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运用深度学习模型预测美元对孟加拉塔卡的汇率:纳入影响货币汇率的宏观经济因素。

Forecasting the United State Dollar(USD)/Bangladeshi Taka (BDT) exchange rate with deep learning models: Inclusion of macroeconomic factors influencing the currency exchange rates.

机构信息

Department of Electrical and Computer Engineering, North South University, Bashundhara, Dhaka, Bangladesh.

出版信息

PLoS One. 2023 Feb 7;18(2):e0279602. doi: 10.1371/journal.pone.0279602. eCollection 2023.

Abstract

Forecasting a currency exchange rate is one of the most challenging tasks nowadays. Due to government monetary policy and some uncertain factors, such as political stability, it becomes difficult to correctly forecast the currency exchange rate. Previously, many investigations have been done to forecast the exchange rate of the United State Dollar(USD)/Bangladeshi Taka(BDT) using statistical time series models, machine learning models, and neural network models. But none of the previous methods considered the underlying macroeconomic factors of the two countries, such as GDP, import/export, government revenue, etc., for forecasting the USD/BDT exchange rate. We have included various time-sensitive macroeconomic features directly impacting the USD/BDT exchange rate to address this issue. These features will create a new dimension for researchers to predict and forecast the USD/BDT exchange rate. We have used various types of models for predicting and forecasting the USD/BDT exchange rate and found that Among all our models, Time Distributed MLP provides the best performance with an RMSE of 0.1984. Finally, we have proposed a pipeline for forecasting the USD/BDT exchange rate, which reduced the RMSE of Time Distributed MLP to 0.1900 and has proven effective in reducing the error of all our models.

摘要

预测货币汇率是当今最具挑战性的任务之一。由于政府货币政策和一些不确定因素,如政治稳定性,正确预测货币汇率变得困难。以前,已经有许多研究使用统计时间序列模型、机器学习模型和神经网络模型来预测美元/孟加拉塔卡(BDT)的汇率。但是,以前的方法都没有考虑到两国的基本宏观经济因素,如 GDP、进出口、政府收入等,来预测美元/BDT 汇率。我们已经包含了各种直接影响美元/BDT 汇率的时间敏感型宏观经济特征来解决这个问题。这些特征将为研究人员提供一个新的维度来预测和预测美元/BDT 汇率。我们已经使用了各种类型的模型来预测和预测美元/BDT 汇率,发现我们所有的模型中,时间分布式 MLP 提供了最好的性能,其均方根误差为 0.1984。最后,我们提出了一个预测美元/BDT 汇率的管道,该管道将时间分布式 MLP 的均方根误差降低到 0.1900,并已被证明在降低所有模型的误差方面是有效的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9d53/9904501/bd1c1166e41d/pone.0279602.g001.jpg

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