2021
DOI: 10.48550/arxiv.2110.07570
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MGC: A Complex-Valued Graph Convolutional Network for Directed Graphs

Abstract: Recent advancements in Graph Neural Networks have led to state-of-the-art performance on representation learning of graphs for node classification. However, the majority of existing works process directed graphs by symmetrization, which may cause loss of directional information. In this paper, we propose the magnetic Laplacian that preserves edge directionality by encoding it into complex phase as a deformation of the combinatorial Laplacian. In addition, we design an Auto-Regressive Moving-Average (ARMA) filt… Show more

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