基于 Lattice-LSTM 和 PCNN 模型的半导体产业链知识图谱构建

C. C. Charles Chen, Sai-Sai Shi Charles Chen, Sheng-Lung Peng Sai-Sai Shi
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引用次数: 0

摘要

本文主要关注半导体产业链知识图谱的构建。主要研究内容包括半导体领域的知识提取、知识存储和知识图谱构建。利用爬虫技术和字符识别技术从互联网、杂志和机构中获取半导体产业链信息,建立原始数据集。然后,使用 Lattice Long Short-Term Memory(Lattice-LSTM)模型实现实体提取和识别。基于句子级关注机制的片断卷积神经网络(PCNN)模型用于提取关系并获得实体三元组。通过获得的结构化数据构建半导体词典库。字典库与中文自然语言工具包 HanLP 相结合,对非结构化文本数据进行注释,以提取知识。使用 Neo4j 图数据库存储提取的半导体产业链数据。最后,使用 Spring Boot 和 Vue 技术创建知识图谱系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Construction of Knowledge Graph for Semiconductor Industry Chain Based on Lattice-LSTM and PCNN Models
This paper mainly focuses on building the knowledge graph of semiconductor industry chain. The main research contents include knowledge extraction, knowledge storage, and construction of knowledge graph in semiconductor field. The crawler technology and character recognition technology are used to obtain semiconductor industry chain information from the Internet, magazines, and institutions to establish the original data set. Then, Lattice Long Short-Term Memory (Lattice-LSTM) model is used to implement the entity extraction and recognition. The piecewise convolutional neural network (PCNN) model based on the sentence-level attention mechanism is used to extract relationships and obtain entity triples. The semiconductor dictionary library is constructed through the obtained structured data. The dictionary library and Chinese natural language toolkit HanLP are combined to annotate unstructured text data for knowledge extraction. Neo4j graph database is used to store the extracted data of semiconductor industry chain. Finally, Spring Boot and Vue technology are used to create a knowledge graph system.  
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