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Personalized Topic map Ranking Algorithm using the User Profile  

Park, Jung-Woo (국방대학교 전산정보학과)
Lee, Sang-Hoon (국방대학교 전산정보학과)
Abstract
Topic map typically provide information to user through the selection of topics, that is using only topic, association, occurrence on the first topicmap which is made by domain expert without regard to individual interests or context, for the purpose of supplementation for the weakness which is providing personalized topic map information, personalization has been studied for supporting user preference through preseting of customize, filtering, scope, etc in topic map. Nevertheless, personalization in current topicmap is not enough to user so far. In this paper, we propose a design of PTRS(personalized topicmap ranking system) & algorithm, using both user profile(click through data) and basic element of topic map(topic, association) on knowledge layer in specific domain topicmap, therefore User has strong point that is improvement of personal facilities to user through representation of ranked topicmap information in consideration of user preference using PTRS.
Keywords
Topicmap; Personalization; User Preference; Topic-Association;
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