Publication | Open Access
RetGK: Graph Kernels based on Return Probabilities of Random Walks
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2018
Year
EngineeringNetwork AnalysisLink PredictionGraph ProcessingRandom GraphData ScienceData MiningPattern RecognitionProbabilistic Graph TheorySocial Network AnalysisKnowledge DiscoveryProbability TheoryComputer ScienceGraph KernelsNetwork ScienceGraph TheoryReproducing Kernel MethodMarkov KernelBusinessGraph-structured Data AriseReturn ProbabilitiesGraph AnalysisGraph Neural Network
Graph-structured data arise in wide applications, such as computer vision, bioinformatics, and social networks. Quantifying similarities among graphs is a fundamental problem. In this paper, we develop a framework for computing graph kernels, based on return probabilities of random walks. The advantages of our proposed kernels are that they can effectively exploit various node attributes, while being scalable to large datasets. We conduct extensive graph classification experiments to evaluate our graph kernels. The experimental results show that our graph kernels significantly outperform existing state-of-the-art approaches in both accuracy and computational efficiency.