Is it Possible to Study Chaotic and ARCH Behaviour Jointly? Application of a Noisy Mackey-Glass Equation with Heteroskedastic Errors to the Paris Stock Exchange Returns Series

被引:37
作者
Catherine Kyrtsou
Michel Terraza
机构
[1] Department of Applied Economics, Lameta, Espace Richter, University of Montpellier I, F-4054 Montpellier, Cedex 1, Avenue de la Mer
关键词
correlation dimension; forecasting; GARCH effects; Lyapunov exponents; Mackey-Glass equation; noisy chaos; volatility clustering;
D O I
10.1023/A:1023939610962
中图分类号
学科分类号
摘要
Most recent empirical works that apply sophisticated statistical procedures such as a correlation-dimension method have shown that stock returns are highly complex. The estimated correlation dimension is high and there is little evidence of low-dimensional deterministic chaos. Taking the complex behaviour in stock markets into account, we think it is more robust than the traditional stochastic approach to model the observed data by a nonlinear chaotic model disturbed by dynamic noise. In fact, we construct a model having negligible or even zero autocorrelations in the conditional mean, but a rich structure in the conditional variance. The model is a noisy Mackey-Glass equation with errors that follow a GARCH(p,q) process. This model permits us to capture volatility-clustering phenomena. Its characteristic is that volatility clustering is interpreted as an endogenous phenomenon. The main objective of this article is the identification of the underlying process of the Paris Stock Exchange returns series CAC40. To this end, we apply several different tests to detect longmemory components and chaotic structures. Forecasting results for the CAC40 returns series, will conclude this paper. © 2003 Kluwer Academic Publishers.
引用
收藏
页码:257 / 276
页数:19
相关论文
共 53 条
[21]  
Goffe W.L., Ferrier G.D., Rogers J., Global optimization of statistical functions with simulated annealing, Journal of Econometrics, 60, pp. 65-99, (1994)
[22]  
Granger C.W.J., Joyeux R., An introduction to long memory time series and fractional differencing, Journal of Time Series Analysis, 1, pp. 1-15, (1980)
[23]  
Grassberger P., Procaccia I., Measuring the strangeness of strange attractors, Physica, 9 D, pp. 189-208, (1983)
[24]  
Guegan D., Stochastic versus deterministic chaos, (1994)
[25]  
Haugen R.A., Beast on Wall Street-How Stock Volatility Devours Our Wealth, (1999)
[26]  
Hsieh D.A., Testing nonlinear dependence in daily foreign exchange rates, Journal of Business, 62, pp. 339-368, (1989)
[27]  
Hsieh D.A., Chaos and nonlinear dynamics: Application to financial markets, The Journal OfFinance, XLVI, 5, pp. 1839-1877, (1991)
[28]  
Iori G., A microsimulation of traders activity in the stock market: the role of heterogeneity, agents' interactions and trade frictions, Forthcoming in International Journal of Modern Physics C, (1999)
[29]  
Kuan C.-M., Liu T., Artificial neural networks: an econometric perspective, Journal of Applied Econometrics, 10, pp. 347-364, (1995)
[30]  
Kugiumtzis D., Lingjaerde O.C., Christophersen N., Regularized local linear prediction of chaotic time series, Physica D, 112, pp. 344-360, (1998)