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A goal programming approach to deriving interval weights in analytic form from interval Fuzzy preference relations based on multiplicative consistency

机译:基于乘法常量的间隔模糊偏好关系导出分析形式中的间隔权重的目标规划方法

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This paper focuses on how to find an analytic solution of optimal interval weights from consistent interval fuzzy preference relations (IFPRs) and obtain approximate-solution based interval weights in analytic form from inconsistent IFPRs. The paper first analyzes the popularly used interval weight additive normalization model and illustrates its drawbacks on the existence and uniqueness for characterizing 10, 1[-valued interval weights obtained from IFPRs. By examining equivalency of]0, 1[-valued interval weight vectors, a novel framework of multiplicatively normalized interval fuzzy weights (MNIFWs) is then proposed and used to define multiplicatively consistent IFPRs. The paper presents significant properties for multiplicatively consistent IFPRs and their associated MNIFWs. These properties are subsequently used to establish two goal programming (GP) models for obtaining optimal MNIFWs from consistent IFPRs. By the Lagrangian multiplier method, analytic solutions of the two GP models are found for consistent IFPRs. The paper further devises a two-step procedure for deriving approximate-solution-based MNIFWs in analytic form from inconsistent IFPRs. Two visualized computation formulas are developed to determine the left and right bounds of approximate-solution-based MNIFWs of any IFPR. The paper shows that this approximate solution is an optimal solution if an IFPR is multiplicatively consistent. Three numerical examples including three IFPRs and comparative analyses are offered to demonstrate rationality and validity of the developed model. (C) 2018 Elsevier Inc. All rights reserved.
机译:本文重点介绍如何从一致的间隔模糊偏好关系(IFPRS)找到最佳间隔权重的分析解决方案,并在不一致的IFPR中获得基于近似解决的分析形式的近似解决方案权重。本文首先分析了普遍使用的间隔权重归一化模型,并说明了对表征10,1的存在和唯一性的缺点[从IFPR获得的间隔权重。通过检查0,1 [间隔权重向量等效,然后提出乘法归一化间隔模糊权重(Mnifws)的新颖框架,并用于定义乘法一致的IFPRS。本文呈现了乘法一致的IFPRS及其相关的Mnifws的重要属性。随后使用这些属性来建立两个目标编程(GP)模型,用于从一致的IFPRS获得最佳Mnifws。通过拉格朗日乘法器方法,为一致的IFPRS找到了两个GP模型的分析解决方案。本文还规定了一种两步的过程,用于从不一致的IFPRS中导出基于近似溶液的MNIFWS。开发了两个可视化计算公式,以确定任何IFP的基于近似解决方案的MNIFW的左右边界。本文表明,如果IFPR乘法一致,则该近似解是最佳解决方案。提供了三个数值例子,包括三个IFPRS和比较分析,以证明所发达模型的合理性和有效性。 (c)2018年Elsevier Inc.保留所有权利。

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