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Feature-Weighted User Model for Recommender Systems

机译:推荐系统的功能加权用户模型

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摘要

Recommender systems are gaining widespread acceptance in e-commerce applications to confront the "information overload" problem. Collaborative Filtering (CF) is a successful recommendation technique, which is based on past ratings of users with similar preferences. In contrast, Content-Based filtering (CB) assumes that each user operates independently. As a result, it exploits only information derived from document or item features. Both approaches have been extensively combined to improve the recommendation procedure. Most of these systems are hybrid: they run CF on the results of CB and vice versa. CF exploits information from the users and their ratings. CB exploits information from items and their features. In this paper, we construct a feature-weighted user profile to disclose the duality between users and features. Exploiting the correlation between users and features we reveal the real reasons of their rating behavior. We perform experimental comparison of the proposed method against the well-known CF, CB and a hybrid algorithm with a real data set. Our results show significant improvements, in terms of effectiveness.
机译:推荐系统正在电子商务应用中获得广泛接受,以应对“信息超载”问题。协作过滤(CF)是一种成功的推荐技术,它基于具有类似偏好的用户的过去评分。相反,基于内容的过滤(CB)假定每个用户独立运行。结果,它仅利用源自文档或项目特征的信息。两种方法已被广泛组合以改进推荐程序。这些系统大多数是混合系统:它们基于CB的结果运行CF,反之亦然。 CF利用来自用户及其评级的信息。 CB利用项目及其特征中的信息。在本文中,我们构建了一个功能加权的用户配置文件,以揭示用户和功能之间的对偶。利用用户和功能之间的相关性,我们揭示了其评分行为的真正原因。我们对著名的CF,CB和带有真实数据集的混合算法进行实验比较。我们的结果显示出有效性方面的显着改善。

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