Summarizing User-Item Matrix By Group Utility Maximization

Yongjie Wang, Ke Wang, Cheng Long, C. Miao
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Abstract

A user-item matrix conveniently represents the utility measure associated with (user, item) pairs, such as citation counts, users’ rating/vote on items or locations, and clicks on items. A high utility value indicates a strong association of the pair. In this work, we consider the problem of summarizing strong associations for a large user-item matrix using a small summary size. The traditional techniques fail to distinguish user groups associated with different items, such as top-l item selection, or fail to focus on high utility, such as similarity based subspace clustering and biclustering. We define a new problem, called Group Utility Maximization, to summarize the entire user population through k groups and l items for each group; the goal is to maximize the sum of utility of selected items over all groups collectively. We propose the k-max algorithm for it, which iteratively refines existing k groups. We evaluate the proposed algorithm on two real-life datasets. The results provide an easyto-understand overview of the whole dataset efficiently.
用群体效用最大化法总结用户-物品矩阵
用户-物品矩阵方便地表示与(用户、物品)对相关的效用度量,例如引用计数、用户对物品或地点的评分/投票,以及对物品的点击。效用值越高,说明这对货币的关联越强。在这项工作中,我们考虑了使用小汇总大小总结大型用户-项目矩阵的强关联的问题。传统的技术不能区分与不同项目相关的用户组,例如top- 1项目选择,或者不能关注高实用性,例如基于相似性的子空间聚类和双聚类。我们定义了一个新的问题,称为群体效用最大化,通过k个群体和每个群体的l个项目来总结整个用户群体;目标是使所有组中所选项目的总效用最大化。我们提出了k-max算法,该算法迭代地改进了现有的k组。我们在两个真实数据集上评估了所提出的算法。结果有效地提供了整个数据集的易于理解的概述。
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