Indonesian rupiah exchange rate prediction using a hybrid ARIMA and neural network model

Clarita Yunet Rumaruson, L. J. Sinay, M. Tilukay
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引用次数: 1

Abstract

Indonesian Rupiah (IDR) exchange rate is an indicator to measure the economic stability in Indonesia. An effort to maintain the stability of the IDR exchange rate is very important because it would directly impact Indonesia’s national monetary conditions such as debt settlement and export-import. One way to measure government policy in reducing the exchange rate is by making a prediction. The accurate prediction is determined by the model which is suitable to the data characteristics. Generally, exchange rate data is nonlinear imply the linear model is less effective to be applied. This study aims to model and predict the IDR exchange rate using a hybrid ARIMA and Neural Network model (ARIMA-NN), where ARIMA is for modeling linear components while NN is for modeling nonlinear components. This study uses daily data on US Dollar (USD) to IDR exchange rate from January 2015 - June 2020, which is categorized into 80% for training and 20% for testing. The results show that the best hybrid ARIMA-NN model is a combined model of ARIMA (1,1,1) and the NN model with 1 input, 1 hidden layer, and 5 neurons. The accurate prediction of this model is quite good with the smallest MAPE value.
用ARIMA和神经网络混合模型预测印尼盾汇率
印尼盾(IDR)汇率是衡量印尼经济稳定性的一个指标。维持印尼卢比汇率稳定的努力非常重要,因为这将直接影响印尼的国家货币状况,如债务结算和进出口。衡量政府降低汇率政策的一种方法是进行预测。准确的预测是由适合数据特点的模型决定的。一般来说,汇率数据是非线性的,这意味着线性模型的应用效果较差。本研究旨在使用ARIMA和神经网络混合模型(ARIMA-NN)对IDR汇率进行建模和预测,其中ARIMA用于建模线性成分,而NN用于建模非线性成分。本研究使用2015年1月至2020年6月期间美元对印尼盾汇率的每日数据,其中80%用于培训,20%用于测试。结果表明,最佳的混合ARIMA-NN模型是ARIMA(1,1,1)与具有1个输入、1个隐藏层和5个神经元的NN模型的组合模型。该模型预测精度较高,且MAPE值最小。
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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