2022
DOI: 10.3390/e24091228
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Generic Structure Extraction with Bi-Level Optimization for Graph Structure Learning

Abstract: Currently, most Graph Structure Learning (GSL) methods, as a means of learning graph structure, improve the robustness of GNN merely from a local view by considering the local information related to each edge and indiscriminately applying the mechanism across edges, which may suffer from the local structure heterogeneity of the graph (i.e., the uneven distribution of inter-class connections over nodes). To overcome the drawbacks, we extract the graph structure as a learnable parameter and jointly learn the str… Show more

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Cited by 3 publications
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