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Personalizing Web Page Recommendation via Collaborative Filtering and Topic-Aware Markov Model

机译:通过协作过滤和主题感知马尔可夫模型个性化网页推荐

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Web-page recommendation is to predict the next request of pages that Web users are potentially interested in when surfing the Web. This technique can guide Web users to find more useful pages without asking for them explicitly and has attracted much attention in the community of Web mining. However, few studies on Web page recommendation consider personalization, which is an indispensable feature to meet various preferences of users. In this paper, we propose a personalized Web page recommendation model called PIGEON (abbr. for PersonalIzed web paGe rEcommendatiON) via collaborative filtering and a topic-aware Markov model. We propose a graph-based iteration algorithm to discover users' interested topics, based on which user similarities are measured. To recommend topically coherent pages, we propose a topic-aware Markov model to learn users' navigation patterns which capture both temporal and topical relevance of pages. A thorough experimental evaluation conducted on a large real dataset demonstrates PIGEON's effectiveness and efficiency.
机译:推荐网页是为了预测Web用户在浏览Web时可能感兴趣的下一个页面请求。这种技术可以指导Web用户找到更多有用的页面,而无需明确要求它们,并且在Web挖掘社区中引起了很多关注。但是,关于网页推荐的研究很少考虑个性化,个性化是满足用户各种喜好必不可少的功能。在本文中,我们通过协作过滤和主题感知马尔可夫模型,提出了一种称为PIGEON(个性化Web页面推荐的缩写)的个性化Web页面推荐模型。我们提出了一种基于图的迭代算法来发现用户感兴趣的主题,并以此为基础来衡量用户的相似性。为了推荐局部一致的页面,我们提出了一个主题感知的马尔可夫模型,以学习用户的导航模式,该模式捕获页面的时间和主题相关性。在大型真实数据集上进行的全面实验评估证明了PIGEON的有效性和效率。

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