COMPARISON BETWEEN HYBRID QUANTILE REGRESSION NEURAL NETWORK AND AUTOREGRESSIVE INTEGRATED MOVING AVERAGE WITH EXOGENOUS VARIABLE FOR FORECASTING OF CURRENCY INFLOW AND OUTFLOW IN BANK INDONESIA

Authors

  • Dedy Dwi Prastyo Department of Statistics, Institut Teknologi Sepuluh Nopember, Kampus ITS-Sukolilo, Surabaya 60111, Indonesia
  • Suhartono Suhartono Department of Statistics, Institut Teknologi Sepuluh Nopember, Kampus ITS-Sukolilo, Surabaya 60111, Indonesia
  • Agnes Ona Bliti Puka Study Program of Mathematics Education, Institut Keguruan dan Teknologi Larantuka, Larantuka Flores Timur 86212, Indonesia
  • Muhammad Hisyam Lee Mathematics Department, Universiti Teknologi Malaysia, 81310 UTM Johor Bahru, Johor, Malaysia

DOI:

https://doi.org/10.11113/jt.v80.11785

Keywords:

ARIMAX, neural network, quantile regression, inflow, outflow

Abstract

Some problems arise in time series analysis are nonlinearity and heteroscedasticity. Methods that can be used to analyze such problems are neural network and quantile regression. There are a lot of studies and developments on both methods, but the study that focuses on the performances of combination of these two methods applied in real case are still limited. Therefore, this study performed a comparison between hybrid Quantile Regression Neural Network (QRNN) and Autoregressive Integrated Moving Average with Exogenous Variable (ARIMAX). Both methods were employed to model the currency inflow and outflow from Bank Indonesia in Nusa Tenggara Timur province. Based on the empirical result, the hybrid QRNN method provided better forecasting for currency outflow whereas the ARIMAX resulted in better forecasting for the inflow. 

References

Zhang, G. P. 2003. Time Series Forecasting using a Hybrid ARIMA and Neural Network Model. Neurocomputing. 50: 159-175.

Liu, L. M. 1986. Identification of Time Series Models in the Presence of Calendar Variation. International Journal of Forecasting. 2(3): 357-372.

Lee, M. H., Suhartono and N. A. Hamzah. 2010. Calendar Variation Model Based on ARIMAX for Forecasting Sales Data with Ramadhan Effect. Regional Conference on Statistical Sciences (RCSS’10). Malaysia Institute of Statistics, Universiti Teknologi MARA. 349-361.

Gardner, E. S. 1998. A Simple Method of Computing Prediction Intervals for Time Series Forecasts. Management Science. 34(4): 541-546.

Chatfield, C. 2000. Time-Series Forecasting. London: CRC Press.

Taylor, J. W. and D. W. Bunn. 1999. Investigating Improvements in the Accuracy of Prediction Interval for Combinations of Forecast: A Simulation Study. International Journal of Forecasting. 15: 325-339.

Konker, R. and G. Bassett. 1982. Robust Test for Heteroscedasticity Based on Regression Quantile. Econometrica. 50(1): 43-61.

Koenker, R. and K. F. Hallock. 2001. Quantile Regression: An Introduction. Journal of Economic Perspective. 15(4): 143-156.

Taylor, J. W. 2000. A Quantile Regression Neural Network Approach to Estimating the Conditional Density of Multiperiod Returns. Journal of Forecasting. 19: 299-311.

Arunraj, N. S. and D. Ahrens. 2015. A Hybrid Seasonal Autoregressive Integrated Moving Average and Quantile Regression for Daily Food Sales Forecasting. International Journal Production Economics. 170: 321-335.

Bowerman, B. L. and R. T. O’Connell. 1993. Forecasting and Time Series: An Applied Approach. Third Edition. Belmont, CA: Duxbury Press.

Cryer, J. D. and K. S. Chan. 2008. Time Series Analysis: With Applications in R. Second Edition. New York: Springer.

Suhartono, M. H. Lee, and D. D. Prastyo. 2015. Two Levels ARIMAX and Regression Models for Forecasting Time Series Data with Calendar Variation Effects. Innovation and Analytics Conference and Exhibition (IACE 2015). Kedah, Malaysia. 29 September - 1 October 2015. AIP Conference Proceedings, 1691(050026).

Prastyo, D. D., D. Handayani, S. F. Fam, S. P. Rahayu, Suhartono, and N. L. P. S. P. Paramita. 2018. Risk Evaluation on Leading Companies in Property and Real Estate Subsector at IDX: A Value-at-Risk with ARMAX-GARCHX approach and duration test. The 2nd International Conference on Science (ICOS). Makassar, Indonesia. 2-3 November 2017. Journal of Physics: Conf. Series. 979 (012094).

Apriliadara, M., Suhartono and D. D. Prastyo. 2016. VARI-X Model for Currency Inflow and Outflow with Eid Fitr Effect in Indonesia. The 2016 Conference On Fundamental And Applied Science For Advanced Technology (CONFAST 2016). Yogyakarta, Indonesia. 25-26 January 2016. AIP Conference Proceedings, 1746(020041).

Cannon, A. J. 2011. Quantile Regression Neural Network: Implementation in R and Application to Precipitation Downscaling. Computer and Geosciences. 37: 1277-1284.

Hyndman, R. J. and A. B. Koehler. 2006. Another Look at Measures of Forecast Accuracy. International Journal of Forecasting. 22(4): 679-688.

Suhartono, S. P. Rahayu, D. D. Prastyo, D. G. P. Wijayanti, and Juliyanto. 2017. Hybrid Model for Forecasting Time Series with Trend, Seasonal and Salendar Variation Patterns. 1st International Conference on Applied & Industrial Mathematics and Statistics 2017 (ICoAIMS 2017). Kuantan, Pahang, Malaysia. 8-10 Augustus 2017. Journal of Physics: Conf. Series. 890 (012160).

Suhartono, P. D. Saputri, F. F. Amalia, D. D. Prastyo, B. S. S. Ulama. 2017. Model Selection in Feedforward Neural Network for Forecasting Inflow and Outflow in Indonesia. Communications in Computer and Information Science. 788: 95-105.

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Published

2018-08-21

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Section

Science and Engineering

How to Cite

COMPARISON BETWEEN HYBRID QUANTILE REGRESSION NEURAL NETWORK AND AUTOREGRESSIVE INTEGRATED MOVING AVERAGE WITH EXOGENOUS VARIABLE FOR FORECASTING OF CURRENCY INFLOW AND OUTFLOW IN BANK INDONESIA. (2018). Jurnal Teknologi, 80(6). https://doi.org/10.11113/jt.v80.11785