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[2A5-GS-2-05] Analysis of Time Series Graph Data Using Graph Autoencoders
Keywords:Graph Autoencoder, Dynamic Graph
Recently, research on graph neural networks has attracted attention. In particular, graph convolution is applied to the analysis of human-to-human interaction in SNS and road traffic network to predict future interaction and traffic volume. However, these graph data are usually time-series graphs. It is difficult to apply analysis methods to static graphs. In this paper, we apply graph autoencoders to time-series graphs.
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