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基于强化学习的城镇燃气事故信息抽取方法
引用本文:王明达,张榜,吴志生,李云飞.基于强化学习的城镇燃气事故信息抽取方法[J].中国安全生产科学技术,2023,19(3):39-45.
作者姓名:王明达  张榜  吴志生  李云飞
作者单位:(中国石油大学(华东) 机电工程学院,山东 青岛 266580)
基金项目:作者简介: 王明达,博士,讲师,主要研究方向为油气安全大数据、安全工程信息化教学与科研。
摘    要:为解决因城镇燃气事故调查报告标注样本缺乏,从而影响命名实体识别性能这一问题,提出基于BiLSTM-CRF+强化学习的燃气事故领域命名实体识别方法。首先在数据预处理阶段,采用基于文本结构的主旨段落抽取方法,识别事故调查报告的关键段落;其次在模型训练阶段,采用BiLSTM-CRF+强化学习模型,实现城镇燃气事故命名实体识别模型训练;最后利用城镇燃气事故调查报告作为试验数据进行验证。研究结果表明:经由强化学习模型降噪后,实体识别模型的综合评价指标提高5.76%,主旨段落识别方法相比Word2vec特征表示方法,使模型的综合评价指标提升7.17%。

关 键 词:城镇燃气事故  命名实体识别  信息抽取  强化学习

Information extraction method of urban gas accidents based on reinforcement learning
WANG Mingda,ZHANG Bang,WU Zhisheng,LI Yunfei.Information extraction method of urban gas accidents based on reinforcement learning[J].Journal of Safety Science and Technology,2023,19(3):39-45.
Authors:WANG Mingda  ZHANG Bang  WU Zhisheng  LI Yunfei
Institution:(College of Mechanical and Electrical Engineering,China University of Petroleum(East China),Qingdao Shandong 266580,China)
Abstract:In order to solve the problem that the lack of marked samples of the urban gas accident investigation reports affect the performance of named entity recognition,a named entity recognition method of gas accident field based on bidirectional long short term memory/conditional random fields (BiLSTM-CRF) and reinforcement learning was proposed.Firstly,in the data pre-processing stage,the theme paragraph extraction method based on the text structure was adopted to identify the key paragraphs of accident investigation reports.Secondly,in the model training stage,the BiLSTM-CRFand reinforcement learning model were used to train the named entityrecognition model of urban gas accidents.Finally,the urban gas accident investigation reports were taken as the test data for experimental validation.The results showed that the comprehensive evaluation index of the entity recognition model improved by 5.76% after the noise reduction by the reinforcement learning model,and the themeparagraph recognition method could improve the comprehensive evaluation index of the model by 7.17% compared with the Word2vec feature representation method.
Keywords:urban gas accident  named entity recognition  information extraction  reinforcement learning
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