Non‐parametric Curve Estimation by Wavelet Thresholding with Locally Stationary Errors

An important aspect in the modelling of biological phenomena in living organisms, whether the measurements are of blood pressure, enzyme levels, biomechanical movements or heartbeats, etc., is time variation in the data. Thus, the recovery of a ‘smooth’ regression or trend function from noisy time‐varying sampled data becomes a problem of particular interest. Here we use non‐linear wavelet thresholding to estimate a regression or a trend function in the presence of additive noise which, in contrast to most existing models, does not need to be stationary. (Here, non‐stationarity means that the spectral behaviour of the noise is allowed to change slowly over time). We develop a procedure to adapt existing threshold rules to such situations, e.g. that of a time‐varying variance in the errors. Moreover, in the model of curve estimation for functions belonging to a Besov class with locally stationary errors, we derive a near‐optimal rate for the ‐risk between the unknown function and our soft or hard threshold estimator, which holds in the general case of an error distribution with bounded cumulants. In the case of Gaussian errors, a lower bound on the asymptotic minimax rate in the wavelet coefficient domain is also obtained. Also it is argued that a stronger adaptivity result is possible by the use of a particular location and level dependent threshold obtained by minimizing Stein's unbiased estimate of the risk. In this respect, our work generalizes previous results, which cover the situation of correlated, but stationary errors. A natural application of our approach is the estimation of the trend function of non‐stationary time series under the model of local stationarity. The method is illustrated on both an interesting simulated example and a biostatistical data‐set, measurements of sheep luteinizing hormone, which exhibits a clear non‐stationarity in its variance.

[1]  L. Saulis,et al.  A general lemma on probabilities of large deviations , 1978 .

[2]  F. O'Sullivan,et al.  Deconvolution of episodic hormone data: an analysis of the role of season on the onset of puberty in cows. , 1988, Biometrics.

[3]  Ulrich Stadtmüller,et al.  Detecting dependencies in smooth regression models , 1988 .

[4]  Jane E. Robinson,et al.  Circannual cycles of luteinizing hormone and prolactin secretion in ewes during prolonged exposure to a fixed photoperiod: evidence for an endogenous reproductive rhythm. , 1989, Biology of reproduction.

[5]  Peter J. Diggle,et al.  A Non-Gaussian Model for Time Series with Pulses , 1989 .

[6]  G. Weiss,et al.  Littlewood-Paley Theory and the Study of Function Spaces , 1991 .

[7]  T. Gasser,et al.  Choice of bandwidth for kernel regression when residuals are correlated , 1992 .

[8]  I. Daubechies,et al.  Wavelets on the Interval and Fast Wavelet Transforms , 1993 .

[9]  M.,et al.  Wavelet threshold estimators for data withcorrelated , 1994 .

[10]  I. Johnstone,et al.  Ideal spatial adaptation by wavelet shrinkage , 1994 .

[11]  Morton B. Brown,et al.  Identification of aperiodic seasonality in non-Gaussian time series. , 1994, Biometrics.

[12]  Michael H. Neumann,et al.  Wavelet Thresholding: Beyond the Gaussian I.I.D. Situation , 1995 .

[13]  I. Johnstone,et al.  Adapting to Unknown Smoothness via Wavelet Shrinkage , 1995 .

[14]  Kai Schneider,et al.  Wavelet Smoothing of Evolutionary Spectra by Non-Linear Thresholding , 1996 .

[15]  R. Dahlhaus,et al.  Asymptotic statistical inference for nonstationary processes with evolutionary spectra , 1996 .

[16]  Michael H. Neumann SPECTRAL DENSITY ESTIMATION VIA NONLINEAR WAVELET METHODS FOR STATIONARY NON‐GAUSSIAN TIME SERIES , 1996 .

[17]  Yazhen Wang Function estimation via wavelet shrinkage for long-memory data , 1996 .

[18]  Rainer von Sachs,et al.  Wavelet thresholding in anisotropic function classes and application to adaptive estimation of evolutionary spectra , 1997 .

[19]  R. Dahlhaus Fitting time series models to nonstationary processes , 1997 .

[20]  I. Johnstone,et al.  Wavelet Threshold Estimators for Data with Correlated Noise , 1997 .

[21]  I. Johnstone,et al.  Minimax estimation via wavelet shrinkage , 1998 .

[22]  S. Mallat,et al.  Estimating Covariances of Locally Stationary Processes : Rates of Convergence of Best Basis Methods , 1998 .

[23]  Michael H. Neumann,et al.  Nonlinear Wavelet Estimation of Time-Varying Autoregressive Processes , 1999 .

[24]  I. Johnstone WAVELET SHRINKAGE FOR CORRELATED DATA AND INVERSE PROBLEMS: ADAPTIVITY RESULTS , 1999 .