协同推荐任务图核的实验研究

François Fouss, Luh Yen, A. Pirotte, M. Saerens
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引用次数: 129

摘要

本文系统地比较了图上的7个核(或相似矩阵),即指数扩散核、拉普拉斯扩散核、冯·诺伊曼核、正则拉普拉斯核、通勤时间核,最后是马尔可夫扩散核和交叉熵扩散矩阵——两者都在本文中介绍——在涉及数据库的协同推荐任务上。数据库被视为一个图,其中元素表示为节点,关系表示为节点之间的链接。从这个图中,计算了七个核,导致节点之间的一组有意义的接近度量,允许回答有关正在研究的图结构的问题;特别是向用户推荐项目。交叉验证结果表明,基于正则拉普拉斯算子、马尔可夫扩散和通勤时间核提供的相似性度量的简单近邻规则效果最好。因此,我们建议使用通勤时间核来计算数据库元素之间的相似性,原因有两个:(1)它在随机漫步方面有一个很好的吸引人的解释,(2)不需要调整参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Experimental Investigation of Graph Kernels on a Collaborative Recommendation Task
This work presents a systematic comparison between seven kernels (or similarity matrices) on a graph, namely the exponential diffusion kernel, the Laplacian diffusion kernel, the von Neumann kernel, the regularized Laplacian kernel, the commute time kernel, and finally the Markov diffusion kernel and the cross-entropy diffusion matrix - both introduced in this paper - on a collaborative recommendation task involving a database. The database is viewed as a graph where elements are represented as nodes and relations as links between nodes. From this graph, seven kernels are computed, leading to a set of meaningful proximity measures between nodes, allowing to answer questions about the structure of the graph under investigation; in particular, recommend items to users. Cross- validation results indicate that a simple nearest-neighbours rule based on the similarity measure provided by the regularized Laplacian, the Markov diffusion and the commute time kernels performs best. We therefore recommend the use of the commute time kernel for computing similarities between elements of a database, for two reasons: (1) it has a nice appealing interpretation in terms of random walks and (2) no parameter needs to be adjusted.
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