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Erschienen in: Neural Computing and Applications 6/2014

01.05.2014 | Original Article

A combination of artificial neural network and random walk models for financial time series forecasting

verfasst von: Ratnadip Adhikari, R. K. Agrawal

Erschienen in: Neural Computing and Applications | Ausgabe 6/2014

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Abstract

Properly comprehending and modeling the dynamics of financial data has indispensable practical importance. The prime goal of a financial time series model is to provide reliable future forecasts which are crucial for investment planning, fiscal risk hedging, governmental policy making, etc. These time series often exhibit notoriously haphazard movements which make the task of modeling and forecasting extremely difficult. As per the research evidence, the random walk (RW) is so far the best linear model for forecasting financial data. Artificial neural network (ANN) is another promising alternative with the unique capability of nonlinear self-adaptive modeling. Numerous comparisons of the performances of RW and ANN models have also been carried out in the literature with mixed conclusions. In this paper, we propose a combination methodology which attempts to benefit from the strengths of both RW and ANN models. In our proposed approach, the linear part of a financial dataset is processed through the RW model, and the remaining nonlinear residuals are processed using an ensemble of feedforward ANN (FANN) and Elman ANN (EANN) models. The forecasting ability of the proposed scheme is examined on four real-world financial time series in terms of three popular error statistics. The obtained results clearly demonstrate that our combination method achieves reasonably better forecasting accuracies than each of RW, FANN and EANN models in isolation for all four financial time series.

