A general lower bound is developed for the minimax risk when estimating an arbitrary functional. The bound is based on testing two composite hypotheses and is shown to be effective in estimating the nonsmooth functional (1/n)∑|θi| from an observation Y∼N(θ, In). This problem exhibits some features that are significantly different from those that occur in estimating conventional smooth functionals. This is a setting where standard techniques fail to yield sharp results. A sharp minimax lower bound is established by applying the general lower bound technique based on testing two composite hypotheses. A key step is the construction of two special priors and bounding the chi-square distance between two normal mixtures. An estimator is construct...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
AbstractWe consider estimation of the parameter B in a multivariate linear functional relationship X...
A general lower bound is developed for the minimax risk when estimating an arbitrary functional. The...
AbstractWe consider estimation of the parameter B in a multivariate linear functional relationship X...
The minimax theory for estimating linear functionals is extended to the case of a finite union of co...
International audienceThe paper deals with the problem of nonparametric estimating the Lp-norm, p ∈ ...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
The present paper considers the problem of estimating a linear functional φ = ∫∞ -∞ φ(x)f (x)dx of a...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
The asymptotic behaviour of the minimax risk can be used as a measure of how 'hard' an estimation pr...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
We propose a general framework for the construction and analysis of minimax estimators for a wide cl...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
AbstractWe consider estimation of the parameter B in a multivariate linear functional relationship X...
A general lower bound is developed for the minimax risk when estimating an arbitrary functional. The...
AbstractWe consider estimation of the parameter B in a multivariate linear functional relationship X...
The minimax theory for estimating linear functionals is extended to the case of a finite union of co...
International audienceThe paper deals with the problem of nonparametric estimating the Lp-norm, p ∈ ...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
The present paper considers the problem of estimating a linear functional φ = ∫∞ -∞ φ(x)f (x)dx of a...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
The asymptotic behaviour of the minimax risk can be used as a measure of how 'hard' an estimation pr...
International audienceWe consider the problem of testing a particular type of composite null hypothe...
We propose a general framework for the construction and analysis of minimax estimators for a wide cl...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
We study the problem of estimation of the value N_gamma(theta) = sum(i=1)^d |theta_i|^gamma for 0 0...
AbstractWe consider estimation of the parameter B in a multivariate linear functional relationship X...