基于深度神经网络的政府政策知识图谱构建与应用

Yunfeng Liu, Jian Zhang, Zhiyuan Ge
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引用次数: 0

摘要

随着大数据时代的到来,深度学习技术的发展带动了智慧政府的研究。知识图谱的引入为智慧政府的发展提供了新的途径,也为理解政府政策文本的相关对象提供了新的途径,具有重要的学术和实用价值。基于解决智慧政府实际需求的原则,运用Bert-BiLSTM-CRF模型框架构建政府政策知识图谱,从政策文件数据的获取与处理、政府政策实体的识别、政策实体的知识融合以及知识图谱的存储等方面探讨了政府政策知识图谱构建的全过程。基于实际问题的政府政策知识图谱为智能政府的深入研究奠定了基础,是深度学习技术和知识表示技术在政策文本研究领域的重要应用。同时可以为需求群体(政府、企业、个人等)提供实用服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Construction and Application of Knowledge Graph of Government Policy Based on Deep Neural Network
With the advent of the era of big data, the development of Deep learning technology has driven the research of smart government. The introduction of Knowledge Graph provides a new way for the development of smart government, and also provides a new way to understand the relevant objects of government policy texts, which has important academic and practical value. Based on the principle of solving the actual needs of smart government, we use the framework of Bert-BiLSTM-CRF model constructs the knowledge graph of government policy and discuss the whole process of the construction of government policy Knowledge Graph from the acquisition and processing of policy document data, the identification of government policy entities, the knowledge fusion of policy entities and the storage of Knowledge Graph. The Knowledge Graph of government policy based on practical problems lays a foundation for the in-depth study of smart government, which is an important application of deep learning technology and knowledge representation technology in the field of policy text research. At the same time, it can provide practical services for demand groups (government, enterprises, individuals, etc.).
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