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Predicting Web User's Behavior: An Absorbing Markov Chain Approach

机译:预测Web用户的行为:吸收马尔可夫链方法

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We develop a novel predictive modeling framework for Web user behavior with web usage mining (WUM). The proposed predictive model utilizes sequence-based clustering, to group Web users into clusters with similar Web browsing behavior, and absorbing Markov chains (AMC) in order to model Web users' navigation behavior. Clustering facilitates the prediction of Web users' navigation behavior by identifying groups of Web users showing similar browsing patterns. The use of AMC allows calculation of transition probabilities and absorbing probabilities at any given time of active user sessions, and thus leads to a better Web personalization and a more effective online advertising outcome. This research will also provide a performance evaluation framework along with the proposed model and suggest a WUM system that can improve ad placement and target marketing in a website.
机译:我们使用Web使用率挖掘(WUM)开发了一种针对Web用户行为的新颖的预测建模框架。所提出的预测模型利用基于序列的聚类,将Web用户分组为具有相似Web浏览行为的聚类,并吸收马尔可夫链(AMC)以便对Web用户的导航行为进行建模。群集通过识别显示相似浏览模式的Web用户组,有助于预测Web用户的导航行为。使用AMC可以计算活动用户会话的任何给定时间的过渡概率和吸收概率,从而可以实现更好的Web个性化和更有效的在线广告结果。这项研究还将提供一个绩效评估框架以及所提出的模型,并提出一种WUM系统,该系统可以改善广告放置和网站目标营销。

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