@inproceedings{wang-etal-2025-ccl25,
title = "{CCL}25-Eval任务四系统报告:基于{RAG}与谓词相似性方法的叙实性检测智能体",
author = "Wang, Yu and
Qian, Yang and
Liang, Ke and
Yang, Yiheng and
Yu, Zhai and
Huang, Chu-Ren",
editor = "Lin, Hongfei and
Li, Bin and
Tan, Hongye",
booktitle = "Proceedings of the 24th {C}hina National Conference on Computational Linguistics ({CCL} 2025)",
month = aug,
year = "2025",
address = "Jinan, China",
publisher = "Chinese Information Processing Society of China",
url = "https://aclanthology.org/2025.ccl-2.18/",
pages = "152--156",
abstract = "``本文聚焦于{``}叙实性推理{''}任务,即判断语言中事件真实性的语义理解能力。该任务不依赖外部知识,而基于语言结构本身进行推理,对当前大语言模型(LLMs)提出挑战。为解决模型在叙实性漂移、多义词处理等方面的不足,作者提出一种结合RAG(检索增强生成)与谓词相似性的方法,构建了一个融合参数化与非参数化知识的叙实性检测智能体系统。该系统通过分步提示与知识库支持,实现了更高的一致性、准确性与可解释性,在评测任务中取得了0.9240的稳健表现。''"
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<abstract>“本文聚焦于“叙实性推理”任务,即判断语言中事件真实性的语义理解能力。该任务不依赖外部知识,而基于语言结构本身进行推理,对当前大语言模型(LLMs)提出挑战。为解决模型在叙实性漂移、多义词处理等方面的不足,作者提出一种结合RAG(检索增强生成)与谓词相似性的方法,构建了一个融合参数化与非参数化知识的叙实性检测智能体系统。该系统通过分步提示与知识库支持,实现了更高的一致性、准确性与可解释性,在评测任务中取得了0.9240的稳健表现。”</abstract>
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%0 Conference Proceedings
%T CCL25-Eval任务四系统报告:基于RAG与谓词相似性方法的叙实性检测智能体
%A Wang, Yu
%A Qian, Yang
%A Liang, Ke
%A Yang, Yiheng
%A Yu, Zhai
%A Huang, Chu-Ren
%Y Lin, Hongfei
%Y Li, Bin
%Y Tan, Hongye
%S Proceedings of the 24th China National Conference on Computational Linguistics (CCL 2025)
%D 2025
%8 August
%I Chinese Information Processing Society of China
%C Jinan, China
%F wang-etal-2025-ccl25
%X “本文聚焦于“叙实性推理”任务,即判断语言中事件真实性的语义理解能力。该任务不依赖外部知识,而基于语言结构本身进行推理,对当前大语言模型(LLMs)提出挑战。为解决模型在叙实性漂移、多义词处理等方面的不足,作者提出一种结合RAG(检索增强生成)与谓词相似性的方法,构建了一个融合参数化与非参数化知识的叙实性检测智能体系统。该系统通过分步提示与知识库支持,实现了更高的一致性、准确性与可解释性,在评测任务中取得了0.9240的稳健表现。”
%U https://aclanthology.org/2025.ccl-2.18/
%P 152-156
Markdown (Informal)
[CCL25-Eval任务四系统报告:基于RAG与谓词相似性方法的叙实性检测智能体](https://aclanthology.org/2025.ccl-2.18/) (Wang et al., CCL 2025)
ACL
- Yu Wang, Yang Qian, Ke Liang, Yiheng Yang, Zhai Yu, and Chu-Ren Huang. 2025. CCL25-Eval任务四系统报告:基于RAG与谓词相似性方法的叙实性检测智能体. In Proceedings of the 24th China National Conference on Computational Linguistics (CCL 2025), pages 152–156, Jinan, China. Chinese Information Processing Society of China.