2021
DOI: 10.48550/arxiv.2110.02722
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Graphon based Clustering and Testing of Networks: Algorithms and Theory

Abstract: Network-valued data are encountered in a wide range of applications, and pose challenges in learning due to their complex structure and absence of vertex correspondence. Typical examples of such problems include classification or grouping of protein structures and social networks. Various methods, ranging from graph kernels to graph neural networks, have been proposed that achieve some success in graph classification problems. However, most methods have limited theoretical justification, and their applicabilit… Show more

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