Forecasting Exchange Rates with Neural Networks: Time Variation, Nonstationarity, and Causal Models

IF 0.9 Q3 ECONOMICS INTERNATIONAL ECONOMIC JOURNAL Pub Date : 2023-03-28 DOI:10.1080/10168737.2023.2194292
Gordon Reikard
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Abstract

There are two major issues in using artificial intelligence to forecast exchange rates, choice of methodology and choice of causal models. A further complication is the nonstationarity of the data. This study compares artificial neural networks, nonlinear regressions and recurrent neural networks, using seven econometric models, in forecasting four major exchange rates over horizons of 1–3 months. The models are trained over moving windows and estimated in both levels and differences. There are three key findings. First, the multilayer perceptron nearly always achieves the most accurate forecasts, with the regressions in second place. The recurrent neural network places a distant third. Second, at horizons of 1 and 2 months, the perceptron is usually better in differences. At the 3-month horizon, however, the accuracy in differences deteriorates. Third, the perceptron favors models including international differentials in price levels, interest rates and yields, which achieve the best forecasts in the majority of cases. Several other models are competitive. One is the familiar Dornbusch-Frankel equation which uses differentials in inflation, output, interest rates and money supplies. Another is a combined model, the Dornbusch-Frankel equation with an additional term for the yield differential. Models using differentials in real interest rates do well in one instance.
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用神经网络预测汇率:时间变化、非平稳性和因果模型
使用人工智能预测汇率有两个主要问题,方法的选择和因果模型的选择。更为复杂的是数据的非平稳性。本研究使用七个计量经济学模型,比较了人工神经网络、非线性回归和递归神经网络在1-3个月内预测四种主要汇率的情况。模型在移动窗口上进行训练,并在水平和差异方面进行估计。有三个关键发现。首先,多层感知器几乎总是能实现最准确的预测,回归排在第二位。递归神经网络远远排在第三位。其次,在1个月和2个月的视野中,感知器通常在差异方面更好。然而,在3个月的时间里,差异的准确性会下降。第三,感知器支持包括价格水平、利率和收益率的国际差异在内的模型,这些模型在大多数情况下都能实现最佳预测。其他几款车型也很有竞争力。一个是人们熟悉的多恩布什-弗兰克尔方程,它使用通货膨胀、产出、利率和货币供应的差异。另一个是一个组合模型,多恩布什-弗兰克尔方程,其中包含一个额外的收益微分项。使用实际利率差异的模型在一个例子中表现良好。
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来源期刊
INTERNATIONAL ECONOMIC JOURNAL
INTERNATIONAL ECONOMIC JOURNAL Economics, Econometrics and Finance-Economics, Econometrics and Finance (all)
CiteScore
2.10
自引率
0.00%
发文量
22
期刊介绍: International Economic Journal is a peer-reviewed, scholarly journal devoted to publishing high-quality papers and sharing original economics research worldwide. We invite theoretical and empirical papers in the broadly-defined development and international economics areas. Papers in other sub-disciplines of economics (e.g., labor, public, money, macro, industrial organizations, health, environment and history) are also welcome if they contain international or cross-national dimensions in their scope and/or implications.
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