Kernel-based Approaches for Collaborative Filtering

Zhonghang Xia, Wenke Zhang, Manghui Tu, I. Yen
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引用次数: 1

Abstract

In a large-scale collaborative filtering system, pair wise similarity between users is usually measured by users' ratings on the whole set of items. However, this measurement may not be well defined due to the sparsity problem, i.e., the lack of adequate ratings on items for calculating accurate predictions. In fact, most correlated users have similar ratings only on a subset of items. In this paper, we consider a kernel-based classification approach for collaborative filtering and propose several kernel matrix construction methods by using biclusters to capture pair wise similarity between users. In order to characterize accurate correlation among users, we embed both local information and global information into the similarity matrix. However, this similarity matrix may not be a kernel matrix. Our solution is to approximate it with the matrix close to it and use low rank constraints to control the complexity of the matrix.
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基于核的协同过滤方法
在大规模协同过滤系统中,用户之间的配对相似度通常通过用户对整个项目集的评分来衡量。然而,由于稀疏性问题,这种度量可能不能很好地定义,即,缺乏对计算准确预测的项目的适当评级。事实上,大多数相关用户只对一小部分商品有相似的评分。在本文中,我们考虑了一种基于核的协同过滤分类方法,并提出了几种基于双聚类的核矩阵构建方法来捕获用户之间的对相似度。为了准确表征用户之间的相关性,我们将局部信息和全局信息嵌入到相似矩阵中。然而,这个相似矩阵可能不是核矩阵。我们的解决方法是用它附近的矩阵来近似它,并使用低秩约束来控制矩阵的复杂度。
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