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INCOMPLETE AHP PAIRWISE MATRIX RECONSTRUCTION USING A NEURAL NETWORK-BASED MODEL

机译:使用神经网络的模型不完整AHP成对矩阵重建

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The Analytic Hierarchy Process (AHP) is a decision making method that has been widely used to obtain a ranking of alternatives, based on diverse criteria, that are placed in a hierarchical structure. At each level of the structure, the comparison of criteria is carried out using pairwise matrices. The decision maker completes matrices according to its judgments and the preference alternative values are obtained by the calculus of principal eigenvectors. If these matrices have missing elements, they must be completed previous to the calculation of the principal eigenvector. Also, if the comparison judgments between pairs are inconsistent, some methods to improve the consistency must be used, so that the results are coherent. In this paper we present a method based on a Multi Layer Perceptron (MLP) neural network that complete the pairwise matrices and improve its consistence simultaneously.
机译:分析层次处理(AHP)是一项决策方法,其已被广泛用于基于各种标准获得替代品的排名,其被放置在分层结构中。在结构的每个级别,使用成对矩阵进行标准的比较。决策者根据其判断完成矩阵,并且优选替代值是通过主特征向量的微积分获得的。如果这些矩阵具有缺失的元素,则必须在计算主特征向量之前完成。此外,如果对之间的比较判断不一致,则必须使用一些改善一致性的方法,因此结果是连贯的。在本文中,我们介绍了一种基于多层的Perceptron(MLP)神经网络的方法,该神经网络完成了成对矩阵并同时提高其一致性。

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