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Improving news articles recommendations via user clustering

机译:通过用户集群改善新闻报道建议

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摘要

Although commonly only item clustering is suggested by Web mining techniques for news articles recommendation systems, one of the various tasks of personalized recommendation is categorization of Web users. With the rapid explosion of online news articles, predicting user-browsing behavior using collaborative filtering (CF) techniques has gained much attention in the web personalization area. However common CF techniques suffer from problems like low accuracy and performance. This research proposes a new personalized recommendation approach that integrates both user and text clustering based on our developed algorithm, W-kmeans, with other information retrieval (IR) techniques, like text categorization and summarization in order to provide users with the articles that match their profiles. Our system can easily adapt over time to divertive user preferences. Furthermore, experimental results show that by aggregating item and user clustering with multiple IR techniques like categorization and summarization, our recommender generates results that outperform the cases where each or both of them are used, but clustering is not applied.
机译:尽管Web挖掘技术通常只建议针对新闻报道推荐系统进行项目聚类,但是个性化推荐的各种任务之一是对Web用户进行分类。随着在线新闻的迅猛发展,使用协作过滤(CF)技术预测用户浏览行为已在Web个性化领域引起了广泛关注。然而,普通的CF技术存在诸如精度低和性能低的问题。这项研究提出了一种新的个性化推荐方法,该方法将基于我们开发的算法W-kmeans的用户和文本聚类与其他信息检索(IR)技术(例如文本分类和摘要)集成在一起,以便为用户提供与其个人资料。随着时间的流逝,我们的系统可以轻松适应各种用户偏好。此外,实验结果表明,通过使用多种IR技术(例如分类和汇总)聚合项目和用户集群,我们的推荐器所产生的结果要优于使用其中每个或两个都使用但不应用集群的情况。

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