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Web usage prediction and recommendation using web session clustering

机译:使用Web会话聚类的Web使用率预测和推荐

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In recent years, a strong interest has been given to web usage prediction and recommendation methods to improve e-commerce, search engines and other online applications. There have been various efforts carried out in this field, particularly focused on using recordings of web user interactions with websites. In this context, our research focuses on developing a novel approach for web prediction and recommendation. The proposed method relies on hierarchical session clustering by sequence similarity measure and takes advantage of access activity time and access position in prediction session to make a recommendation. The performed experiments reveal that hierarchical parameter and prediction accuracy are relevant. In addition, the paper introduces cost estimation to adapt web visitor behavior to web business purposes using prediction ansd recommendation results.
机译:近年来,人们对Web使用量预测和推荐方法产生了浓厚的兴趣,以改进电子商务,搜索引擎和其他在线应用程序。在该领域中已经进行了各种努力,特别是集中在使用网络用户与网站交互的记录上。在这种情况下,我们的研究重点是开发一种用于Web预测和推荐的新颖方法。所提出的方法依靠序列相似度度量的分层会话聚类,并利用访问活动时间和预测会话中的访问位置来进行推荐。所进行的实验表明,分层参数和预测精度是相关的。另外,本文介绍了使用预测和推荐结果来使Web访问者行为适应Web商业目的的成本估算。

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