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FaD-CODS Fake News Detection on COVID-19 Using Description Logics and Semantic Reasoning

机译:使用描述逻辑和语义推理的Covid-19上的FAD-CODS假新闻检测

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摘要

COVID-19 has affected people in nearly 180 countries worldwide. This paper presents a novel and improved Semantic Web-based approach for implementing the disease pattern of COVID-19. Semantics gives meaning to words and defines the purpose of words in a sentence. Previous ontology approaches revolved around syntactic methods. In this paper, semantics gives due priority to understand the nature and meaning of the underlying text. The proposed approach, FaD-CODS, focuses on a specific application of fake news detection. The formal definition is given by depiction of knowledge patterns using semantic reasoning. The proposed approach based on fake news detection uses description logic for semantic reasoning. FaD-CODS will affect decision making in medicine and healthcare. Further, the state-of-the-art method performs best for semantic text incorporated in the model. FaD-CODS used a reasoning tool, RACER, to check the consistency of the collected study. Further, the reasoning tool performance is critically analyzed to determine the conflicts between a myth and fact.
机译:Covid-19在全球近180个国家受到影响的影响。本文提出了一种新颖的基于语义基于网络的方法,用于实施Covid-19的疾病模式。语义给出了句子的含义,定义了句子中的单词的目的。以前的本体论方法围绕句法方法。在本文中,语义赋予了理解底层文本的性质和意义的优先权。所提出的方法,FAD-CODS,重点关注假新闻检测的具体应用。通过使用语义推理描述知识模式的形式定义。基于假新闻检测的建议方法使用描述逻辑进行语义推理。 FAD-CODS将影响医学和医疗保健的决策。此外,最先进的方法对模型中的语义文本表现最佳。 Fad-Cods使用了一个推理工具,赛车,检查收集的研究的一致性。此外,批判性地分析了推理工具性能,以确定神话与事实之间的冲突。

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