Personality-Based Matrix Factorization for Personalization in Recommender Systems

Mazyar Ghezelji, Chitra Dadkhah, Nasim Tohidi, Alexander Gelbukh
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Abstract

—Recommender systems are one of the most used tools for knowledge discovery in databases, and they have become extremely popular in recent years. These systems have been applied in many internet-based communities and businesses to make personalized recommendations and acquire higher profits. Core entities in recommender systems are ratings given by users to items. However, there is much additional information which using it can result in better performance. The personality of each user is one of the most useful data that can help the system produce more accurate and suitable recommendations for active users. It is noteworthy that the characteristics of a person can directly affect his/her behavior. Therefore, in this paper, the personality of users is identified, and a novel mathematical and algorithmic approach is proposed in order to utilize this information for making suitable recommendations. The base model in our proposed approach is matrix factorization, which is one of the most powerful methods in model-based recommender systems. Experimental results on MovieLens dataset demonstrate the positive impact of using personality information in the matrix factorization technique, and also reveal better performance by comparing them with the state-of-the-art algorithms.
推荐系统中基于个性的个性化矩阵分解
推荐系统是数据库中最常用的知识发现工具之一,近年来变得非常流行。这些系统已经应用于许多基于互联网的社区和企业中,以提供个性化的推荐并获得更高的利润。推荐系统中的核心实体是用户对商品的评分。但是,有很多额外的信息,使用它可以带来更好的性能。每个用户的个性是最有用的数据之一,可以帮助系统为活跃用户提供更准确、更合适的推荐。值得注意的是,一个人的性格会直接影响他/她的行为。因此,本文对用户的个性进行了识别,并提出了一种新颖的数学和算法方法,以便利用这些信息进行合适的推荐。我们提出的方法的基础模型是矩阵分解,它是基于模型的推荐系统中最强大的方法之一。在MovieLens数据集上的实验结果证明了在矩阵分解技术中使用个性信息的积极影响,并且通过与最先进的算法进行比较,显示出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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