2020
DOI: 10.48550/arxiv.2012.05980
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CommPOOL: An Interpretable Graph Pooling Framework for Hierarchical Graph Representation Learning

Abstract: Recent years have witnessed the emergence and flourishing of hierarchical graph pooling neural networks (HGPNNs) which are effective graph representation learning approaches for graph level tasks such as graph classification. However, current HGPNNs do not take full advantage of the graph's intrinsic structures (e.g., community structure). Moreover, the pooling operations in existing HGPNNs are difficult to be interpreted. In this paper, we propose a new interpretable graph pooling framework -CommPOOL, that ca… Show more

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