上下文感知协同过滤推荐系统的矩阵分解技术综述

M. H. Abdi, G. Okeyo, R. Mwangi
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引用次数: 47

摘要

协同过滤推荐系统通过学习过去的用户-物品关系来预测用户对在线信息、产品或服务的偏好。协作过滤的主要方法是基于邻域的,其中用户-项目偏好评级是从相似项目和/或用户的评级中计算出来的。随着可访问信息的数量和活跃用户的不断增长,这种方法会遇到数据稀疏性和可伸缩性的限制,从而导致性能下降、推荐质量差和预测不准确。尽管存在这些缺点,信息过载的问题还是引起了人们对个性化技术的极大兴趣。上下文信息与矩阵和张量分解技术的结合已被证明是解决这些挑战的一个有希望的解决方案。我们对使用矩阵分解方法的上下文感知推荐系统领域的文献进行了重点回顾。这篇调查论文详细介绍了上下文感知推荐系统的文献综述,以及提高大规模数据集性能的方法,以及整合上下文信息对推荐质量和准确性的影响。本调查的结果可作为改进和优化现有基于上下文感知协同过滤的推荐系统的基本参考。本文的主要贡献是综述了用于上下文感知协同过滤推荐系统的矩阵分解技术。
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Matrix Factorization Techniques for Context-Aware Collaborative Filtering Recommender Systems: A Survey
Collaborative Filtering Recommender Systems predict user preferences for online information, products or services by learning from past user-item relationships. A predominant approach to Collaborative Filtering is Neighborhood-based, where a user-item preference rating is computed from ratings of similar items and/or users. This approach encounters data sparsity and scalability limitations as the volume of accessible information and the active users continue to grow leading to performance degradation, poor quality recommendations and inaccurate predictions. Despite these drawbacks, the problem of information overload has led to great interests in personalization techniques. The incorporation of context information and Matrix and Tensor Factorization techniques have proved to be a promising solution to some of these challenges. We conducted a focused review of literature in the areas of Context-aware Recommender Systems utilizing Matrix Factorization approaches. This survey paper presents a detailed literature review of Context-aware Recommender Systems and approaches to improving performance for large scale datasets and the impact of incorporating contextual information on the quality and accuracy of the recommendation. The results of this survey can be used as a basic reference for improving and optimizing existing Context-aware Collaborative Filtering based Recommender Systems. The main contribution of this paper is a survey of Matrix Factorization techniques for Context-aware Collaborative Filtering Recommender Systems.
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