LGAIDec 14, 2020

Breaking the Expressive Bottlenecks of Graph Neural Networks

arXiv:2012.07219v110 citations
AI Analysis

This paper tackles the fundamental problem of limited expressiveness in GNNs, which affects the accuracy of graph-based machine learning tasks for researchers and practitioners working with complex graph data.

The authors address the limited expressiveness of Graph Neural Networks (GNNs) due to non-injective aggregators, which restrict their ability to distinguish graph structures. They propose two new GNN layers, ExpandingConv and CombConv, that significantly improve performance, particularly on large and densely connected graphs.

Recently, the Weisfeiler-Lehman (WL) graph isomorphism test was used to measure the expressiveness of graph neural networks (GNNs), showing that the neighborhood aggregation GNNs were at most as powerful as 1-WL test in distinguishing graph structures. There were also improvements proposed in analogy to $k$-WL test ($k>1$). However, the aggregators in these GNNs are far from injective as required by the WL test, and suffer from weak distinguishing strength, making it become expressive bottlenecks. In this paper, we improve the expressiveness by exploring powerful aggregators. We reformulate aggregation with the corresponding aggregation coefficient matrix, and then systematically analyze the requirements of the aggregation coefficient matrix for building more powerful aggregators and even injective aggregators. It can also be viewed as the strategy for preserving the rank of hidden features, and implies that basic aggregators correspond to a special case of low-rank transformations. We also show the necessity of applying nonlinear units ahead of aggregation, which is different from most aggregation-based GNNs. Based on our theoretical analysis, we develop two GNN layers, ExpandingConv and CombConv. Experimental results show that our models significantly boost performance, especially for large and densely connected graphs.

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