Daily prediction of short-term trends of crude oil prices using neural networks exploiting multimarket dynamics

This paper documents a systematic investigation on the predictability of short-term trends of crude oil prices on a daily basis. In stark contrast with longer-term predictions of crude oil prices, short-term prediction with time horizons of 1–3 days posits an important problem that is quite different from what has been studied in the literature. The problem of such short-term predicability is tackled through two aspects. The first is to examine the existence of linear or nonlinear dynamic processes in crude oil prices. This sub-problem is addressed with statistical analysis involving the Brock-Dechert-Scheinkman test for nonlinearity. The second aspect is to test the capability of artificial neural networks (ANN) for modeling the implicit nonlinearity for prediction. Four experimental models are designed and tested with historical data: (1) using only the lagged returns of filtered crude oil prices as input to predict the returns of the next days; this is used as the benchmark, (2) using only the information set of filtered crude oil futures price as input, (3) combining the inputs from the benchmark and second models, and (4) combing the inputs from the benchmark model and the intermarket information. In order to filter out the noise in the original price data, the moving averages of prices are used for all the experiments. The results provided sufficient evidence to the predictability of crude oil prices using ANN with an out-of-sample hit rate of 80%, 70%, and 61% for each of the next three days’ trends.

[1]  Lean Yu,et al.  A New Method for Crude Oil Price Forecasting Based on Support Vector Machines , 2006, International Conference on Computational Science.

[2]  Heping Pan,et al.  A Basic Theory Of Intelligent Finance , 2011 .

[3]  Heinz-Hermann Erbe Congress Report , 2016, Oncology Research and Treatment.

[4]  P. McNelis Neural networks in finance : gaining predictive edge in the market , 2005 .

[5]  Ronald D. Ripple,et al.  Hedgers, Investors and Futures Return Volatility: the Case of NYMEX Crude Oil , 2006 .

[6]  Kurt Hornik,et al.  Multilayer feedforward networks are universal approximators , 1989, Neural Networks.

[7]  Anthony E. Bopp,et al.  Are petroleum futures prices good predictors of cash value , 1987 .

[8]  Lean Yu,et al.  A Rough-Set-Refined Text Mining Approach for Crude Oil Market Tendency Forecasting , 2005 .

[9]  Joseph G. Haubrich,et al.  Oil prices: backward to the future? , 2004 .

[10]  John Yearwood,et al.  Predicting Australian Stock Market Index Using Neural Networks Exploiting Dynamical Swings and Intermarket Influences , 2003, J. Res. Pract. Inf. Technol..

[11]  Andrea Coppola,et al.  Forecasting Oil Price Movements: Exploiting the Information In the Future Market , 2007 .

[12]  Vassilis S. Kodogiannis,et al.  Forecasting Financial Time Series using Neural Network and Fuzzy System-based Techniques , 2002, Neural Computing & Applications.

[13]  E. Michael Azoff,et al.  Neural Network Time Series: Forecasting of Financial Markets , 1994 .

[14]  Didier Sornette,et al.  Intelligent finance—an emerging direction , 2006 .

[15]  Heping Pan,et al.  Multilevel Stochastic Dynamic Process Models and Possible Applications in Global Financial Market Analysis and Surveillance , 2006, JCIS.

[16]  J. Nazuno Haykin, Simon. Neural networks: A comprehensive foundation, Prentice Hall, Inc. Segunda Edición, 1999 , 2000 .

[17]  S. Moshiri,et al.  Forecasting Nonlinear Crude Oil Futures Prices , 2006 .

[18]  B. LeBaron,et al.  A test for independence based on the correlation dimension , 1996 .

[19]  Jeff D. Colgan,et al.  The International Energy Agency , 2009 .

[20]  N. Huang,et al.  The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis , 1998, Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences.

[21]  M. A. Kaboudan,et al.  Compumetric forecasting of crude oil prices , 2001, Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No.01TH8546).

[22]  Holger R. Maier,et al.  An Evaluation of Methods for the Selection of Inputs for an Artificial Neural Network Based River Model , 2006 .

[23]  Imad A. Moosa,et al.  The relationship between spot and futures prices: Evidence from the crude oil market , 1999 .

[24]  R. Pindyck The long-run evolution of energy prices , 1999 .

[25]  Kin Keung Lai,et al.  Oil Price Forecasting with an EMD-Based Multiscale Neural Network Learning Paradigm , 2007, International Conference on Computational Science.

[26]  M.H. Hassoun,et al.  Fundamentals of Artificial Neural Networks , 1996, Proceedings of the IEEE.

[27]  Analysis of the Impact of High Oil Prices on the Global Economy , 2004 .

[28]  Marc-André Mittermayer,et al.  Text Mining Systems for Market Response to News: A Survey , 2007 .

[29]  A. Refenes Neural Networks in the Capital Markets , 1994 .

[30]  Tony Jan,et al.  Machine Learning Techniques and Use of Event Information for Stock Market Prediction: A Survey and Evaluation , 2005, International Conference on Computational Intelligence for Modelling, Control and Automation and International Conference on Intelligent Agents, Web Technologies and Internet Commerce (CIMCA-IAWTIC'06).

[31]  Friedrich Recknagel,et al.  Ecological Informatics: Scope, Techniques and Applications , 2006 .

[32]  Hillard G. Huntington,et al.  Oil Price Forecasting in the 1980s: What Went Wrong?* , 1994 .

[33]  Ralph Neuneier,et al.  How to Train Neural Networks , 1996, Neural Networks: Tricks of the Trade.

[34]  Ralph Grothmann,et al.  Multi agent market modeling based on neutral networks , 2002 .

[35]  Bin Li,et al.  A New Approach to Forecast Crude Oil Price Based on Fuzzy Neural Network , 2007, Fourth International Conference on Fuzzy Systems and Knowledge Discovery (FSKD 2007).

[36]  Kin Keung Lai,et al.  CRUDE OIL PRICE FORECASTING WITH TEI@I METHODOLOGY ∗ , 2005 .