More about HKUST
CONCEPT-BASED PERSONALIZED WEB SEARCH
PhD Thesis Proposal Defence Title: "CONCEPT-BASED PERSONALIZED WEB SEARCH" by Mr. Kenneth Wai-Ting Leung Abstract: Personalized search is an important means to improve the retrieval effectiveness of a search engine. Most commercial search engines return the same set of results to all users who ask the same query. However, different users may have different preferences on the result set. In this proposal, we present an effective method to mine a user's conceptual preferences from search engine clickthrough data, and adjust the search result ranking according to the extracted preferences to improve the retrieval effectiveness for the user. Our approach employs an Ontology-based User Profile (OUP) that represents a user profile as an ontology. We then derive an extended set of conceptual preferences based on the ontology and the user's clickthroughs. The user profile is input to a Support Vector Machine (SVM) to learn a concept preference vector for adapting a personalized ranking function to re-rank the search results. Our initial results show that the top-10 precision achieved by OUP is almost three times higher compared to the method without employing personalization at all, and about 60% better than that of the hierarchical user profile proposed by Xu et al. Moreover, our method can significantly improve the users' average clicked ranks by about 65% compared to other methods that do not employ concept ontology. Based on these results, we will further extend our research in the areas of community-based personalization and location-based personalization. Date: Thursday, 10 December 2009 Time: 2:00pm - 4:00pm Venue: Room 1504 lifts 25/26 Committee Members: Prof. Dik-Lun Lee (Supervisor) Dr. Wilfred Ng (Supervisor) Dr. Raymond Wong (Chairperson) Dr. Lei Chen Dr. Qiong Luo **** ALL are Welcome ****