Testing Forecast Accuracy of Foreign Exchange Rates: Predictions from Feed Forward and Various Recurrent Neural Network Architectures

Khurshid M. Kiani1, Terry L. Kastens2
1Department of Finance, Bang College of Business, Kazakhstan Institute of Management, Economics and Strategic Research (KIMEP), Almaty, Republic of Kazakhstan 050010#TAB#
2Department of Agricultural Economics, Kansas State University, Manhattan, Kansas, USA

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