###
计算机系统应用英文版:2024,33(4):202-208
本文二维码信息
码上扫一扫!
融合实体特征及多种类注意力机制的领域关系抽取模型
(中国地质大学(武汉) 计算机学院, 武汉 430078)
Domain Relationship Extraction Model Integrating Entity Feature and Multiple Types of Attention Mechanisms
(School of Computer Science, China University of Geosciences, Wuhan 430078, China)
摘要
图/表
参考文献
相似文献
本文已被:浏览 313次   下载 1244
Received:July 02, 2023    Revised:September 09, 2023
中文摘要: 基于远程监督的关系抽取方法可以明显地减少人工标注数据集的成本, 已经被广泛应用于领域知识图谱的构建任务中. 然而, 现有的远程监督关系抽取方法领域针对性不强, 同时也忽略了对领域实体特征信息的利用. 为了解决上述问题, 提出了一种融合实体特征和多种类注意力机制的关系抽取模型PCNN-EFMA. 模型采用远程监督和多实例技术, 不再受限于人工标注. 同时, 为了减少远程监督中噪声的影响, 模型使用了句子注意力和包间注意力这两类注意力, 并在词嵌入层和句子注意力中融合实体特征信息, 增强了模型的特征选择能力. 实验表明, 该模型在领域数据集上的PR曲线更好, 并在P@N上的平均准确率优于PCNN-ATT模型.
Abstract:The relationship extraction method based on remote supervision can cut the cost of labor-based annotated datasets and has been widely used in the construction of the domain knowledge graph. However, the existing remote supervised relationship extraction methods are not domain-specific and also neglect the utilization of domain entity feature information. To solve the above problems, this study proposes a relationship extraction model PCNN-EFMA that integrates entity features and multiple types of attention mechanisms. The model adopts remote supervision and multi-instance technology, no longer limited by labor-based annotation. At the same time, to reduce the impact of noise in remote supervision, the model uses two types of attention: sentence attention and inter-packet attention. In addition, it integrates entity feature information in the word embedding layer and sentence attention, enhancing the model’s feature selection ability. Experiments show that the PR curve of this model is better on the domain dataset, and its average accuracy on P@N is better than that of the PCNN-ATT model.
文章编号:     中图分类号:    文献标志码:
基金项目:国家自然科学基金(U21A2013); 智能地学信息处理湖北省重点实验室开放基金(KLIGIP-2018B14)
引用文本:
王稳,刘远兴,吴湘宁,李文炽,涂雨,张锋,方恒,蔡泽宇.融合实体特征及多种类注意力机制的领域关系抽取模型.计算机系统应用,2024,33(4):202-208
WANG Wen,LIU Yuan-Xing,WU Xiang-Ning,LI Wen-Chi,TU Yu,ZHANG Feng,FANG Heng,CAI Ze-Yu.Domain Relationship Extraction Model Integrating Entity Feature and Multiple Types of Attention Mechanisms.COMPUTER SYSTEMS APPLICATIONS,2024,33(4):202-208