图的高阶学习

Sameer Agarwal, K. Branson, Serge J. Belongie
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引用次数: 375

摘要

最近,人们对在无监督和半监督环境中学习高阶关系(即三向或更高)产生了相当大的兴趣。超图和张量被认为是表示这些关系的自然方式,而它们对应的代数被认为是操作这些关系的自然工具。在本文中,我们论证了超图不是高阶关系的自然表示,事实上,对和高阶关系都可以用图来处理。我们证明了超图上的半监督和无监督学习问题的各种表述会导致相同的图论问题,并且可以使用现有的工具进行分析。
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Higher order learning with graphs
Recently there has been considerable interest in learning with higher order relations (i.e., three-way or higher) in the unsupervised and semi-supervised settings. Hypergraphs and tensors have been proposed as the natural way of representing these relations and their corresponding algebra as the natural tools for operating on them. In this paper we argue that hypergraphs are not a natural representation for higher order relations, indeed pairwise as well as higher order relations can be handled using graphs. We show that various formulations of the semi-supervised and the unsupervised learning problem on hypergraphs result in the same graph theoretic problem and can be analyzed using existing tools.
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