ARASsort: A new sorting based multiple attribute decision-making algorithm

IF 1.9 Q3 MANAGEMENT Journal of Multi-Criteria Decision Analysis Pub Date : 2022-12-25 DOI:10.1002/mcda.1801
Sait Gül
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Abstract

Multiple attribute decision-making (MADM) tools can effectively support the decision analysts in selecting the best alternative among many, ranking the alternatives in decreasing or increasing order of preference, or allocating the alternatives into pre-defined ordered classes/categories. Even though the literature provides the analyst with precious sorting-based MADM tools such as PROMSORT, UTADIS, AHPSort, TOPSISsort, and so forth, the majority of the methods can be found complex and hard to be understood by the researchers and practitioners who are not familiar with the mathematical notions and computations of MADM (distance calculation, threshold and preference function determination, and so on). To provide a simpler but powerful MADM tool aiming at sorting the alternatives into classes, this study proposes a sorting-based additive ratio assessment algorithm which is called ARASsort. For limiting (interval-based) and central (reference-based) profiles describing the categories, we have developed two algorithms: ARASsort-lp and ARASsort-cp, respectively. Their applicability was shown in two examples: green supplier evaluation and economic freedom evaluation of countries. The validity of algorithms was presented by demonstrating the class assignment similarities between the results obtained by ARASsort, VIKORsort, and TOPSISsort. The findings show that ARASsort works well because it shows a higher level of class assignment similarities with the other methods.

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ARASsort:一种新的基于排序的多属性决策算法
多属性决策(MADM)工具可以有效地支持决策分析人员在众多方案中选择最佳方案,按照偏好的递减或递增顺序对方案进行排序,或将方案分配到预定义的有序类/类别中。尽管文献为分析人员提供了宝贵的基于排序的MADM工具,如PROMSORT、UTADIS、AHPSort、TOPSISsort等,但对于不熟悉MADM的数学概念和计算(距离计算、阈值和偏好函数确定等)的研究人员和实践者来说,大多数方法都很复杂,难以理解。为了提供一个更简单但功能强大的MADM工具,旨在将备选方案分类,本研究提出了一种基于排序的加性比率评估算法,称为ARASsort。对于限制(基于区间的)和中心(基于参考的)描述类别的配置文件,我们开发了两种算法:ar选型-lp和ar选型-cp。以绿色供应商评价和国家经济自由度评价为例说明了其适用性。通过展示ARASsort、VIKORsort和TOPSISsort得到的分类分配结果之间的相似性,证明了算法的有效性。结果表明,ARASsort工作得很好,因为它显示了与其他方法更高级别的类分配相似性。
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来源期刊
CiteScore
4.70
自引率
10.00%
发文量
14
期刊介绍: The Journal of Multi-Criteria Decision Analysis was launched in 1992, and from the outset has aimed to be the repository of choice for papers covering all aspects of MCDA/MCDM. The journal provides an international forum for the presentation and discussion of all aspects of research, application and evaluation of multi-criteria decision analysis, and publishes material from a variety of disciplines and all schools of thought. Papers addressing mathematical, theoretical, and behavioural aspects are welcome, as are case studies, applications and evaluation of techniques and methodologies.
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