科技报告详细信息
Tracking Multiple Topics for Finding Interesting Articles
Pon, R K ; Cardenas, A F ; Buttler, D J ; Critchlow, T J
Lawrence Livermore National Laboratory
关键词: Feedback;    Classification;    99 General And Miscellaneous//Mathematics, Computing, And Information Science;    Detection;    Performance;   
DOI  :  10.2172/924191
RP-ID  :  LLNL-TR-400267
RP-ID  :  W-7405-ENG-48
RP-ID  :  924191
美国|英语
来源: UNT Digital Library
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【 摘 要 】

We introduce multiple topic tracking (MTT) for iScore to better recommend news articles for users with multiple interests and to address changes in user interests over time. As an extension of the basic Rocchio algorithm, traditional topic detection and tracking, and single-pass clustering, MTT maintains multiple interest profiles to identify interesting articles for a specific user given user-feedback. Focusing on only interesting topics enables iScore to discard useless profiles to address changes in user interests and to achieve a balance between resource consumption and classification accuracy. iScore is able to achieve higher quality results than traditional methods such as the Rocchio algorithm. We identify several operating parameters that work well for MTT. Using the same parameters, we show that MTT alone yields high quality results for recommending interesting articles from several corpora. The inclusion of MTT improves iScore's performance by 25% in recommending news articles from the Yahoo! News RSS feeds and the TREC11 adaptive filter article collection. And through a small user study, we show that iScore can still perform well when only provided with little user feedback.

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