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Argument-Centric Causal Intervention Method for Mitigating Bias in Cross-Document Event Coreference Resolution

Argument-Centric Causal Intervention Method for Mitigating Bias in Cross-Document Event Coreference Resolution

来源:Arxiv_logoArxiv
英文摘要

Cross-document Event Coreference Resolution (CD-ECR) is a fundamental task in natural language processing (NLP) that seeks to determine whether event mentions across multiple documents refer to the same real-world occurrence. However, current CD-ECR approaches predominantly rely on trigger features within input mention pairs, which induce spurious correlations between surface-level lexical features and coreference relationships, impairing the overall performance of the models. To address this issue, we propose a novel cross-document event coreference resolution method based on Argument-Centric Causal Intervention (ACCI). Specifically, we construct a structural causal graph to uncover confounding dependencies between lexical triggers and coreference labels, and introduce backdoor-adjusted interventions to isolate the true causal effect of argument semantics. To further mitigate spurious correlations, ACCI integrates a counterfactual reasoning module that quantifies the causal influence of trigger word perturbations, and an argument-aware enhancement module to promote greater sensitivity to semantically grounded information. In contrast to prior methods that depend on costly data augmentation or heuristic-based filtering, ACCI enables effective debiasing in a unified end-to-end framework without altering the underlying training procedure. Extensive experiments demonstrate that ACCI achieves CoNLL F1 of 88.4% on ECB+ and 85.2% on GVC, achieving state-of-the-art performance. The implementation and materials are available at https://github.com/era211/ACCI.

Long Yao、Wenzhong Yang、Yabo Yin、Fuyuan Wei、Hongzhen Lv、Jiaren Peng、Liejun Wang、Xiaoming Tao

计算技术、计算机技术

Long Yao,Wenzhong Yang,Yabo Yin,Fuyuan Wei,Hongzhen Lv,Jiaren Peng,Liejun Wang,Xiaoming Tao.Argument-Centric Causal Intervention Method for Mitigating Bias in Cross-Document Event Coreference Resolution[EB/OL].(2025-06-02)[2025-07-25].https://arxiv.org/abs/2506.01488.点此复制

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