Guanrong Chen
2025
Learning First-Order Logic Rules for Argumentation Mining
Yang Sun
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Guanrong Chen
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Hamid Alinejad-Rokny
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Jianzhu Bao
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Yuqi Huang
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Bin Liang
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Kam-Fai Wong
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Min Yang
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Ruifeng Xu
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Argumentation Mining (AM) aims to extract argumentative structures from texts by identifying argumentation components (ACs) and their argumentative relations (ARs). While previous works focus on representation learning to encode ACs and AC pairs, they fail to explicitly model the underlying reasoning patterns of AM, resulting in limited interpretability. This paper proposes a novel ̲First- ̲Order ̲Logic reasoning framework for ̲AM (FOL-AM), designed to explicitly capture logical reasoning paths within argumentative texts. By interpreting multiple AM subtasks as a unified relation query task modeled using FOL rules, FOL-AM facilitates multi-hop relational reasoning and enhances interpretability. The framework supports two flexible implementations: a fine-tuned approach to leverage task-specific learning, and a prompt-based method utilizing large language models to harness their generalization capabilities. Extensive experiments on two AM benchmarks demonstrate that FOL-AM outperforms strong baselines while significantly improving explainability.
2024
Discourse Structure-Aware Prefix for Generation-Based End-to-End Argumentation Mining
Yang Sun
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Guanrong Chen
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Caihua Yang
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Jianzhu Bao
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Bin Liang
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Xi Zeng
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Min Yang
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Ruifeng Xu
Findings of the Association for Computational Linguistics: ACL 2024
End-to-end argumentation mining (AM) aims to extract the argumentation structure including argumentation components and their argumentation relations from text. Recent developments in end-to-end AM models have demonstrated significant progress by redefining the AM task as a sequence generation task, exhibiting simplicity and competitive performance. Nevertheless, these models overlook the integration of supplementary discourse structure information, a crucial factor for comprehending argumentation structures, resulting in suboptimal outcomes. In this study, we propose the DENIM framework, which generates discourse structure-aware prefixes for each layer of the generation model. These prefixes imbue the generation-based AM model with discourse structures, thereby augmenting the overall generation process. Moreover, we introduce a multi-task prompt coupled with a three-step decoding strategy, aiming to optimize the efficiency and effectiveness of argumentation structure decoding. Extensive experiments and analyses on two benchmark datasets show that DENIM achieves state-of-the-art performances on two AM benchmarks.
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- Jianzhu Bao 2
- Bin Liang (梁斌) 2
- Yang Sun 2
- Ruifeng Xu (徐睿峰) 2
- Min Yang 2
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