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基于知识图谱的新疆旅游自动问答系统设计 被引量:1

Design of Xinjiang Tourism Automatic Question Answering System Based on Knowledge Graph
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摘要 近年来,新疆旅游业发展趋势越来越好,优美的风光,丰富的物产,受到国内外游客的喜爱。由于新疆地大物博,导致多数游客不能准确找到目的地。建立了一个新疆旅游知识图谱结构描述和形态分析的可计算方法体系,提出将自动问答系统运用于新疆旅游。创建新疆旅游知识图谱并构建基于新疆旅游知识图谱的自动问答平台,目的是使游客在存放着海量结构化知识的图谱上快速获取正确答案,为游客游览景区时减少不必要的时间消耗。 In recent years,the development trend of Xinjiang tourism is getting better and better.The beautiful scenery and rich products are loved by tourists at home and abroad.Due to the vast territory and abundant resources in Xinjiang,most tourists can't find their destination accurately.A computable method system for structural description and morphological analysis of Xinjiang tourism knowledge graph is established,and the application of automatic question answering system in Xinjiang tourism is proposed.The purpose of creating Xinjiang tourism knowledge graph and constructing an automatic question answering platform based on Xinjiang tourism knowledge graph is to enable tourists to quickly obtain correct answers on the graph with a large amount of structured knowledge,so as to reduce unnecessary time consumption of tourists when they visiting scenic spots.
作者 孙晶 郭成艳 毛臣 胡玉叶 SUN Jing;GUO Chengyan;MAO Chen;HU Yuye(College of Information Science and Engineering,Xinjiang University,Urumqi 830046,China;Xinjiang Key Laboratory of Multilingual Information Technology,Urumqi 830046,China)
出处 《现代信息科技》 2021年第12期26-28,32,共4页 Modern Information Technology
基金 国家自然科学基金地区基金项目(61462084)。
关键词 知识图谱 Neo4j数据库 自动问答系统 新疆旅游 knowledge graph Neo4j database automatic question answering system Xinjiang tourism
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