AbstractThe connections between information pooling and adaptability as well as superefficiency are considered. Separable rules, which figure prominently in wavelet and other orthogonal series methods, are shown to lack adaptability; they are necessarily not rate-adaptive. A sharp lower bound on the cost of adaptation for separable rules is obtained. We show that adaptability is achieved through information pooling. A tight lower bound on the amount of information pooling required for achieving rate-optimal adaptation is given. Furthermore, in a sharp contrast to the separable rules, it is shown that adaptive non-separable estimators can be superefficient at every point in the parameter spaces. The results demonstrate that information pooli...
This paper makes several contributions to the literature on the important yet difficult problem of es...
We consider the nonparametric regression estimation problem of recovering an unknown response functi...
AbstractGiven any countable collection of regression procedures (e.g., kernel, spline, wavelet, loca...
The connections between information pooling and adaptability as well as superefficiency are consider...
The connections between information pooling and adaptability as well as superefficiency are consider...
The connections between information pooling and adaptability as well as superefficiency are consider...
AbstractThe connections between information pooling and adaptability as well as superefficiency are ...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
Since Stein’s 1956 seminal paper, shrinkage has played a fundamental role in both parametric and non...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
AbstractWhen observations can be made without noise, it is known that adaptive information is no mor...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
International audienceIn the framework of nonparametric multivariate function estimation we are inte...
This paper makes several contributions to the literature on the important yet difficult problem of es...
We consider the nonparametric regression estimation problem of recovering an unknown response functi...
AbstractGiven any countable collection of regression procedures (e.g., kernel, spline, wavelet, loca...
The connections between information pooling and adaptability as well as superefficiency are consider...
The connections between information pooling and adaptability as well as superefficiency are consider...
The connections between information pooling and adaptability as well as superefficiency are consider...
AbstractThe connections between information pooling and adaptability as well as superefficiency are ...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
Since Stein’s 1956 seminal paper, shrinkage has played a fundamental role in both parametric and non...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
We study wavelet function estimation via the approach of block thresholding and ideal adaptation wit...
AbstractWhen observations can be made without noise, it is known that adaptive information is no mor...
Standard wavelet shrinkage procedures for nonparametric regression are restricted to equispaced samp...
International audienceIn the framework of nonparametric multivariate function estimation we are inte...
This paper makes several contributions to the literature on the important yet difficult problem of es...
We consider the nonparametric regression estimation problem of recovering an unknown response functi...
AbstractGiven any countable collection of regression procedures (e.g., kernel, spline, wavelet, loca...