CO-EVOLVE: Bidirectional Co-Evolution of Graph Structure and Semantics for Heterophilous Learning
Jinming Xing, Muhammad Shahzad

TL;DR
CO-EVOLVE introduces a dual-view co-evolution framework that dynamically integrates graph structure and semantic embeddings, addressing limitations of static, unidirectional models in heterophilous learning.
Contribution
It proposes a novel bidirectional co-evolution approach with stabilization techniques, enabling mutual reinforcement of graph topology and semantics for improved heterophilous learning.
Findings
Achieves 9.07% higher accuracy on benchmarks.
Outperforms state-of-the-art baselines in F1-score.
Demonstrates effective handling of heterophilous graph data.
Abstract
The integration of Large Language Models (LLMs) and Graph Neural Networks (GNNs) promises to unify semantic understanding with structural reasoning, yet existing methods typically rely on static, unidirectional pipelines. These approaches suffer from fundamental limitations: (1) Bidirectional Error Propagation, where semantic hallucinations in LLMs or structural noise in GNNs permanently poison the downstream modality without opportunity for recourse; (2) Semantic-Structural Dissonance, particularly in heterophilous settings where textual similarity contradicts topological reality; (3) a Blind Leading the Blind phenomenon, where indiscriminate alignment forces models to mirror each other's mistakes regardless of uncertainty. To address these challenges, we propose CO-EVOLVE, a dual-view co-evolution framework that treats graph topology and semantic embeddings as dynamic, mutually…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Topic Modeling · Multimodal Machine Learning Applications
