Since Stein’s 1956 seminal paper, shrinkage has played a fundamental role in both parametric and nonparametric inference. This article discusses minimaxity and adaptive minimaxity in nonparametric function estimation. Three interrelated problems, function estimation under global integrated squared error, estimation under pointwise squared error, and nonparametric confidence intervals, are considered. Shrinkage is pivotal in the development of both the minimax theory and the adaptation theory. While the three problems are closely connected and the minimax theories bear some similarities, the adaptation theories are strikingly different. For example, in a sharp contrast to adaptive point estimation, in many common settings there do not exist ...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
Adaptive confidence intervals for regression functions are constructed under shape constraints of mo...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
In a remarkable series of papers beginning in 1956, Charles Stein set the stage for the future devel...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
The connections between information pooling and adaptability as well as superefficiency are consider...
The minimax theory for estimating linear functionals is extended to the case of a finite union of co...
The connections between information pooling and adaptability as well as superefficiency are consider...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
The connections between information pooling and adaptability as well as superefficiency are consider...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
Adaptive confidence intervals for regression functions are constructed under shape constraints of mo...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
A theory of superefficiency and adaptation is developed under flexible performance measures which gi...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
In a remarkable series of papers beginning in 1956, Charles Stein set the stage for the future devel...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
The connections between information pooling and adaptability as well as superefficiency are consider...
The minimax theory for estimating linear functionals is extended to the case of a finite union of co...
The connections between information pooling and adaptability as well as superefficiency are consider...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
The connections between information pooling and adaptability as well as superefficiency are consider...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
International audienceStatistical estimation aims at building procedures to recover unknown paramete...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
Adaptive confidence intervals for regression functions are constructed under shape constraints of mo...