SIMULATION OF THE EXCHANGE RATE USING ECONOMIC AND MATHEMATICAL METHODS

Oleksandr Novoseletskyy, Sabina Jurkaitienė, Ostap Melnyk
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Abstract

The article is devoted to a comparative analysis of the use of adaptive methods and models, autoregressive models and neural networks in forecasting the exchange rate of the main reserve currencies: the euro, the Swiss franc, the Japanese yen and the British pound against the US dollar. In the course of the research, the works of Ukrainian and foreign scientists on this topic were reviewed and it was determined that the most used methods and models in forecasting the exchange rate based on time series are autoregression models (represented by ARIMA and SARIMA models), neural networks (represented by MLP and ELM architectures) and exponential smoothing methods. In the process of building the models, time series were examined for stationarity based on the Dickey-Fuller test and additive decomposition of the studied time series was performed to determine their main components (trend, seasonality, random component). Construction of forecast models was carried out, on the basis of which their comparative analysis took place. The main shortcomings and problems of using the selected methods are demonstrated and the best predictive models are determined. It is determined that the main drawback of all time series forecasting methods is their "adaptability" to the input data, and the desire to improve the estimation characteristics of the models as a result can lead to the fact that the forecasts differ significantly from the actual values. It was also determined that for forecasting the exchange rate of selected currency pairs, neural networks are best suited, which have both high evaluation characteristics and correspondence of the forecast to real values, and the MLP network shows better results compared to the ELM network. High evaluation characteristics are also demonstrated by adaptive models. However, the linear nature of the forecast does not allow adaptive models to make an accurate forecast in the long term. Although autoregressive models show worse estimation characteristics, they outperform neural networks in terms of matching real values for individual currency pairs.
用经济学和数学方法模拟汇率
本文对自适应方法和模型、自回归模型和神经网络在预测主要储备货币欧元、瑞士法郎、日元和英镑对美元汇率方面的应用进行了比较分析。在研究过程中,回顾了乌克兰和国外科学家在这一主题上的工作,确定了基于时间序列预测汇率最常用的方法和模型是自回归模型(以ARIMA和SARIMA模型为代表)、神经网络(以MLP和ELM架构为代表)和指数平滑方法。在模型构建过程中,基于Dickey-Fuller检验对时间序列进行平稳性检验,并对所研究的时间序列进行加性分解,确定其主要成分(趋势、季节性、随机成分)。建立了预测模型,并在此基础上进行了对比分析。指出了所选方法的主要缺点和问题,并确定了最佳预测模型。可以确定的是,所有时间序列预测方法的主要缺点是它们对输入数据的“适应性”,并且希望改善模型的估计特性,从而导致预测结果与实际值存在显着差异。对于所选货币对的汇率预测,神经网络是最适合的,因为神经网络具有较高的评价特性和预测与实际值的对应性,并且与ELM网络相比,MLP网络表现出更好的结果。自适应模型也显示出高评价的特点。然而,预测的线性特性不允许自适应模型在长期内做出准确的预测。尽管自回归模型显示出较差的估计特征,但在匹配单个货币对的实际值方面,它们优于神经网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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