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Graph Pooling via Coarsened Graph Infomax

Yunsheng Pang, Yunxiang Zhao, Dongsheng Li

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Abstract

Graph pooling that summaries the information in a large graph into a compact form is essential in hierarchical graph representation learning. Existing graph pooling methods either suffer from high computational complexity or cannot capture the global dependencies between graphs before and after pooling. To address the problems of existing graph pooling methods, we propose Coarsened Grap hInfomaxPooling (CGIPool) that maximizes the mutual information between the input and the coarsened graph of each pooling layer to preserve graph-level dependencies. To achieve mutual information neural maximization, we apply contrastive learning and propose a self-attention-based algorithm for learning positive and negative samples. Extensive experimental results on seven datasets illustrate the superiority of CGIPool comparing to the state-of-the-art

Topics & Concepts

PoolingInfomaxComputer scienceGraphTheoretical computer scienceMutual informationArtificial intelligenceComputer networkBlind signal separationChannel (broadcasting)Advanced Graph Neural NetworksRecommender Systems and TechniquesData Quality and Management
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