Culture knowledge graph construction techniques

Wirapong Chansanam, Yuttana Jaroenruen, Nattapong Kaewboonma, Tuamsuk Kulthida
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引用次数: 2

Abstract

This article describes the development process of the Thai cultural knowledge graph, which facilitates a more precise and rapid comprehension of the culture and customs of Thailand. The construction process is as follows: First, data collection technologies and techniques were used to obtain text data from the Wikipedia encyclopedia about cultural traditions in Thailand. Second, entity recognition and relationship extraction were performed on the structured text set. A natural language processing (NLP) technique was used to characterize and extract better textual resources from Wikipedia to support a deeper understanding of user-generated content by using automatic tools. Regarding entity recognition, a BiLSTM model was used to extract relationships between entities. After the entities and their relationships were obtained, triple data were generated from the semistructured data in the existing knowledge base. Then, a knowledge graph was created, knowledge bases were stored in the Neo4j Desktop, and the quality and performance of the created knowledge graph were assessed. According to the experimental findings, the precision value is 84.73%, the recall value is 82.26%, and the F1-score value is 83.47%; therefore, BiLSTM-CNN-CRF can successfully extract entities from the structured text.
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文化知识图谱构建技术
本文描述了泰国文化知识图谱的发展过程,有助于更准确、快速地了解泰国的文化和习俗。建设过程如下:首先,利用数据收集技术和技巧,从维基百科中获取关于泰国文化传统的文本数据。其次,对结构化文本集进行实体识别和关系提取;使用自然语言处理(NLP)技术从维基百科中提取更好的文本资源,以支持使用自动工具更深入地理解用户生成的内容。在实体识别方面,采用BiLSTM模型提取实体之间的关系。在获得实体及其关系后,将现有知识库中的半结构化数据生成三重数据。然后,创建知识图谱,将知识库存储在Neo4j Desktop中,并对所创建的知识图谱的质量和性能进行评估。实验结果表明,准确率值为84.73%,召回率值为82.26%,f1得分值为83.47%;因此,BiLSTM-CNN-CRF可以成功地从结构化文本中提取实体。
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