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Semi-automated Construction of Air Pollution Domain Ontology

机译:空气污染领域本体的半自动化构建

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摘要

Air pollution has become a substantial environmental issue in China, which has seriously affected human health. To clarify the relationship among air pollutants, pollution sources, influencing factors, evaluation indicators and harms, it is essential to build a domain ontology for air pollution. Domain ontologies have been gradually accepted as a method to indicate the relationship between terms. However, there is not a complete ontology in air pollution domain, and building domain ontologies manually is time-consuming and inconvenient. In this paper, a semi-automatic approach is presented to build an ontology in air pollution domain. This paper proposes a method of entity relationship joint extraction based on attention mechanism, which is combined with core concept mining method to extract knowledge, and then concepts, relationships, and relevant instances are organized in hierarchy. Finally, the ontology model is constructed semi-automatically and semantic inference is also carried out. The research shows that this knowledge extraction method can avoid the error accumulation caused by entity recognition and relationship extraction and deepen the inner connection between them, and a large amount of effective knowledge in the field of air pollution can be extracted. In addition, the ontology constructed based on this method can also visually analyze the relationship between various classes and concepts in the field of air pollution, deduce the pollutant propagation path, and provide practical experience for the semi-automatic ontology construction in other fields and data support for further research.
机译:空气污染已成为中国的重大环境问题,已严重影响人类健康。为了弄清空气污染物,污染源,影响因素,评价指标和危害之间的关系,建立空气污染领域本体至关重要。领域本体已逐渐被接受为指示术语之间关系的方法。但是,在空气污染领域还没有一个完整的本体,手动建立域本体既费时又不便。本文提出了一种半自动方法来建立空气污染领域的本体。提出了一种基于注意力机制的实体关系联合提取方法,该方法与核心概念挖掘方法相结合,提取知识,然后按照层次结构组织概念,关系和相关实例。最后,半自动构建本体模型,并进行语义推理。研究表明,这种知识提取方法可以避免由于实体识别和关系提取而引起的错误积累,加深了它们之间的内在联系,可以提取空气污染领域的大量有效知识。此外,基于该方法构建的本体还可以直观地分析空气污染领域中各个类别与概念之间的关系,推导污染物的传播路径,为其他领域和数据中的半自动本体的构建提供实践经验。支持进一步研究。

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