Papers by Linggang Kong

1 papers
CausalGaze: Unveiling Hallucinations via Counterfactual Graph Intervention in Large Language Models (2026.findings-acl)

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Challenge: Existing classification-based methods capture noise and spurious correlations while overlooking the underlying causal mechanisms.
Approach: They propose a hallucination detection framework based on structural causal models that captures static and passive signals from internal states and employs counterfactual interventions to disentangle causal reasoning paths from incidental noise.
Outcome: Experiments on four datasets and three widely used LLMs show that the proposed framework improves AUROC and interpretability.

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