K-plex cover pooling for graph neural networks
作者:Davide Bacciu, Alessio Conte, Roberto Grossi, Francesco Landolfi, Andrea Marino
摘要
Graph pooling methods provide mechanisms for structure reduction that are intended to ease the diffusion of context between nodes further in the graph, and that typically leverage community discovery mechanisms or node and edge pruning heuristics. In this paper, we introduce a novel pooling technique which borrows from classical results in graph theory that is non-parametric and generalizes well to graphs of different nature and connectivity patterns. Our pooling method, named KPlexPool, builds on the concepts of graph covers and k-plexes, i.e. pseudo-cliques where each node can miss up to k links. The experimental evaluation on benchmarks on molecular and social graph classification shows that KPlexPool achieves state of the art performances against both parametric and non-parametric pooling methods in the literature, despite generating pooled graphs based solely on topological information.
论文关键词:Graph pooling, Graph neural network, K-plex, Graph covering, Pseudo-clique
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论文官网地址:https://doi.org/10.1007/s10618-021-00779-z