在线报纸日志数据的贝叶斯分析

H. Wettig, Jussi Lahtinen, T. Lepola, P. Myllymäki, H. Tirri
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引用次数: 14

摘要

在本文中,我们解决了分析一个典型的在线报纸网站的Web日志数据的问题。我们提出了一种基于概率论的双向聚类技术。一方面,建议的方法将在线报纸的读者聚类到具有相似浏览行为的用户组中,其中聚类仅根据收集的点击流来确定。另一方面,根据用户的阅读行为对报纸文章进行聚类。双向聚类产生统计用户和页面配置文件,领域专家可以对其进行分析,以便进行内容个性化。此外,生成的模型还可以用于在线预测,以便给定进入网站的人的用户群,以及报纸文章的页面群,可以推断用户是否会查看相关页面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian analysis of online newspaper log data
In this paper we address the problem of analyzing Web log data collected at a typical online newspaper site. We propose a two-way clustering technique based on probability theory. On one hand the suggested method clusters the readers of the online newspaper into user groups of similar browsing behaviour where the clusters are determined solely based on the click streams collected. On the other hand, the articles of the newspaper are clustered based on the reading behaviour of the users. The two-way clustering produces statistical user and page profiles that can be analyzed by domain experts for content personalization. In addition, the produced model can also be used for on-line prediction so that given the user cluster of a person entering the site, and the page cluster of an article of a newspaper one can infer whether or not the user will have a look at the page in question.
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