LGAIFeb 20

Causal Neighbourhood Learning for Invariant Graph Representations

arXiv:2602.17934v1
Originality Incremental advance
AI Analysis

This addresses the challenge of robust generalization for graph models under distribution shifts, though it appears incremental as it builds on existing causal and GNN methods.

The paper tackled the problem of spurious correlations in graph data that hinder generalization in Graph Neural Networks (GNNs) by proposing CNL-GNN, a framework that performs causal interventions to learn invariant representations, resulting in outperforming state-of-the-art GNN models on four datasets.

Graph data often contain noisy and spurious correlations that mask the true causal relationships, which are essential for enabling graph models to make predictions based on the underlying causal structure of the data. Dependence on spurious connections makes it challenging for traditional Graph Neural Networks (GNNs) to generalize effectively across different graphs. Furthermore, traditional aggregation methods tend to amplify these spurious patterns, limiting model robustness under distribution shifts. To address these issues, we propose Causal Neighbourhood Learning with Graph Neural Networks (CNL-GNN), a novel framework that performs causal interventions on graph structure. CNL-GNN effectively identifies and preserves causally relevant connections and reduces spurious influences through the generation of counterfactual neighbourhoods and adaptive edge perturbation guided by learnable importance masking and an attention-based mechanism. In addition, by combining structural-level interventions with the disentanglement of causal features from confounding factors, the model learns invariant node representations that are robust and generalize well across different graph structures. Our approach improves causal graph learning beyond traditional feature-based methods, resulting in a robust classification model. Extensive experiments on four publicly available datasets, including multiple domain variants of one dataset, demonstrate that CNL-GNN outperforms state-of-the-art GNN models.

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