The accuracy of forecasting neural networks and the impact of using fuzzy sets for the currency market
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Keywords

currency exchange rate
forecasting
neural networks
fuzzy sets

Categories

How to Cite

Morkowski, J. (2024) “The accuracy of forecasting neural networks and the impact of using fuzzy sets for the currency market”, Scientific Journal of Bielsko-Biala School of Finance and Law. Bielsko-Biała, PL, 28(1), pp. 24–31. doi: 10.19192/wsfip.sj1.2024.3.

Abstract

The aim of the article is to check the accuracy of forecasts of neural networks on the currency market and the impact of fuzzy sets on their accuracy. The study presented in this article uses an original approach that considers the use of neural networks and fuzzy sets in the mechanism of investment decision making. The empirical study is based on projections of the three currency pairs of the Swiss franc, British pound, and the dollar against the euro. These currencies are forecasted using three different neural networks - ELM, MLP and LSTM, for ten different forecast horizons (from 1 to 10 days). In forecasting, neural networks use historical data, both for price levels and rates of return. The research carried out confirmed that the presented method is in many cases more accurate than the methods compared to it in this study

https://doi.org/10.19192/wsfip.sj1.2024.3
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Copyright (c) 2024 Jakub Morkowski

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