User's Interests Navigation Model Based on Hidden Markov Model
نویسندگان
چکیده
To Find user’s frequent interest navigation patterns, we combine the information of web content and web server log, mine the web data to build a hidden markov model. In our approach, we build a hidden markov model according to page’s content and web service log firstly, and then we present a new incremental discovery algorithm Hmm_R to discover the interest navigation patterns. ...
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