构件质量管理知识图谱的构建

Haiming Zhang, Xiaoming Fan, Jiaqi Zhang, Chengzhi Jiang, Jiang Li, Hantian Gu, Bo-wen Li, Hao Hu, Chengxi Liu
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引用次数: 0

摘要

随着工业物联网的发展,组件的种类和功能越来越多,应用环境也越来越复杂。同时,零部件的质量管理也变得越来越重要。为了更方便地理解与构件质量管理相关的知识,构建智能化的构件质量管理系统,本文提出了一种基于BERT词嵌入模型的构件质量管理知识图谱构建方法和基于标注策略的实体关系联合抽取方法。将实体抽取和关系抽取两个部分合二为一,既减少了计算资源的消耗,又减少了错误实体的传播。本文采用Bert-BilSTm-CRF的序列到序列模型。通过BERT词嵌入层,可以更好地利用上下文信息,提高提取的准确性。实验结果表明,与其他经典深度学习术语提取模型相比,该模型在准确率、召回率和F1值方面都有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge graph construction of component quality management
With the development of Industrial Internet of Things, the types and functions of components are increasing, the application environment is becoming more and more complex. Also, the quality management of components is becoming more and more important. In order to understand the knowledge related to component quality management more conveniently and build an intelligent system for component quality management, this paper proposes a method to construct component quality management knowledge graph based on BERT word embedding model and entity relationship joint extraction method based on annotation strategy. Combining entity extraction and relationship extraction parts into one not only reduces the consumption of computing resources, but also reduces the propagation of wrong entities. In this paper, the sequence to sequence model of Bert-BilSTm-CRF is adopted. Through the BERT word embedding layer, the context information can be better utilized and the accuracy of extraction can be improved. Experimental results show that compared with other classical deep learning term extraction models, this model has a significant improvement in accuracy, recall rate and F1 value.
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