Multi-criteria decision-making method with leniency reduction based on interval-valued fuzzy sets

Ting-Yu Chen
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引用次数: 9

Abstract

The purpose of this article is to present a useful method for estimating the importance of criteria and reducing the leniency bias in multi-criteria decision analysis based on interval-valued fuzzy sets. Several types of net predispositions are defined to represent an aggregated effect of interval-valued evaluations. The suitability function to measure the overall evaluation of each alternative is then determined based on simple additive weighting (SAW) methods. Another method, the relative closeness of each alternative to the positive-ideal solution, can also be obtained by net predispositions when using the technique for order preference by similarity to ideal solution (TOPSIS). Because positive or negative leniency may exist when most criteria are assigned unduly high and low ratings, respectively, some deviation variables are introduced to mitigate the effects of overestimated and underestimated ratings on criterion importance. Considering the two objectives of maximal weighted suitability (or maximal closeness coefficient) and minimal deviation values, an integrated programming model is proposed to compute the optimal weights for the criteria and the corresponding suitability degrees (or closeness coefficient values) for alternative rankings. Flexible algorithms with SAW and TOPSIS methods are established by considering both objective and subjective information to compute optimal multi-criteria decisions. Finally, the feasibility and effectiveness of the proposed methods are illustrated by a numerical example.
基于区间值模糊集的宽大约简多准则决策方法
本文的目的是提出一种基于区间值模糊集的多准则决策分析中评估准则重要性和减少宽容偏差的有效方法。几种类型的净倾向被定义为表示区间值评估的汇总效应。然后根据简单相加加权法确定衡量各备选方案总体评价的适宜性函数。另一种方法,即每个备选方案与正理想解的相对接近度,也可以在使用与理想解相似的顺序偏好技术(TOPSIS)时通过净倾向获得。由于当大多数标准分别被赋予过高或过低的评级时,可能存在正面或负面宽大,因此引入一些偏差变量来减轻过高和过低评级对标准重要性的影响。考虑最大加权适宜性(或最大接近系数)和最小偏差值两个目标,提出了一种综合规划模型来计算各准则的最优权重和各备选排序的相应适宜度(或接近系数值)。同时考虑客观信息和主观信息,建立了基于SAW和TOPSIS的灵活算法来计算最优的多准则决策。最后通过一个算例说明了所提方法的可行性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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