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A semantic approach to remove incoherent items from a user profile and improve the accuracy of a recommender system

机译:一种语义方法,用于从用户个人资料中删除不一致的项目并提高推荐系统的准确性

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摘要

Recommender systems usually suggest items by exploiting all the previous interactions of the users with a system (e.g., in order to decide the movies to recommend to a user, all the movies she previously purchased are considered). This canonical approach sometimes could lead to wrong results due to several factors, such as a change in user preferences over time, or the use of her account by third parties. This kind of incoherence in the user profiles defines a lower bound on the error the recommender systems may achieve when they generate suggestions for a user, an aspect known in literature as magic barrier. This paper proposes a novel dynamic coherence-based approach to define the user profile used in the recommendation process. The main aim is to identify and remove, from the previously evaluated items, those not semantically adherent to the others, in order to make a user profile as close as possible to the user's real preferences, solving the aforementioned problems. Moreover, reshaping the user profile in such a way leads to great advantages in terms of computational complexity, since the number of items considered during the recommendation process is highly reduced. The performed experiments show the effectiveness of our approach to remove the incoherent items from a user profile, increasing the recommendation accuracy.
机译:推荐系统通常通过利用用户与系统的所有先前交互来建议项目(例如,为了确定电影推荐给用户,考虑了她先前购买的所有电影)。由于多种因素,例如用户偏好随时间的变化或第三方使用其帐户,这种规范方法有时可能导致错误的结果。用户配置文件中的这种不连贯性定义了推荐器系统在为用户生成建议时可能实现的错误的下限,这在文献中称为魔术屏障。本文提出了一种新颖的基于动态一致性的方法来定义推荐过程中使用的用户配置文件。主要目的是从先前评估的项目中识别并删除那些在语义上与其他项目无关的项目,以使用户配置文件尽可能接近用户的真实偏好,从而解决上述问题。而且,以这种方式重塑用户配置文件在计算复杂度方面带来了很大的优势,因为在推荐过程中考虑的项目数量大大减少了。进行的实验表明,我们的方法可以有效地从用户个人资料中删除不一致的项目,从而提高推荐的准确性。

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