DeCaf: A Causal Decoupling Framework for OOD Generalization on Node Classification

Research output: Contribution to journalConference articlepeer-review

Abstract

Graph Neural Networks (GNNs) are susceptible to distribution shifts, creating vulnerability and security issues in critical domains. There is a pressing need to enhance the generalizability of GNNs on out-of-distribution (OOD) test data. Existing methods that target learning an invariant (feature, structure)label mapping often depend on oversimplified assumptions about the data generation process, which do not adequately reflect the actual dynamics of distribution shifts in graphs. In this paper, we introduce a more realistic graph data generation model using Structural Causal Models (SCMs), allowing us to redefine distribution shifts by pinpointing their origins within the generation process. Building on this, we propose a casual decoupling framework, DeCaf, that independently learns unbiased feature-label and structure-label mappings. We provide a detailed theoretical framework that shows how our approach can effectively mitigate the impact of various distribution shifts. We evaluate DeCaf across both real-world and synthetic datasets that demonstrate different patterns of shifts, confirming its efficacy in enhancing the generalizability of GNNs. Our code is available at: https://github.com/hanxiaoxue114/DeCaf-GraphOOD.

Original languageEnglish
Pages (from-to)2332-2340
Number of pages9
JournalProceedings of Machine Learning Research
Volume258
StatePublished - 2025
Event28th International Conference on Artificial Intelligence and Statistics, AISTATS 2025 - Mai Khao, Thailand
Duration: 3 May 20255 May 2025

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