Zeszyty Naukowe Uniwersytetu Szczecińskiego. Studia Informatica

Aktualnie: Studia Informatica Pomerania

ISSN: 0867-1753     eISSN: 2300-410X    OAI    DOI: 10.18276/si.2015.38-11
CC BY-SA   Open Access 

Lista wydań / ZN 878 SI nr 38
Identyfikacja ekspertowego modelu decyzyjnego w problemach wielokryterialnych z zastosowaniem metody obiektów charakterystycznych

Autorzy: Wojciech Sałabun
Zachodniopomorski Uniwersytet Technologiczny w Szczecinie, Wydział Informatyki
Słowa kluczowe: wielokryterialne wspomaganie procesu decyzyjnego metoda obiektów charakterystycznych teoria zbiorów rozmytych zjawisko rank reversal metoda COMET
Rok wydania:2015
Liczba stron:14 (145-158)
Cited-by (Crossref) ?:


W artykule przedstawiono nowe podejście do rozwiązywania wielokryterialnych problemów decyzyjnych, polegające na identyfikacji ekspertowego modelu decyzyjnego w przestrzeni stanu problemu. Metoda obiektów charakterystycznych identyfikuje model decyzyjny z wykorzystaniem stałych punktów odniesienia oraz teorii zbiorów rozmytych. Metoda ta jest całkowicie odporna na zjawisko rank reversal, czyli odwracania rankingów przy dodaniu nowej alternatywy lub w momencie usunięcia alternatywy ze zbioru już rozpatrywanych obiektów. Za pomocą metody obiektów charakterystycznych identyfikowany jest model oceny ryzyka wystąpienia ataku serca u pacjenta w okresie najbliższych 10 lat, w celu lepszego zobrazowania działania metody COMET.
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