LGSIFeb 8, 2022

Simplified Graph Convolution with Heterophily

arXiv:2202.04139v237 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of handling heterophilous graph data for node classification, offering a fast and interpretable alternative to deep learning methods, though it is incremental as it builds on SGC.

The paper tackled the problem of Simple Graph Convolution (SGC) being ineffective for heterophilous graphs, and proposed Adaptive Simple Graph Convolution (ASGC), which adapts to both homophilous and heterophilous structures and is often competitive with deep models on real-world datasets.

Recent work has shown that a simple, fast method called Simple Graph Convolution (SGC) (Wu et al., 2019), which eschews deep learning, is competitive with deep methods like graph convolutional networks (GCNs) (Kipf & Welling, 2017) in common graph machine learning benchmarks. The use of graph data in SGC implicitly assumes the common but not universal graph characteristic of homophily, wherein nodes link to nodes which are similar. Here we confirm that SGC is indeed ineffective for heterophilous (i.e., non-homophilous) graphs via experiments on synthetic and real-world datasets. We propose Adaptive Simple Graph Convolution (ASGC), which we show can adapt to both homophilous and heterophilous graph structure. Like SGC, ASGC is not a deep model, and hence is fast, scalable, and interpretable; further, we can prove performance guarantees on natural synthetic data models. Empirically, ASGC is often competitive with recent deep models at node classification on a benchmark of real-world datasets. The SGC paper questioned whether the complexity of graph neural networks is warranted for common graph problems involving homophilous networks; our results similarly suggest that, while deep learning often achieves the highest performance, heterophilous structure alone does not necessitate these more involved methods.

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