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2016 | nr 44 T. 3. Problemy współczesnej ekonomii | 33--48
Tytuł artykułu

Symulacja komputerowa zamiast tradycyjnego eksperymentu ekonomicznego

Warianty tytułu
Computer Simulation Rather Than Traditional Experiment
Języki publikacji
PL
Abstrakty
Chociaż liczba eksperymentów realizowanych przez ekonomistów rośnie z każdym rokiem i metoda eksperymentalna weszła na stałe do metodologii nauk ekonomicznych, nie jest możliwe przeprowadzanie doświadczeń na całej gospodarce, a wielu zjawisk ekonomicznych nie można poddawać manipulacji eksperymentalnej z różnych względów praktycznych, etycznych czy technologicznych. W takich przypadkach symulacja komputerowa może wspomóc ekonomię w osiągnięciu statusu pełnoprawnej nauki eksperymentalnej. Ale czy wartość epistemologiczna symulacji komputerowej dorównuje wartości poznawczej tradycyjnego eksperymentu ekonomicznego? Celem artykułu jest próba odpowiedzi na to pytanie.(abstrakt oryginalny)
EN
Even though the number of experiments conducted by economists is growing every year and the experimental method has become for good a part of economics methodology, it is not possible to do experiments on the economy as a whole and many economic phenomena cannot be subject to experimental manipulation for a variety of reasons - practical, ethical or technological. In such cases the computer simulation can support economics in achieving a status of a fully-fledged experimental science. But does the epistemological value of computer simulation match the cognitive value of traditional economic experiment? This article attempts to answer that question. (original abstract)
Rocznik
Strony
33--48
Opis fizyczny
Twórcy
  • Uniwersytet Szczeciński
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