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Literatur
1.
Zurück zum Zitat Sun Y (2005) Exchange rate forecasting with an artificial neural network model: can we beat a random walk model? Master of Commerce and Management (MCM) thesis, Lincoln University, New Zealand Sun Y (2005) Exchange rate forecasting with an artificial neural network model: can we beat a random walk model? Master of Commerce and Management (MCM) thesis, Lincoln University, New Zealand
2.
Zurück zum Zitat Tyree AW, Long JA (1995) Forecasting currency exchange rates: neural networks and the random walk model. In: Proceedings of the third international conference on artificial intelligence applications, Wall Street, New York Tyree AW, Long JA (1995) Forecasting currency exchange rates: neural networks and the random walk model. In: Proceedings of the third international conference on artificial intelligence applications, Wall Street, New York
3.
Zurück zum Zitat Hussain AJ, Knowles A, Lisoba PJG, El-Deredy W (2008) Financial time series prediction using polynomial pipelined neural networks. J Expert Syst Appl 35:1186–1199CrossRef Hussain AJ, Knowles A, Lisoba PJG, El-Deredy W (2008) Financial time series prediction using polynomial pipelined neural networks. J Expert Syst Appl 35:1186–1199CrossRef
4.
Zurück zum Zitat Sewell MV (2009) The application of intelligent systems to financial time series analysis. PhD thesis, Department of Computer Science, UCL, London Sewell MV (2009) The application of intelligent systems to financial time series analysis. PhD thesis, Department of Computer Science, UCL, London
5.
Zurück zum Zitat Sewell M (2011) Characterization of financial time series. Research Note RN/11/01, Dept of Computer Science, UCL, London Sewell M (2011) Characterization of financial time series. Research Note RN/11/01, Dept of Computer Science, UCL, London
6.
Zurück zum Zitat Lemke C, Gabrys B (2010) Meta-learning for time series forecasting and forecast combination. J Neurocomputing 73:2006–2016CrossRef Lemke C, Gabrys B (2010) Meta-learning for time series forecasting and forecast combination. J Neurocomputing 73:2006–2016CrossRef
7.
Zurück zum Zitat Box GEP, Jenkins GM (1970) Time series analysis, forecasting and control, 3rd edn. Holden-Day, CAMATH Box GEP, Jenkins GM (1970) Time series analysis, forecasting and control, 3rd edn. Holden-Day, CAMATH
8.
Zurück zum Zitat Meese RA, Rogoff K (1983) Empirical exchange rate models of the seventies: do they fit out of sample? J Int Econ 14:3–24CrossRef Meese RA, Rogoff K (1983) Empirical exchange rate models of the seventies: do they fit out of sample? J Int Econ 14:3–24CrossRef
9.
Zurück zum Zitat Zhang GP (2003) Time series forecasting using a hybrid ARIMA and neural network model. J Neurocomputing 50:159–175CrossRefMATH Zhang GP (2003) Time series forecasting using a hybrid ARIMA and neural network model. J Neurocomputing 50:159–175CrossRefMATH
10.
Zurück zum Zitat Ghazali R, Hussain AJ, Nawi NM, Mohamad B (2009) Non-stationary and stationary prediction of financial time series using dynamic ridge polynomial neural network. J Neurocomputing 72:2359–2367CrossRef Ghazali R, Hussain AJ, Nawi NM, Mohamad B (2009) Non-stationary and stationary prediction of financial time series using dynamic ridge polynomial neural network. J Neurocomputing 72:2359–2367CrossRef
11.
Zurück zum Zitat Dunis CL, Williams M (2005) Modelling and trading the EUR/USD exchange rate: do neural network models perform better? J Deriv Use Trading Regul 8:211–239 Dunis CL, Williams M (2005) Modelling and trading the EUR/USD exchange rate: do neural network models perform better? J Deriv Use Trading Regul 8:211–239
12.
Zurück zum Zitat Khashei M, Bijari M (2010) An artificial neural network (p, d, q) model for time series forecasting. J Expert Syst Appl 37:479–489CrossRef Khashei M, Bijari M (2010) An artificial neural network (p, d, q) model for time series forecasting. J Expert Syst Appl 37:479–489CrossRef
13.
Zurück zum Zitat Zhang GP (2007) A neural network ensemble method with jittered training data for time series forecasting. J Inf Sci 177:5329–5346CrossRef Zhang GP (2007) A neural network ensemble method with jittered training data for time series forecasting. J Inf Sci 177:5329–5346CrossRef
14.
Zurück zum Zitat Bellgard C, Goldschmidt P (1999) Forecasting across frequencies: linearity and non-linearity. In: Proceedings of the conference on advanced investment technology, Gold Coast, Australia, pp 41–48 Bellgard C, Goldschmidt P (1999) Forecasting across frequencies: linearity and non-linearity. In: Proceedings of the conference on advanced investment technology, Gold Coast, Australia, pp 41–48
15.
