 2005