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Collaborative filtering by sequential user-item co-cluster extraction from rectangular relational data

机译:通过从矩形关系数据中顺序进行用户项共聚类提取来进行协同过滤

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摘要

Collaborative filtering is a basic technique for tackling information overloads and is composed of task of relating a promising item to an active user. In this paper, a new approach to user-item co-cluster extraction from rectangular relational data is proposed based on the structural balancing concept, and the clustering method is applied to collaborative filtering tasks. In the process, user-item rectangular relational matrix given in an alternative process of 'liking or not' is first transformed into a square adjacency matrix and then co-clusters are sequentially extracted by using a weighted aggregation criterion. In a numerical experiment, the proposed collaborative filtering model is applied to a purchase history data set in order to demonstrate the recommendation ability of the model.
机译:协作过滤是解决信息过载的基本技术,它由将有前途的项目与活跃用户相关联的任务组成。本文基于结构平衡的概念,提出了一种从矩形关系数据中提取用户项目共聚的新方法,并将聚类方法应用于协同过滤任务。在此过程中,首先将在“喜欢或不喜欢”的替代过程中给出的用户项目矩形关系矩阵转换为方形邻接矩阵,然后使用加权聚合准则顺序提取共聚簇。在数值实验中,将提出的协作过滤模型应用于购买历史数据集,以证明该模型的推荐能力。

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