ESTIMATING THE LYAPUNOV EXPONENT OF A CHAOTIC SYSTEM WITH NONPARAMETRIC REGRESSION

被引:92
作者
MCCAFFREY, DF
ELLNER, S
GALLANT, AR
NYCHKA, DW
机构
[1] N CAROLINA STATE UNIV,DEPT STAT,RALEIGH,NC 27695
[2] N CAROLINA STATE UNIV,BIOMATH PROGRAM,RALEIGH,NC 27695
关键词
DYNAMIC SYSTEMS; NEURAL NETWORKS; NONLINEAR DYNAMICS; NONLINEAR TIME SERIES MODELS; PROJECTION PURSUIT REGRESSION; THIN PLATE SMOOTHING SPLINES;
D O I
10.2307/2290206
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
We discuss procedures based on nonparametric regression for estimating the dominant Lyapunov Exponent lambda-1 from time series data generated by a nonlinear autoregressive system with additive noise. For systems with bounded fluctuations, lambda-1 > 0 is the defining feature of chaos. Thus our procedures can be used to examine time series data for evidence of chaotic dynamics. We show that a consistent estimator of the partial derivatives of the autoregression function can be used to obtain a consistent estimator of lambda-1. The rate of convergence we establish is quite slow; a better rate of convergence is derived heuristically and supported by simulations. Simulation results from several implementations-one "local" (thin-plate splines) and three "global" (neural nets, radial basis functions, and projection pursuit)-am presented for two deterministic chaotic systems. Local splines and neural nets yield accurate estimates of the Lyapunov exponent; however, the spline method is sensitive to the choke of the embedding dimension. Limited results for a noisy system suggest that the thin-plate spline and neural net regression methods also provide reliable values of the Lyapunov exponent in this case.
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页码:682 / 695
页数:14
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