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Document recommendation with implicit feedback based on matrix factorization and topic model

机译:基于矩阵分解和主题模型的具有隐式反馈的文档推荐

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Recommender systems have been applied in many domains to solve the information-overload problem, and most of them make recommendations based on explicit data which expressed ratings in different scores. However, there are a lot of implicit data in the real world, such as users' purchase history, click history, browsing activity and so on, and it is difficult to find users' preferences based on this kind of data. In this work, we proposed a novel recommendation method, which incorporates topic model and matrix factorization. The content of documents and similar users' preferences are used to predict the negative and positive examples. The proposed approach achieves better performance than other recommender systems with implicit feedback.
机译:推荐系统已应用于许多领域,以解决信息超载问题,其中大多数基于显式数据提出建议,这些数据以不同的分数表示评分。但是,现实世界中有很多隐式数据,例如用户的购买历史,点击历史,浏览活动等,因此很难根据此类数据找到用户的偏好。在这项工作中,我们提出了一种新颖的推荐方法,该方法结合了主题模型和矩阵分解。文档的内容和类似用户的偏好用于预测负面和正面示例。所提出的方法比具有隐式反馈的其他推荐器系统具有更好的性能。

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