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A New Linear Programming Method for Weights Generation and Group Decision Making in the Analytic Hierarchy Process

机译:层次分析法中权重生成与群决策的线性规划新方法

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摘要

This paper proposes a new linear programming method entitled by LP-GW-AHP for weights generation in analytic hierarchy process (AHP) which employs concepts from data envelopment analysis. We propose four specially constructed linear programming (LP) models which are used to derive weight vector from a pair-wise comparison matrix or a group of them. We can use both interval and relative importance weights for each decision maker in LP-GW-AHP. In this method, solving only one LP model is enough for local weights derivation from pair-wise comparison matrices. Five numerical examples are examined to illustrate the potential applications of the LP-GW-AHP method. We show that not only derived weights of the new method have slight differences than Saaty's eigenvector weights but sometimes they are better than eigenvector method weights in the fitting performance index as well. LP-GW-AHP is compared with a method which has been recently proposed for the weights derivation in the group AHP and it becomes obvious that LP-GW-AHP provides better weights. The simple additive weighting method is utilized to aggregate local weights without the need to normalize them.
机译:本文提出了一种新的线性规划方法,以LP-GW-AHP为标题,用于分析层次过程(AHP)中的权重生成,它采用了数据包络分析的概念。我们提出了四个特殊构造的线性规划(LP)模型,用于从成对比较矩阵或一组比较矩阵中得出权重向量。在LP-GW-AHP中,我们可以为每个决策者使用区间权重和相对重要性权重。在这种方法中,对于从成对比较矩阵得出的局部权重,仅求解一个LP模型就足够了。检查了五个数值示例,以说明LP-GW-AHP方法的潜在应用。我们表明,不仅新方法的权重比Saaty的特征向量权重略有不同,而且有时在拟合性能指标上也比特征向量法的权重更好。将LP-GW-AHP与最近提出的AHP组权重推导方法进行了比较,很明显LP-GW-AHP提供了更好的权重。简单的加法加权方法用于汇总局部权重,而无需对其进行归一化。

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