Prediction of Exchange Rates using Neural Networks and Performance by Friedman’s Test

Dr. N. Konda Reddy, Dr. K Murali Krishna
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Abstract

Forecasting of exchange rates plays a pivotal role in global trade, stocks and making the policies of exports and imports. USD exchange rates used widely for many business areas. In this paper an attempt is made to predict INR/USD exchange rates using Feed forward Neural Networks and Box-Jenkins methodology. The forecasting performance of the developed models were tested using error measures like MAE, MAPE and RMSE. The results shows FFNN model has better model than ARIMA model. The predicted exchange rates would vary between 83.06 and 83.28 for the out sample and this variation is exchange rates would help the business people and also for framing the government policies in the future. 
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利用神经网络预测汇率及弗里德曼检验的结果
汇率预测在全球贸易、股票和进出口政策制定中起着举足轻重的作用。美元汇率被广泛应用于许多商业领域。本文尝试使用前馈神经网络和 Box-Jenkins 方法预测印度卢比/美元汇率。使用 MAE、MAPE 和 RMSE 等误差指标测试了所开发模型的预测性能。结果显示,FFNN 模型比 ARIMA 模型更好。样本外的预测汇率将在 83.06 和 83.28 之间变化,这种汇率变化将有助于商业人士和政府未来政策的制定。
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