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Towards Explaining Latent Factors with Topic Models in Collaborative Recommender Systems

机译:借助协作推荐系统中的主题模型来解释潜在因素

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Latent factor models have been proved to be the state of the art for the Collaborative Filtering approach in a Recommender System. However, latent factors obtained with mathematical methods applied to the user-item matrix can be hardly interpreted by humans. In this paper we exploit Topic Models applied to textual data associated with items to find explanations for latent factors. Based on the Movie Lens dataset and textual data about movies collected from Freebase we run a user study with over hundred participants to develop a reference dataset for evaluating different strategies towards more interpretable and portable latent factor models.
机译:潜在因素模型已被证明是推荐系统中协同过滤方法的最新技术。但是,人类很难解释用数学方法应用于用户项矩阵获得的潜在因素。在本文中,我们利用主题模型应用到与项目关联的文本数据中,以找到潜在因素的解释。基于电影镜头数据集和有关从Freebase收集的电影的文本数据,我们对数百名参与者进行了一项用户研究,以开发参考数据集,以评估针对更可解释和可移植的潜在因素模型的不同策略。

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