Доношење одлука које одражавају фрактализацију друштва

  • Jan Kalina The Czech Academy of Sciences, Institute of Computer Science
Ključne reči: подршка одлучивању, економска равнотежа, менаџмент, кредитни ризик, теорија информација, теорија хаоса

Sažetak


Иако се главна економска доктрина ослања на концепт равнотеже, садашње друштво се у последње време суочава са озбиљним изазовима. Иако можемо доживети постепени успон идеала друштва знања, сматрамо да ће друштво (и економије широм света) имати фракталну структуру према моделима које истражује теорија хаоса. Овај рад је фокусиран на доношење одлука посебно у економским, или менаџерским задацима и њиховим трансформацијама услед промене парадигме ка фракталном друштву у неравнотежним економским условима. Разматрани су статистички и информационо-теоријски аспекти подршке одлучивању и анализиран је и приказан пример доношења одлука из области управљања кредитним ризиком.

Biografija autora

Jan Kalina, The Czech Academy of Sciences, Institute of Computer Science

Department of Machine Learning

researcher

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2022/04/06
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