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Mining user access patterns based on Web logs

机译:根据Web日志挖掘用户访问模式

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In this paper, different from usual order, not directly use the maximal forward reference path to mine sequence patterns but use DBSCAN algorithm to cluster the Web pages that have been accessed by users. Then, decide the Web page class that each page belongs to based on heuristic rules. Next, cluster the users who have the same interest in one or some kinds of Web pages. One user can belong to several classes, because the user may be interested in different types of Web pages. Finally, based on theory of sequence patterns mining, mine out user access patterns in each class by GSP algorithm. The benefit of using cluster methods is to find out layers' or classes' relationships from data even without any layer information of data. In this way, the user access patterns can be found more precisely
机译:在本文中,与通常的顺序不同,不是直接使用最大前向参考路径来挖掘序列模式,而是使用DBSCAN算法对用户已访问的网页进行聚类。然后,根据启发式规则确定每个页面所属的Web页面类。接下来,将对一个或某些网页具有相同兴趣的用户聚集在一起。一个用户可以属于几个类别,因为该用户可能对不同类型的网页感兴趣。最后,基于序列模式挖掘理论,利用GSP算法挖掘出每个类中的用户访问模式。使用群集方法的好处是即使没有数据的任何层信息,也可以从数据中找出层或类的关系。这样,可以更精确地找到用户访问模式

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