In wavelet regression, choosing threshold value is a crucial issue. A too large value cuts too many coefficients resulting in over smoothing. Conversely, a too small threshold value allows many coefficients to be included in reconstruction, giving a wiggly estimate which result in under smoothing. However, the proper choice of threshold can be considered as a careful balance of these principles. This paper gives a very brief introduction to some thresholding selection methods. These methods include: Universal, Sure, Ebays, Two fold cross validation and level dependent cross validation. A simulation study on a variety of sample sizes, test functions, signal-to-noise ratios is conducted to compare their numerical performances using three diff...
International audienceIn this paper, we address the situation where we cannot differentiate wavelet-...
ABSTRACT: This paper presents a wavelet threshold selection technique for noise filtering and compar...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
A wavelet basis selection procedure is presented for wavelet regression. Both the basis and the thre...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
The core of the wavelet approach to nonparametric regression is thresholding of wavelet coefficients...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Usually, methods for thresholding wavelet estimators are implemented term by term, with empirical co...
International audienceIn this paper, we address the situation where we cannot differentiate wavelet-...
ABSTRACT: This paper presents a wavelet threshold selection technique for noise filtering and compar...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...
This paper is about using wavelets for regression. The main aim of the paper is to introduce and dev...
A wavelet basis selection procedure is presented for wavelet regression. Both the basis and the thre...
Noisy data are often fitted using a smoothing parameter, controlling the importance of two objective...
Wavelets have gained considerable popularity within the statistical arena in the context of nonparam...
International audienceWe propose a parametric wavelet thresholding procedure for estimation in the '...
Vita.Two research areas that have generated a great deal of interest in the field of statistics are ...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
. Various aspects of the wavelet approach to nonparametric regression are considered, with the overa...
This paper explores a class of empirical Bayes methods for level-dependent threshold selection in wa...
The core of the wavelet approach to nonparametric regression is thresholding of wavelet coefficients...
De-noising algorithms based on wavelet thresholding replace small wavelet coefficients by zero and k...
Usually, methods for thresholding wavelet estimators are implemented term by term, with empirical co...
International audienceIn this paper, we address the situation where we cannot differentiate wavelet-...
ABSTRACT: This paper presents a wavelet threshold selection technique for noise filtering and compar...
A data adaptive scheme for selecting thresholds for wavelet shrinkage-based noise removal is develop...