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Recommending items to group of users using Matrix Factorization based Collaborative Filtering

机译:使用基于矩阵分解的协作过滤将项目推荐给用户组

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摘要

Group recommender systems are becoming very popular in the social web owing to their ability to provide a set of recommendations to a group of users. Several group recommender systems have been proposed by extending traditional KNN based Collaborative Filtering. In this paper we explain how to perform group recommendations using Matrix Factorization (MF) based Collaborative Filtering (CF). We propose three original approaches to map the group of users to the latent factor space and compare the proposed methods in three different scenarios: when the group size is small, medium and large. We also compare the precision of the proposed methods with state-of-the-art group recommendation systems using KNN based Collaborative Filtering. We analyze group movie ratings on MovieLens and Netflix datasets. Our study demonstrates that the performance of group recommender systems varies depending on the size of the group, and MF based CF is the best option for group recommender systems. (C) 2016 Elsevier Inc. All rights reserved.
机译:组推荐器系统由于能够向一组用户提供一组推荐而在社交网络中变得非常流行。通过扩展传统的基于KNN的协作过滤,已经提出了几个小组推荐系统。在本文中,我们解释了如何使用基于矩阵分解(MF)的协作过滤(CF)执行小组推荐。我们提出了三种原始方法来将用户组映射到潜在因子空间,并在三种不同的情况下(当组大小为小,中和大时)比较所提出的方法。我们还使用基于KNN的协同过滤将建议的方法的精度与最新的组推荐系统进行比较。我们分析MovieLens和Netflix数据集上的组电影评分。我们的研究表明,小组推荐系统的性能取决于小组的规模,基于MF的CF是小组推荐系统的最佳选择。 (C)2016 Elsevier Inc.保留所有权利。

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