Collaborative Filtering (CF), the most common approach to build Recommender Systems, became pervasive in our daily lives as consumers of products and services. However, challenges limit the effectiveness of Collaborative Filtering approaches when dealing with recommendation data, mainly due to the diversity and locality of user preferences, structural sparsity of user-item ratings, subjectivity of rating scales, and increasingly high item dimensionality and user bases. To answer some of these challenges, some authors proposed successful approaches combining CF with Biclustering techniques. This work assesses the effectiveness of Biclustering approaches for CF, comparing the impact of algorithmic choices, and identifies principles for superior Biclustering-based CF. As a result, we propose USBFC, a Biclustering-based CF approach that creates user-specific models from strongly coherent and statistically significant rating patterns, corresponding to subspaces of shared preferences across users. Evaluation on real-world data reveals that USBCF achieves competitive predictive accuracy against state-of-the-art CF methods. Moreover, USBFC successfully suppresses the main shortcomings of the previously proposed state-of-the-art biclustering-based CF by increasing coverage, and coclustering-based CF by strengthening subspace homogeneity.
翻译:合作过滤(CF)是建立建议者系统的最常用的方法,在作为产品和服务消费者的日常生活中,这种合作过滤(CF)变得普遍,但在处理建议数据时,挑战限制了合作过滤(CF)办法的效力,主要原因是用户偏好的多样性和地点、用户项目评级结构的分散性、评级尺度的主观性、以及日益高的物品多样性和用户基础。为了应对其中一些挑战,一些作者提议将CF(CF)与双集群技术相结合的成功方法提出结合(CF)的成功方法。这项工作评估了CFB(BIC)双集群方法的有效性,比较了算法选择的影响,并确定了基于双集群的优势CFC原则。结果,我们建议美国BFC(BC)(基于双集群的BCF)方法,即双集群(BICF)方法,根据用户共同偏好、基于双集群的CFC(B)方法,通过扩大基于以CO(CO)的覆盖范围和共同的CFCFC(CO),成功地抑制了先前提议的州级组合方法的主要缺陷。