Stability and Generalization of lp-Regularized Stochastic Learning for GCN

Liu, Shiyu, Wei, Linsen, Lv, Shaogao, Li, Ming

arXiv.org Artificial Intelligence 

Graph convolutional networks (GCN) are viewed as one of the most popular representations among the variants of graph neural networks over graph data and have shown powerful performance in empirical experiments. That $\ell_2$-based graph smoothing enforces the global smoothness of GCN, while (soft) $\ell_1$-based sparse graph learning tends to promote signal sparsity to trade for discontinuity. This paper aims to quantify the trade-off of GCN between smoothness and sparsity, with the help of a general $\ell_p$-regularized $(1

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