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Backpropagation multi-layer perceptron for incomplete pairwise comparison matrices in analytic hierarchy process

机译:层次分析法中不完全成对比较矩阵的反向传播多层感知器

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摘要

Analytic hierarchy process (AHP) is a widely used decision making method in many areas such as management sciences. The performance ratings of multiple criteria and alternatives can be elicited from pairwise comparisons obtained by expressing the decision maker's perceive. However, it may be difficult for the decision maker to prudently assign values to comparisons for large number of criteria or alternatives. Since there exist distinct relationships between any two elements in the real world, the relationship between the missing comparison and the assigned comparisons should be taken into account. The aim of this paper is to propose a novel method using a well-known regression tool, namely the back-propagation multi-layer perceptron (i.e., MLP) to realize the above implicit relationship so as to estimate a missing pairwise judgment from the other assigned entries. A computer simulation is employed to demonstrate that the proposed method can effectively find a missing entry of an incomplete pairwise matrix such that its consistency index is minimized. (c) 2005 Elsevier Inc. All rights reserved.
机译:层次分析法(AHP)是管理科学等许多领域中广泛使用的决策方法。可以通过表达决策者的感知从成对比较中得出多个标准和替代方法的性能等级。但是,决策者可能难以为大量标准或替代方案谨慎地将值分配给比较。由于现实世界中任何两个元素之间都存在明显的关系,因此应考虑缺失比较和分配的比较之间的关系。本文的目的是提出一种使用众所周知的回归工具的新方法,即反向传播多层感知器(即MLP)来实现上述隐式关系,从而从另一个方向估计缺失的成对判断分配的条目。计算机仿真表明,该方法可以有效地找到不完整的成对矩阵的缺失项,从而使一致性指数最小。 (c)2005 Elsevier Inc.保留所有权利。

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