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A Novel Multiattribute Decision-Making Method Based on Point–Choquet Aggregation Operators and Its Application in Supporting the Hierarchical Medical Treatment System in China

机译:基于点球聚合算子的多属性决策新方法及其在支持中国分级医疗体系中的应用

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摘要

The hierarchical medical treatment system is an efficient way to solve the problem of insufficient and unbalanced medical resources in China. Essentially, classifying the different degrees of diseases according to the doctor’s diagnosis is a key step in pushing forward the hierarchical medical treatment system. This paper proposes a framework to solve the problem where diagnosis values are given as picture fuzzy numbers (PFNs). Point operators can reduce the uncertainty of doctor’s diagnosis and get intensive information in the process of decision making, and the Choquet integral operator can consider correlations among symptoms. In order to take full advantage of these two kinds of operators, in this paper, we firstly define some point operators under the picture fuzzy environment, and further propose a new class of picture fuzzy point–Choquet integral aggregation operators. Moreover, some desirable properties of these operators are also investigated in detail. Then, a novel approach based on these operators for multiattribute decision-making problems in the picture fuzzy context is introduced. Finally, we give an example to illustrate the applicability of the new approach in assisting hierarchical medical treatment system. This is of great significance for integrating the medical resources of the whole society and improving the service efficiency of the medical service system.
机译:分级医疗制度是解决我国医疗资源不足和不平衡问题的有效途径。本质上,根据医生的诊断对疾病的不同程度进行分类是推进分级医疗系统的关键步骤。本文提出了一个框架来解决诊断值以图片模糊数(PFN)给出的问题。点算子可以减少医生诊断的不确定性,并在决策过程中获得大量信息,Choquet积分算子可以考虑症状之间的相关性。为了充分利用这两种算子,本文首先在图像模糊环境下定义了一些点算子,然后进一步提出了一类新的图像模糊点-Choquet积分集合算子。此外,还详细研究了这些算子的一些理想特性。然后,提出了一种基于这些算子的图片模糊上下文中多属性决策问题的新方法。最后,我们以一个例子来说明该新方法在协助分级医疗系统中的适用性。这对于整合全社会的医疗资源,提高医疗服务系统的服务效率具有重要意义。

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