基于知识图谱的COVID-19问答系统

Yuze Sun, Yifei Cai, Yunkai Shen, Qian-cai Zhang, Xiaolong Feng, Mengmeng Yin, Dongmei Li
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引用次数: 1

摘要

2019年底出现的新冠肺炎疫情是近百年来人类遭遇的最严重的突发公共卫生事件。面对新冠肺炎疫情,人们需要获得正确、全面、清晰的信息。然而,传统的信息检索方法只返回相关网页的集合,用户需要区分冗余和复杂信息的真实性。因此,这种信息获取方式效率低下,不能很好地为用户服务。为满足用户对相关信息的需求,有必要对新型冠状病毒肺炎问答系统进行研究。本文研究并构建了一个基于知识图谱的COVID-19问答系统。在系统中,问答功能是基于朴素贝叶斯算法的模板匹配实现的。对于输入的问题,系统首先进行实体识别,使用实体类型标注结合实体相似度匹配来识别用户问题中的实体。然后,系统预测用户的提问意图,并使用训练好的问题分类器预测类别数。最后利用Cypher对图形数据库进行查询,生成并输出答案。本文实现的系统可以帮助用户快速获取自己想要的信息,提高用户的信息获取效率。该系统可以为人们提供方便快捷的获取COVID-19医疗、卫生、物资、防控、科研等信息的途径,帮助人们做好预防疾病的工作,降低COVID-19的发病率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The COVID-19 Question Answering System Based on Knowledge Graph
The COVID-19 that emerged at the end of 2019 is the biggest public health emergency encountered by human in the past 100 years. In the face of COVID-19, people need to get correct, comprehensive and clear information. However, traditional information retrieval methods only return a collection of related web pages, and users need to distinguish the authenticity from redundant and complicated information. Therefore, such information acquisition methods are inefficient and cannot serve users well. To meet the needs of users for related information, it is necessary to study the question answering system for the COVID-19. This paper studies and builds a COVID-19 question answering system based on knowledge graph. In the System, the question answering function is realized by template matching, which based on the Naive Bayes algorithm. For the input questions, the system firstly performs entity recognition, using entity type labeling combined with entity similarity matching to identify entities in the user's questions. Then the system predicts the user's question intention and use the trained question classifier to predict the category number. Finally Cypher is utilized to query graph database to generate and output the answer. The system implemented in this paper can help users quickly obtain the information they want and improve the user's information acquisition efficiency. The system can provide people convenient and fast ways of obtaining information about COVID-19, such as medical treatment, health, materials, prevention and control, scientific research, so as to help people take precautions against diseases and decrease the incidence of COVID-19.
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