Beyond Graph Convolutional Network: An Interpretable Regularizer-centered Optimization Framework
Abstract
Graph convolutional networks (GCNs) have been attracting widespread attentions due to their encouraging performance and powerful generalizations. However, few work provide a general view to interpret various GCNs and guide GCNs' designs. In this paper, by revisiting the original GCN, we induce an interpretable regularizer-centerd optimization framework, in which by building appropriate regularizers we can interpret most GCNs, such as APPNP, JKNet, DAGNN, and GNN-LF/HF. Further, under the proposed framework, we devise a dual-regularizer graph convolutional network (dubbed tsGCN) to capture topological and semantic structures from graph data. Since the derived learning rule for tsGCN contains an inverse of a large matrix and thus is time-consuming, we leverage the Woodbury matrix identity and low-rank approximation tricks to successfully decrease the high computational complexity of computing infinite-order graph convolutions. Extensive experiments on eight public datasets demonstrate that tsGCN achieves superior performance against quite a few state-of-the-art competitors w.r.t. classification tasks.
Cite
@article{arxiv.2301.04318,
title = {Beyond Graph Convolutional Network: An Interpretable Regularizer-centered Optimization Framework},
author = {Shiping Wang and Zhihao Wu and Yuhong Chen and Yong Chen},
journal= {arXiv preprint arXiv:2301.04318},
year = {2023}
}
Comments
15 pages, 12 figures