AbstractMinimax risk inequalities are obtained for the location-parameter classification problem. For the classical single observation case with continuous distributions, best possible bounds are given in terms of their Lévy concentration, establishing a conjecture of Hill and Tong (1989). In addition, sharp bounds for the minimax risk are derived for the multiple (i.i.d.) observations case, based on the tail concentration and the Lévy concentration. Some fairly sharp bounds for discontinuous distributions are also obtained
The subject of this research is the following stochastic model: $Z = \theta + V$. The random variabl...
This paper presents lower bounds for the minimax risk under quadraticloss, derived from information ...
The estimation of a linear combination of several restricted location parameters is addressed from a...
AbstractMinimax risk inequalities are obtained for the location-parameter classification problem. Fo...
Optimal-partitioning and minimax risk inequalities are obtained for the classification and multi-hyp...
International audienceThe paper deals with the problem of nonparametric estimating the Lp-norm, p ∈ ...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
The information inequality has been shown to be an effective tool for providing lower bounds for the...
The estimation of a linear combination of several restricted location parameters is addressed from a...
The information inequality has been shown to be an effective tool for providing lower bounds for the...
The subject of this research is the following stochastic model: $Z = \theta + V$. The random variabl...
This paper presents lower bounds for the minimax risk under quadraticloss, derived from information ...
The estimation of a linear combination of several restricted location parameters is addressed from a...
AbstractMinimax risk inequalities are obtained for the location-parameter classification problem. Fo...
Optimal-partitioning and minimax risk inequalities are obtained for the classification and multi-hyp...
International audienceThe paper deals with the problem of nonparametric estimating the Lp-norm, p ∈ ...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
We study the problem of estimating an unknown parameter $\theta$ from an observation of a random var...
Abstract—Lower bounds involving -divergences between the underlying probability measures are proved ...
This paper compares three methods for producing lower bounds on the minimax risk under quadratic los...
The information inequality has been shown to be an effective tool for providing lower bounds for the...
The estimation of a linear combination of several restricted location parameters is addressed from a...
The information inequality has been shown to be an effective tool for providing lower bounds for the...
The subject of this research is the following stochastic model: $Z = \theta + V$. The random variabl...
This paper presents lower bounds for the minimax risk under quadraticloss, derived from information ...
The estimation of a linear combination of several restricted location parameters is addressed from a...