LGSep 30, 2025

Less is More: Towards Simple Graph Contrastive Learning

arXiv:2509.25742v1
Originality Highly original
AI Analysis

This work addresses the problem of unsupervised graph representation learning for heterophilic graphs, offering a simpler and more efficient solution compared to existing complex methods.

The paper tackled the limited effectiveness of Graph Contrastive Learning (GCL) on heterophilic graphs by proposing a simple model that aggregates node feature noise with structural features, achieving state-of-the-art results on heterophilic benchmarks with minimal overhead.

Graph Contrastive Learning (GCL) has shown strong promise for unsupervised graph representation learning, yet its effectiveness on heterophilic graphs, where connected nodes often belong to different classes, remains limited. Most existing methods rely on complex augmentation schemes, intricate encoders, or negative sampling, which raises the question of whether such complexity is truly necessary in this challenging setting. In this work, we revisit the foundations of supervised and unsupervised learning on graphs and uncover a simple yet effective principle for GCL: mitigating node feature noise by aggregating it with structural features derived from the graph topology. This observation suggests that the original node features and the graph structure naturally provide two complementary views for contrastive learning. Building on this insight, we propose an embarrassingly simple GCL model that uses a GCN encoder to capture structural features and an MLP encoder to isolate node feature noise. Our design requires neither data augmentation nor negative sampling, yet achieves state-of-the-art results on heterophilic benchmarks with minimal computational and memory overhead, while also offering advantages in homophilic graphs in terms of complexity, scalability, and robustness. We provide theoretical justification for our approach and validate its effectiveness through extensive experiments, including robustness evaluations against both black-box and white-box adversarial attacks.

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