A Non-Negative Factorization approach to node pooling in Graph Convolutional Neural Networks

Bacciu, Davide, Di Sotto, Luigi

arXiv.org Artificial Intelligence 

The paper discusses a pooling mechanism to induce subsam-pling in graph structured data and introduces it as a component of a graph convolutional neural network. The pooling mechanism builds on the Non-Negative Matrix Factorization (NMF) of a matrix representing node adjacency and node similarity as adaptively obtained through the vertices embedding learned by the model. Such mechanism is applied to obtain an incrementally coarser graph where nodes are adaptively pooled into communities based on the outcomes of the nonnegative factorization. The empirical analysis on graph classification benchmarks shows how such coarsening process yields significant improvements in the predictive performance of the model with respect to its non-pooled counterpart.

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