This paper utilizes click stream data to analyze a user’s click behavior, which both considers the navigation behavior and the content of the page a user has clicked, and imports the weights of the operation behaviors to the page and the weights of feature items, then it proposes an approach of the generation of user current interest view based on click stream data.
易明,饶洋辉 . 基于点击流数据的用户近期兴趣视图生成方法[J]. 现代图书情报技术, 2006, 1(6): 55-58.
Yi Ming,Rao Yanghui . An Approach of the Generation of User Current Interest View Based on Click Stream Data. New Technology of Library and Information Service, 2006, 1(6): 55-58.
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