Research on Intelligent Question Answering System Based on Medical Knowledge Graph

Qianjun Shuai, Mingjie Wei, Fang Miao, Libiao Jin
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引用次数: 3

Abstract

With the development of artificial intelligence, smart medical systems play an increasingly important role. The traditional medical question answering system can only answer the preset questions. This paper introduces a model of intelligent question answering system based on knowledge graph. It analyzes how to construct a knowledge graph using the neo4j graph database, and uses convolutional neural network to semantically parse user questions. To a certain extent, the system has improved the understanding of user questions and can give better answers.
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基于医学知识图的智能问答系统研究
随着人工智能的发展,智能医疗系统发挥着越来越重要的作用。传统的医学问答系统只能回答预设的问题。介绍了一种基于知识图谱的智能问答系统模型。分析了如何利用neo4j图形数据库构建知识图谱,并利用卷积神经网络对用户问题进行语义解析。在一定程度上,系统提高了对用户问题的理解,可以给出更好的答案。
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