2019
DOI: 10.48550/arxiv.1910.02548
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Rethinking Kernel Methods for Node Representation Learning on Graphs

Yu Tian,
Long Zhao,
Xi Peng
et al.

Abstract: Graph kernels are kernel methods measuring graph similarity and serve as a standard tool for graph classification. However, the use of kernel methods for node classification, which is a related problem to graph representation learning, is still ill-posed and the state-of-the-art methods are heavily based on heuristics. Here, we present a novel theoretical kernel-based framework for node classification that can bridge the gap between these two representation learning problems on graphs. Our approach is motivate… Show more

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