Ontological knowledge inferring approach: Introducing Directed Collocations (DC) and Joined Directed Collocations (JDC)

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE International Journal of Knowledge-Based and Intelligent Engineering Systems Pub Date : 2023-06-09 DOI:10.3233/kes-221516
Muditha Tissera, R. Weerasinghe
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Abstract

The growing need of utilizing unstructured knowledge embedded in open-domain natural language text into machine-processable forms requires the induction of hardly extracted structured knowledge into knowledge bases which makes the Semantic Web vision a reality. In this context, ontologies, and ontological knowledge (triples) plays a vital role. This research introduces two novel concepts named Directed Collocation (DC) and Joined Directed Collocation (JDC) along with a methodical application of them to infer new ontological knowledge. Introduced Quality-Threshold-Value (QTV) parameter improves the quality of the inferred ontological knowledge. Having set a moderate value (3) for QTV, this approach inferred 95,491 new ontological knowledge from 43,100 triples of open domain Sri Lankan English news corpus. Indeed, the outcome was approximately doubled in size as the source corpus. Some inferred ontological knowledge was identical with the original corpus content, which evidences the accuracy of this approach. The remaining were validated using inter-rater agreement method (high reliability) and out of which around 56% were estimated as effective. The inferred outcome which is in the triple format may use in any knowledge base. The proposed approach is domain independent. Thus, helps to construct/extend ontologies for any domain with the help of less or no human specialists.
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本体知识推理方法:引入有向搭配(DC)和连接有向搭配(JDC)
将嵌入在开放领域自然语言文本中的非结构化知识转化为机器可处理的形式的需求日益增长,这就要求将难以提取的结构化知识归纳到知识库中,从而使语义Web愿景成为现实。在这种情况下,本体和本体知识(三元组)起着至关重要的作用。本研究引入了两个新概念,即有向搭配(DC)和连接有向搭配(JDC),并系统地应用它们来推断新的本体论知识。引入了质量阈值(quality - threshold - value, QTV)参数,提高了本体知识推断的质量。该方法为QTV设置了一个适中的值(3),从43100个开放域斯里兰卡英语新闻语料库的三元组中推断出95491个新的本体知识。实际上,结果大约是源语料库的两倍。部分本体知识与原始语料库内容一致,证明了该方法的准确性。其余的使用评估者之间的一致性方法(高可靠性)进行验证,其中约56%被估计为有效。采用三元格式的推断结果可以在任何知识库中使用。该方法是领域无关的。因此,它有助于在较少或没有人类专家的帮助下为任何领域构建/扩展本体。
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CiteScore
2.10
自引率
0.00%
发文量
22
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