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Topic based automatic news recommendation using topic model and affinity propagation

机译:基于主题的自动新闻建议使用主题模型和关联传播

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This paper presents a topic based web news rec­ommendation method combining Affinity Propaga­tion (AP) and Latent Dirichlet Allocation (LDA), which could automatically find the topics exist in the web pages and recommend the topic based news to Internet users. The topic distance is defined using LDA, which is used to generate the topic distance matrix. AP clustering is used to cluster the web page collections into different topic clusters. In order to prove the effect of combin­ing AP and LDA, we sampled web page collections with different topics and web page collections. A series of experiments are implemented in these web pages. The comparison of clustering result of AP with information distance and AP with LDA are presented. The experi­ments show that our method combining AP and LDA is effective in topic based news recommendation system.
机译:本文介绍了基于主题的Web新闻推荐方法,组合关联传播(AP)和潜在的Dirichlet分配(LDA),它可以自动查找网页中存在的主题,并将基于主题的新闻推荐给Internet用户。主题距离使用LDA定义,该LDA用于生成主题距离矩阵。 AP群集用于将网页集合集聚到不同的主题群集中。为了证明组合AP和LDA的效果,我们使用不同主题和网页集合采样网页集合。在这些网页中实施了一系列实验。提出了具有信息距离和具有LDA的AP的聚类结果的比较。实验表明,我们的方法组合AP和LDA在基于主题的新闻推荐系统中是有效的。

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