Artificial neural network representations for hierarchical preference structures

Artificial neural network representations for hierarchical preference structures

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Article ID: iaor19971880
Country: United Kingdom
Volume: 23
Issue: 12
Start Page Number: 1191
End Page Number: 1201
Publication Date: Dec 1996
Journal: Computers and Operations Research
Authors: , ,
Keywords: neural networks, programming: multiple criteria
Abstract:

In this paper, the authors introduce two artificial neural network formulations that can be used to assess the preference ratings from the pairwise comparison matrices of the Analytic Hierarchy Process. First, they introduce a modified Hopfield network that can determine the vector of preference ratings associated with a positive reciprocal comparison matrix. The dynamics of this network are mathematically equivalent to the power method, a widely used numerical method for computing the principal eigenvectors of square matrices. However, this Hopfield network representation is incapable of generalizing the preference patterns, and consequently is not suitable for approximating the preference ratings if the pairwise comparison judgments are imprecise. Second, the authors present a feed-forward neural network formulation that does have the ability to accurately approximate the preference ratings. They use a simulation experiment to verify the robustness of the feed-forward neural network formulation with respect to imprecise pairwise judgments. From the results of this experiment, the authors conclude that the feed-forward neural network formulation appears to be a powerful tool for analyzing discrete alternative multicriteria decision problems with imprecise or fuzzy ratio-scale preference judgments.

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