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Tag-based top-N recommendation using a pairwise topic model

机译:使用成对主题模型的基于标签的TOP-N建议书

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Tagging systems enable users to organise their online entities with distinct tags. Exploiting these user generated content and underlying bilingual information have become more and more important in recommendation system. Probabilistic topic model has been widely used in document management and social network mining. In this paper, we propose a new method to do tag-based recommendation with topic model. Some existing methods are based on mining association rules and similarity measures. In these cases, tags serve as the essential intermediates for statistical computation, but they have the drawbacks that results are sensitive to parameter setup. Even though they are popular in some real application situations, they are simply lack of scalability as the computational procedure differs over distinguished platforms. It's natural to take tags as words, from which topics can be effectively extracted by using topic model. Under the assumption of the generating process in topic model, user's topic distribution parameter implies his or her topic preference. Recommendation results are obtained according to the final probability calculated by summing over topics. Our experiments show that the proposed model is effective to do both tags and items recommendation on two sparse datasets.
机译:标记系统使用户能够以不同的标记组织其在线实体。利用这些用户生成的内容和基础双语信息在推荐系统中变得越来越重要。概率主题模型已广泛用于文档管理和社交网络挖掘。在本文中,我们提出了一种新的方法,可以使用主题模型进行基于标签的推荐。一些现有方法基于采矿协会规则和相似度措施。在这些情况下,标签用作统计计算的基本中间体,但它们具有对参数设置敏感的缺点。尽管它们在一些真正的应用程序中很受欢迎,但它们只是缺乏可扩展性,因为计算过程不同于杰出平台。将标签作为单词拍摄是自然的,可以通过使用主题模型来有效提取主题。在主题模型中的生成过程的假设下,用户的主题分发参数意味着他或她的主题偏好。推荐结果是根据通过对主题的总结计算的最终概率获得的。我们的实验表明,该模型有效地在两个稀疏数据集上进行标签和项目推荐。

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