Zurück zum Zitat Versace M, Bhatt R, Hinds O, Shiffer M (2004) Predicting the exchange traded fund DIA with a combination of genetic algorithms and neural networks. J Expert Syst Appl 27:417–425CrossRef Versace M, Bhatt R, Hinds O, Shiffer M (2004) Predicting the exchange traded fund DIA with a combination of genetic algorithms and neural networks. J Expert Syst Appl 27:417–425CrossRef
16.
Zurück zum Zitat Sermpinis G, Dunis C, Laws J, Stasinakis C (2012) Forecasting and trading the EUR/USD exchange rate with stochastic neural network combination and time-varying leverage. J Decis Support Syst 54:316–329 Sermpinis G, Dunis C, Laws J, Stasinakis C (2012) Forecasting and trading the EUR/USD exchange rate with stochastic neural network combination and time-varying leverage. J Decis Support Syst 54:316–329
17.
Zurück zum Zitat Dunis CL, Laws J, Sermpinis G (2011) Higher order and recurrent neural architectures for trading the EUR/USD exchange rate. J Quant Financ 11:615–629CrossRefMathSciNet Dunis CL, Laws J, Sermpinis G (2011) Higher order and recurrent neural architectures for trading the EUR/USD exchange rate. J Quant Financ 11:615–629CrossRefMathSciNet
18.
Zurück zum Zitat Hann TH, Steurer E (1996) Much ado about nothing? Exchange rate forecasting: neural networks vs. linear models using monthly and weekly data. J Neurocomputing 10:323–339CrossRefMATH Hann TH, Steurer E (1996) Much ado about nothing? Exchange rate forecasting: neural networks vs. linear models using monthly and weekly data. J Neurocomputing 10:323–339CrossRefMATH
19.
Zurück zum Zitat Khashei M, Bijari M (2011) A novel hybridization of artificial neural networks and ARIMA models for time series forecasting. J Appl Soft Comput 11:2664–2675CrossRef Khashei M, Bijari M (2011) A novel hybridization of artificial neural networks and ARIMA models for time series forecasting. J Appl Soft Comput 11:2664–2675CrossRef
20.
Zurück zum Zitat Timmermann A, Granger CWJ (2004) Efficient market hypothesis and forecasting. Int J Forecast 20:15–27CrossRef Timmermann A, Granger CWJ (2004) Efficient market hypothesis and forecasting. Int J Forecast 20:15–27CrossRef
21.
Zurück zum Zitat Hamzaçebi C, Akay D, Kutay F (2009) Comparison of direct and iterative artificial neural network forecast approaches in multi-periodic time series forecasting. J Expert Syst Appl 36:3839–3844CrossRef Hamzaçebi C, Akay D, Kutay F (2009) Comparison of direct and iterative artificial neural network forecast approaches in multi-periodic time series forecasting. J Expert Syst Appl 36:3839–3844CrossRef
22.
Zurück zum Zitat Kihoro JM, Otieno RO, Wafula C (2004) Seasonal time series forecasting: a comparative study of ARIMA and ANN models. Afr J Sci Technol 5:41–49 Kihoro JM, Otieno RO, Wafula C (2004) Seasonal time series forecasting: a comparative study of ARIMA and ANN models. Afr J Sci Technol 5:41–49
23.
Zurück zum Zitat Faraway J, Chatfield C (1998) Time series forecasting with neural networks: a comparative study using the airline data. J Appl Stat 47(2):231–250 Faraway J, Chatfield C (1998) Time series forecasting with neural networks: a comparative study using the airline data. J Appl Stat 47(2):231–250
24.
Zurück zum Zitat Hagan M, Menhaj M (1994) Training feedforward networks with the Marquardt algorithm. IEEE Trans Neural Netw 5:989–993CrossRef Hagan M, Menhaj M (1994) Training feedforward networks with the Marquardt algorithm. IEEE Trans Neural Netw 5:989–993CrossRef
25.
Zurück zum Zitat Elman JL (1990) Finding structure in time. J Cogn Sci 14(2):179–211CrossRef Elman JL (1990) Finding structure in time. J Cogn Sci 14(2):179–211CrossRef
26.
Zurück zum Zitat Lim CP, Goh WY (2005) The application of an ensemble of boosted Elman networks to time series prediction: a benchmark study. J Comput Intell 3:119–126 Lim CP, Goh WY (2005) The application of an ensemble of boosted Elman networks to time series prediction: a benchmark study. J Comput Intell 3:119–126
27.
Zurück zum Zitat Demuth H, Beale M, Hagan M (2010) Neural network toolbox user’s guide. The MathWorks, Natic Demuth H, Beale M, Hagan M (2010) Neural network toolbox user’s guide. The MathWorks, Natic
28.
Zurück zum Zitat Adhikari R, Agrawal RK (2012) Performance evaluation of weights selection schemes for linear combination of multiple forecasts. J Artif Intell Rev. doi:10.1007/s10462-012-9361-z Adhikari R, Agrawal RK (2012) Performance evaluation of weights selection schemes for linear combination of multiple forecasts. J Artif Intell Rev. doi:10.​1007/​s10462-012-9361-z
Metadaten
Titel
A combination of artificial neural network and random walk models for financial time series forecasting
verfasst von
Ratnadip Adhikari
R. K. Agrawal
Publikationsdatum
01.05.2014
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 6/2014
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-013-1386-y

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