The document summarizes a presentation on machine learning methods for graph data and recent trends. It introduces graph data and common graph neural network (GNN) approaches, including Recurrent GNNs, Convolutional GNNs, Graph Autoencoders, Graph Adversarial Methods, and Spatial-Temporal GNNs. It then discusses the GNNExplainer method for explaining GNN predictions and concludes with an overview
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