Abstract

Money exchange between countries was done by using exchange rates. One of the examples was the exchange between Rupiah and US Dollar. Exchange rates prediction to US Dollar was an attempt to assist all related economic actors to avoid losses during the process of decision making. The prediction could be done by using artificial neural network method. Quickpropagation was one of artificial neural network models considered suitable for prediction. Quickpropagation network architecture consisted of input layer, hidden layer, and output layer. The input layer of quickpropagation architecture could be determined by using autoregression (AR) for the input pattern. In this research, the authors aim to optimize the quickpropagation network architecture method using Nguyen-Widrow weight initialization to predict the Rupiah exchange rate to US Dollar. The research data were the exchange rate from the BI website from May 2017 to July 2017 with a total of 57 data. The test was performed by using K-Fold Cross Validation with k = 11 values for data without AR and k = 8 for AR data. The results show that quickpropagation method using AR has better performance than quickpropagation method without AR in terms of MSE training and testing. The best parameters are in alpha 0,6 and hidden neuron 5, with MSE training value 0,03272 and MSE testing 0,02873 for selling rate and at alpha 0,9 and hidden neuron 5, with MSE training value 0,03297 and MSE testing 0,02828 for buying rate with maximal epoch 100.000 and target error 0,05.

Highlights

  • Every country definitely has a tool for trading which is called money

  • It is important for economic actors to know the latest information about the exchange rate, either the selling rate, the buying rate, or the middle rate in order to anticipate the movement of the Rupiah to US Dollar

  • Scenario 1 is the determination of input pattern without using AR model based on the study of Novita A.S. (2010) that is converted to the time series by using the previous two days input

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Summary

INTRODUCTION

Every country definitely has a tool for trading which is called money. Each of them has their own currency value. The huge exchange rate of the Rupiah to US Dollar resulted in considerable material losses This is due to lack of knowledge of economic actors. There are many journals and studies that refer to the case study of “Quickpropagation Architecture Optimization Based on Input Pattern Using Autoregression for Exchange Rate Prediction from Rupiah to US Dollar”. The research of the prediction system model of Rupiah exchange rate to US Dollar by Arief Budiman Hutauruk (2010) by using quickpropagation resulted that quickpropagation has higher accuracy value than backpropagation. Scientific Journal of Informatics , Vol 5, No 2, November 2018 proposal is to use the determination of input pattern with AR by using the prediction of quickpropagation neural network. This will be compared to the quickpropagation architecture without using AR

Evaluation Conclusion
Determination of Input Patterns
RESULTS AND DISCUSSION
CONCLUSION
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