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A Review of the Applications of Genetic Algorithms to Forecasting Prices of Commodities

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  • Krzysztof Drachal

    (Faculty of Economic Sciences, University of Warsaw, 00-241 Warsaw, Poland)

  • Michał Pawłowski

    (Faculty of Economic Sciences, University of Warsaw, 00-241 Warsaw, Poland)

Abstract

This paper is focused on the concise review of the specific applications of genetic algorithms in forecasting commodity prices. Genetic algorithms seem relevant in this field for many reasons. For instance, they lack the necessity to assume a certain statistical distribution, and they are efficient in dealing with non-stationary data. Indeed, the latter case is very frequent while forecasting the commodity prices of, for example, crude oil. Moreover, growing interest in their application has been observed recently. In parallel, researchers are also interested in constructing hybrid genetic algorithms (i.e., joining them with other econometric methods). Such an approach helps to reduce each of the individual method flaws and yields promising results. In this article, three groups of commodities are discussed: energy commodities, metals, and agricultural products. The advantages and disadvantages of genetic algorithms and their hybrids are presented, and further conclusions concerning their possible improvements and other future applications are discussed. This article fills a significant literature gap, focusing on particular financial and economic applications. In particular, it combines three important—yet not often jointly discussed—topics: genetic algorithms, their hybrids with other tools, and commodity price forecasting issues.

Suggested Citation

  • Krzysztof Drachal & Michał Pawłowski, 2021. "A Review of the Applications of Genetic Algorithms to Forecasting Prices of Commodities," Economies, MDPI, vol. 9(1), pages 1-22, January.
  • Handle: RePEc:gam:jecomi:v:9:y:2021:i:1:p:6-:d:483079
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    References listed on IDEAS

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