Modelling and Forecasting of EUR/USD Exchange Rate Using Ensemble Learning Approach

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
I. Boyoukliev, H. Kulina, S. Gocheva-Ilieva
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引用次数: 0

Abstract

Abstract The aim of the study is to obtain an accurate result from forecasting the EUR/USD exchange rate. To this end, high-performance machine learning models using CART Ensembles and Bagging method have been developed. Key macroeconomic indicators have been also examined including inflation in Europe and the United States, the index of unemployment in Europe and the United States, and more. Official monthly data in the period from December 1998 to December 2021 have been studied. A careful analysis of the macroeconomic time series has shown that their lagged variables are suitable for model’s predictors. CART Ensembles and Bagging predictive models having been built, explaining up to 98.8% of the data with MAPE of 1%. The degree of influence of the considered macroeconomic indicators on the EUR/USD rate has been established. The models have been used for forecasting one-month-ahead. The proposed approach could find a practical application in professional trading, budgeting and currency risk hedging.
基于集成学习方法的欧元/美元汇率建模与预测
摘要本研究的目的是对欧元/美元汇率进行准确的预测。为此,利用CART集成和Bagging方法开发了高性能机器学习模型。还审查了主要宏观经济指标,包括欧洲和美国的通货膨胀、欧洲和美国的失业指数等。研究了1998年12月至2021年12月期间的官方月度数据。对宏观经济时间序列的仔细分析表明,它们的滞后变量适合于模型的预测因子。CART集成和Bagging预测模型已经建立,MAPE为1%,解释了高达98.8%的数据。所考虑的宏观经济指标对欧元/美元汇率的影响程度已经确定。这些模型已被用于预测未来一个月的情况。该方法可能在专业交易、预算编制和货币风险对冲中得到实际应用。
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来源期刊
Cybernetics and Information Technologies
Cybernetics and Information Technologies COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
3.20
自引率
25.00%
发文量
35
审稿时长
12 weeks
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