An Innovative Approach on Yao’s Three-Way Decision Model Using Intuitionistic Fuzzy Sets for Medical Diagnosis

Wajid Ali, Tanzeela Shaheen, Iftikhar Ul Haq, F. Smarandache, Hamza Ghazanfar Toor, Faiza Asif
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Abstract

In the realm of medical diagnosis, intuitionistic fuzzy data serves as a valuable tool for representing information that is uncertain and imprecise. Nevertheless, decision-making based on this kind of knowledge can be quite challenging due to the inherent vagueness of the data. To address this issue, we employ power aggregation operators, which prove effective in combining several sources of data, such as expert thoughts and patient information. This allows for a more correct diagnosis; a particularly crucial aspect of medical practice where precise and timely diagnoses can significantly impact medication policy and patient results. In our research, we introduce a novel methodology to the three-way decision idea. Initially, we revamp the three-way decision model using rough set theory and incorporate interval-valued classes to handle intuitionistic fuzzy data. Secondly, we explore the use of intuitionistic fuzzy power weighted and intuitionistic fuzzy power weighted geometric aggregation operators to consolidate attribute values within the data system. Furthermore, we present a case study in the medical field to exhibit the validity and efficiency of our offered technique. This innovative method enables us to classify participants into three distinct zones based on their symptoms. The manuscript concludes with a summary of key points provided by the authors.
使用直觉模糊集的姚氏三维决策模型用于医学诊断的创新方法
在医学诊断领域,直觉模糊数据是表示不确定和不精确信息的重要工具。然而,由于数据固有的模糊性,基于这类知识的决策可能相当具有挑战性。为了解决这个问题,我们采用了幂聚合算子,事实证明,它能有效地将专家想法和病人信息等多个数据源结合起来。这使得诊断更加正确;这在医疗实践中尤为重要,因为准确及时的诊断会对用药政策和患者疗效产生重大影响。在我们的研究中,我们为三方决策思想引入了一种新方法。首先,我们利用粗糙集理论改造了三向决策模型,并纳入了区间值类来处理直观模糊数据。其次,我们探索使用直观模糊加权和直观模糊加权几何聚合算子来整合数据系统中的属性值。此外,我们还介绍了一个医疗领域的案例研究,以展示我们所提供技术的有效性和效率。这种创新方法使我们能够根据参与者的症状将其分为三个不同的区域。手稿最后总结了作者提供的要点。
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