Research on Entity Recognition and Alignment Methods in Knowledge Graph Construction of Multi-source Tourism Data

M. Wu, Hong Zhao
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引用次数: 1

Abstract

In recent years, the tourism field related websites are increasing day by day, the network has produced massive tourist generation data. Based on the semi-structured data of scenic spots, hotels and caterings on tourist websites and the travel notes published by tourists, this paper constructed the tourism knowledge graph. The extraction of entities from travel notes was faced with the problems of named entity recognition and entity alignment. In order to improve the accuracy of extracting entities from travel notes, in this paper, the named entity recognition model based on BiLSTM-CRF and the entity alignment model based on siamese network were proposed. F values can reach 90.8% and 93.0%, respectively.
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多源旅游数据知识图谱构建中的实体识别与对齐方法研究
近年来,旅游领域的相关网站日益增多,网络产生了海量的旅游生成数据。本文基于旅游网站上的景点、酒店、餐饮的半结构化数据和游客发布的游记,构建了旅游知识图谱。游记实体的提取面临着命名实体识别和实体对齐问题。为了提高游记实体提取的准确性,本文提出了基于BiLSTM-CRF的命名实体识别模型和基于siamese网络的实体对齐模型。F值分别可达90.8%和93.0%。
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