Irrational fads, short-term memory emulation and asset predictability

Opponents of the efficient markets hypothesis argue that predictability reflects the psychological factors and “fads” of irrational investors in a speculative market. In that, conventional time series analysis often fails to give an accurate forecast for financial processes due to inherent noise patterns, fat tails, and nonlinear components. A recent stream of literature on behavioral finance has revealed that boundedly rational agents using simple rules of thumb for their decisions under uncertainty provides a more realistic description of human behavior than perfect rationality with optimal decision rules. Consequently, the application of technical analysis in trading could produce high returns. Machine learning techniques have been employed in economic systems in modeling nonlinearities and simulating human behavior. In this study, we expand the literature that evaluates return sign forecasting ability by introducing a recurrent neural network approach that combines heuristic learning and short-term memory emulation, thus mimicking the decision-making process of boundedly rational agents. We investigate the relative direction-of-change predictability of the neural network structure implied by the Lee–White–Granger test as well as compare it to other well-established models for the DJIA index. Moreover, we examine the relationship between stock return volatility and returns. Overall, the proposed model presents high profitability, in particular during “bear” market periods.

[1]  D. Rumelhart,et al.  Generalization by weight-elimination applied to currency exchange rate prediction , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.

[2]  Cheolbeom Park,et al.  What Do We Know About the Profitability of Technical Analysis? , 2007 .

[3]  A. Christie,et al.  The stochastic behavior of common stock variances: value , 1982 .

[4]  L. Summers,et al.  The Noise Trader Approach to Finance , 1990 .

[5]  Fred Collopy,et al.  How effective are neural networks at forecasting and prediction? A review and evaluation , 1998 .

[6]  Perry J. Kaufman,et al.  Trading Systems and Methods , 1997 .

[7]  Ramazan Gençay,et al.  Optimization of technical trading strategies and the profitability in security markets , 1998 .

[8]  Guojun Wu,et al.  Asymmetric Volatility and Risk in Equity Markets , 1997 .

[9]  Andrew W. Lo,et al.  Foundations of Technical Analysis: Computational Algorithms, Statistical Inference, and Empirical Implementation , 2000 .

[10]  Martin T. Hagan,et al.  Gauss-Newton approximation to Bayesian learning , 1997, Proceedings of International Conference on Neural Networks (ICNN'97).

[11]  Richard M. Levich,et al.  The Significance of Technical Trading-Rule Profits in the Foreign Exchange Market: a Bootstrap Approach , 1991 .

[12]  A. Timmermann,et al.  Predictability of Stock Returns: Robustness and Economic Significance , 1995 .

[13]  Clive W. J. Granger,et al.  Testing for neglected nonlinearity in time series models: A comparison of neural network methods and alternative tests , 1993 .

[14]  Francis X. Diebold,et al.  The Rodney L. White Center for Financial Research Financial Asset Returns, Direction-of-Change Forecasting and Volatility , 2003 .

[15]  S. Sosvilla‐Rivero,et al.  Dancing with bulls and bears: Nearest-neighbour forecasts for the Nikkei index , 1999 .

[16]  M. Hashem Pesaran,et al.  A Simple Nonparametric Test of Predictive Performance , 1992 .

[17]  F. Fabozzi,et al.  Stability Tests for Alphas and Betas Over Bull and Bear Market Conditions , 1977 .

[18]  Tony Plummer,et al.  Forecasting Financial Markets: The Psychology of Successful Investing , 1989 .

[19]  J. Murphy Technical Analysis of the Futures Markets: A Comprehensive Guide to Trading Methods and Applications , 1986 .

[20]  C. K. Ma,et al.  Memories, heteroscedasticity, and price limit in Currency futures markets , 1992 .

[21]  Timothy Masters,et al.  Advanced algorithms for neural networks: a C++ sourcebook , 1995 .

[22]  Andrei Shleifer,et al.  Good News for Value Stocks: Further Evidence on Market Efficiency , 1995 .

[23]  Kurt Hornik,et al.  Approximation capabilities of multilayer feedforward networks , 1991, Neural Networks.

[24]  C. Hommes Heterogeneous Agent Models in Economics and Finance , 2005 .

[25]  Ken-ichi Funahashi,et al.  On the approximate realization of continuous mappings by neural networks , 1989, Neural Networks.

[26]  P. Krugman,et al.  Trigger Strategies and Price Dynamics in Equity and Foreign Exchange Markets , 1987 .

[27]  Sonnan Chen,et al.  An Examination of Risk-Return Relationship in Bull and Bear Markets Using Time-Varying Betas , 1982, Journal of Financial and Quantitative Analysis.

[28]  P. Giot Relationships Between Implied Volatility Indexes and Stock Index Returns , 2005 .

[29]  Y. Hochberg A sharper Bonferroni procedure for multiple tests of significance , 1988 .

[30]  E. Fama,et al.  Filter Rules and Stock-Market Trading , 1966 .

[31]  Camillo Lento,et al.  A Combined Signal Approach to Technical Analysis on the S&P 500 , 2008 .

[32]  Andrew Harvey,et al.  Forecasting, Structural Time Series Models and the Kalman Filter , 1990 .

[33]  C. Kirkpatrick,et al.  Technical Analysis: The Complete Resource for Financial Market Technicians , 2006 .

[34]  C. Hommes Chapter 23 Heterogeneous Agent Models in Economics and Finance , 2006 .

[35]  S. Sosvilla‐Rivero,et al.  On the profitability of technical trading rules based on artificial neural networks:: Evidence from the Madrid stock market , 2000 .

[36]  Halbert White,et al.  Learning in Artificial Neural Networks: A Statistical Perspective , 1989, Neural Computation.

[37]  E. Fama,et al.  Size and Book-to-Market Factors in Earnings and Returns , 1995 .

[38]  Douglas Wood,et al.  The profitability of daily stock market indices trades based on neural network predictions: case study for the S&P 500, the DAX, the TOPIX and the FTSE in the period 1965–1999 , 2004 .

[39]  H. Simon,et al.  Models of Man. , 1957 .

[40]  A. Timmermann,et al.  Duration Dependence in Stock Prices , 2003 .

[41]  Ramazan Gençay,et al.  The predictability of security returns with simple technical trading rules , 1998 .

[42]  Chung-Ming Kuan,et al.  Reexamining the Profitability of Technical Analysis with Data Snooping Checks , 2005 .

[43]  Cars H. Hommes,et al.  Financial markets as nonlinear adaptive evolutionary systems , 2001 .

[44]  Jeffrey L. Elman,et al.  Finding Structure in Time , 1990, Cogn. Sci..

[45]  Hecht-Nielsen Theory of the backpropagation neural network , 1989 .

[46]  Robert C. Merton,et al.  On Market Timing and Investment Performance Part II: Statistical Procedures for Evaluating Forecasting Skills , 2015 .

[47]  George Cybenko,et al.  Approximation by superpositions of a sigmoidal function , 1989, Math. Control. Signals Syst..

[48]  Xiru Zhang Non-Linear Predictive Models for Intra-Day Foreign Exchange Trading , 1994 .

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

[50]  Gwilym M. Jenkins,et al.  Time series analysis, forecasting and control , 1972 .

[51]  Halbert White,et al.  Artificial neural networks: an econometric perspective ∗ , 1994 .