The Use of Toulmin's Argumentation Model in Solving The Drug Conflict Problems

Hamzah Noori Fejer, Ali Hadi Hasan
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Abstract

The field of argumentation in Artificial Intelligence (AI) has witnessed a great increase an important cognitive to deal with uncertain information and conflicting opinions. This has led to a number of interesting lines of research in this field and related fields, giving rise to computational models of the argument as a promising research field. The remedies conflict problem is considered one of the challenges in the field of medicine the world. This paper makes use of Toulmin's argumentation model to deal with conflicting problems within the medicine field. In addition, inference rules were used for associating a patient's symptoms and patient history(premises) with remedies use, eventually leading to medications diagnosis for patient (claims). After that, several remedy features are used to compete for the support and the attack (pros and cons) for each remedy item. A decision is made during the qualifier phase in Toulmin's model about whether or not the drug should be used based on the highest value of support or attack. The dataset consists of 200 patients as samples for two heart diseases (hypertension, angina pectoris). It is collected from the Iraqi educational hospitals, annotated by a team of experts working in the medical field. The performance achieved in the proposed model in hypertension and angina pectoris diseases were 78% and 83%, respectively, using the confusion matrix method.
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图尔敏论证模型在解决毒品冲突问题中的应用
人工智能(AI)中的论证领域在处理不确定信息和意见冲突的重要认知方面有了很大的发展。这导致了这个领域和相关领域的一些有趣的研究,产生了作为一个有前途的研究领域的争论的计算模型。药物冲突问题被认为是世界医学领域面临的挑战之一。本文运用图尔敏的论证模型来处理医学领域内的冲突问题。此外,推理规则用于将患者的症状和病史(前提)与药物使用联系起来,最终导致患者的药物诊断(索赔)。在此之后,将使用几个补救功能来竞争每个补救道具的支持和攻击(赞成和反对)。在Toulmin的模型中,在限定阶段根据支持或攻击的最高值决定是否使用该药物。该数据集包括200名患者作为两种心脏病(高血压、心绞痛)的样本。它是从伊拉克教育医院收集的,由一组在医疗领域工作的专家注释。采用混淆矩阵法,该模型对高血压和心绞痛疾病的诊断准确率分别为78%和83%。
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