A Unified Invariant Learning Framework for Graph Classification
Yongduo Sui, Jie Sun, Shuyao Wang, Zemin Liu, Qing Cui, Longfei Li,, Xiang Wang

TL;DR
This paper introduces the Unified Invariant Learning (UIL) framework for graph classification, combining structural and semantic invariance principles to improve out-of-distribution generalization of graph neural networks.
Contribution
The paper proposes a novel UIL framework that integrates structural and semantic invariance for more robust stable feature identification in graph data.
Findings
UIL outperforms baseline methods in OOD generalization
Theoretical and empirical evidence supports UIL's effectiveness
Enhanced stability of features across diverse environments
Abstract
Invariant learning demonstrates substantial potential for enhancing the generalization of graph neural networks (GNNs) with out-of-distribution (OOD) data. It aims to recognize stable features in graph data for classification, based on the premise that these features causally determine the target label, and their influence is invariant to changes in distribution. Along this line, most studies have attempted to pinpoint these stable features by emphasizing explicit substructures in the graph, such as masked or attentive subgraphs, and primarily enforcing the invariance principle in the semantic space, i.e., graph representations. However, we argue that focusing only on the semantic space may not accurately identify these stable features. To address this, we introduce the Unified Invariant Learning (UIL) framework for graph classification. It provides a unified perspective on invariant…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Text and Document Classification Technologies · Machine Learning in Bioinformatics
MethodsSparse Evolutionary Training
