DOI
10.34229/KCA2522-9664.25.6.9
UDC 519.816
M.М. Potomkin
Central Scientific and Research Institute of the Armed Forces of Ukraine, Kyiv, Ukraine,
favorite_p@ukr.net
О.М. Semenenko
Central Scientific and Research Institute of the Armed Forces of Ukraine, Kyiv, Ukraine,
Olehsemenenko9@gmail.com
Y.O. Kliat
Central Scientific and Research Institute of the Armed Forces of Ukraine, Kyiv, Ukraine,
kliatyuriiol@ukr.net
A.А. Sedliar
Central Scientific and Research Institute of the Armed Forces of Ukraine, Kyiv, Ukraine,
saa66ua@ukr.net
AN APPROACH TO CONSTRUCTING A PARETO-EFFICIENT SET
WITH CONSIDERATION OF ERRORS IN INDICATORS
USED TO COMPARE ALTERNATIVES
Abstract. The Pareto method is applied at the initial stages of multicriteria analysis of alternatives in order to reduce their original set. However, the results of calculations using multicriteria methods may depend on errors in the input data. This article describes the Pareto method and establishes that it can be used only for the nominal values of the indicators by which alternatives are compared. An approach to forming a Pareto-efficient set with consideration of errors in these indicator values is proposed. Its practical applicability is demonstrated through two examples. The examples also show that the proposed approach can be used to resolve the ambiguity in ranking alternatives when multiple multicriteria methods are applied.
Keywords: multicriteria method, Pareto method, error of indicator values, example of calculations, ranking of alternatives.
full text
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