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Learning Dual Preferences with Non-negative Matrix Tri-Factorization for Top-iV Recommender System

机译:使用Top-iV推荐系统的非负矩阵三因子学习双重偏好

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摘要

In recommender systems, personal characteristic is possessed by not only users but also displaying products. Users have their personal rating patterns while products have different characteristics that attract users. This information can be explicitly exploited from the review text. However, most existing methods only model the review text as a topic preference of products, without considering the perspectives of users and products simultaneously. In this paper, we propose a user-product topic model to capture both user preferences and attractive characteristics of products. Different from conventional collaborative filtering in conjunction with topic models, we use non-negative matrix tri-factorization to jointly reveal the characteristic of users and products. Experiments on two real-world data sets validate the effectiveness of our method in Top-N recommendations.
机译:在推荐系统中,个人特征不仅由用户拥有,而且还具有展示产品的能力。用户拥有自己的个人评分模式,而产品具有吸引用户的不同特征。可以从评论文本中明确利用此信息。但是,大多数现有方法仅将评论文本建模为产品的主题偏好,而没有同时考虑用户和产品的观点。在本文中,我们提出了一个用户产品主题模型,以捕获用户的喜好和产品的吸引力特征。与结合主题模型的常规协作过滤不同,我们使用非负矩阵三因子分解来共同揭示用户和产品的特征。在两个真实世界的数据集上进行的实验验证了我们的方法在Top-N建议中的有效性。

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