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2022 | 32 | nr 3 | 142-151
Tytuł artykułu

Modifications of Order Scales for Assessing Debtors

Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
In previous research, the Extended Order Scale (EOS) dedicated to risk assessment was analysed. It was characterised by a Numerical Order Scale (NOS) evaluated by trapezoidal oriented fuzzy numbers (TrOFNs). However, the research showed that EOS with two-stage orientation phases, was too complicated. Therefore, the main aim of our paper is to simplify a Complete Order Scale (COS) to a zero- or one-stage order scale and a hybrid approach. For this purpose, a way to calculate the scoring function is presented. The results show that changes in the COS structure influence the values of a scoring function. Replacing just one linguistic indicator gives different results. Another finding of the research is the method's flexibility that allows an expert to individually choose the most suitable COS. The research proves that the boundary between various linguistic labels cannot be precisely defined. However, knowledge of a formal COS structure allows it to be transformed into a less complex one. (original abstract)
Rocznik
Tom
32
Numer
Strony
142-151
Opis fizyczny
Twórcy
  • Poznań University of Economics and Business, Poland
  • WSB University in Poznań, Poznań, Poland
Bibliografia
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  • [11] Kosiński, W., Prokopowicz, P., and Ślęzak, D. Drawback of fuzzy arithmetics - new intuitions and propositions. In Methods of Artificial Intelligence, T. Burczyński, W. Cholewa, and M. Moczulski, Eds. PACM, (Gliwice 2002), 2002, pp. 231-237.
  • [12] Locurcio, M., Tajani, F., Morano, P., Anelli, D., and Manganelli, B. Credit risk management of property investments through multi-criteria indicators. Risks 9, 6, 106 (2021), 1-23.
  • [13] Piasecki, K. Revision of the Kosiński's theory of ordered fuzzy numbers. Axioms 7, 1, 16 (2018), 1-14.
  • [14] Piasecki, K., and Łyczkowska-Hanćkowiak, A. Oriented fuzzy numbers vs. fuzzy numbers. Mathematics 9, 5 (2021), 523.
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Typ dokumentu
Bibliografia
Identyfikatory
Identyfikator YADDA
bwmeta1.element.ekon-element-000171656604
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