LGRPool: Hierarchical Graph Pooling Via Local-Global Regularisation
LGRPool: Hierarchical Graph Pooling Via Local-Global Regularisation
Hierarchical graph pooling(HGP) are designed to consider the fact that conventional graph neural networks(GNN) are inherently flat and are also not multiscale. However, most HGP methods suffer not only from lack of considering global topology of the graph and focusing on the feature learning aspect, but also they do not align local and global features since graphs should inherently be analyzed in a multiscale way. LGRPool is proposed in the present paper as a HGP in the framework of expectation maximization in machine learning that aligns local and global aspects of message passing with each other using a regularizer to force the global topological information to be inline with the local message passing at different scales through the representations at different layers of HGP. Experimental results on some graph classification benchmarks show that it slightly outperforms some baselines.
Farshad Noravesh、Reza Haffari、Layki Soon、Arghya Pal
计算技术、计算机技术
Farshad Noravesh,Reza Haffari,Layki Soon,Arghya Pal.LGRPool: Hierarchical Graph Pooling Via Local-Global Regularisation[EB/OL].(2025-04-11)[2025-05-24].https://arxiv.org/abs/2504.08530.点此复制
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