Confidence sets play a fundamental role in statistical inference. In this paper, we consider confidence intervals for high-dimensional linear regression with random design. We first establish the convergence rates of the minimax expected length for confidence intervals in the oracle setting where the sparsity parameter is given. The focus is then on the problem of adaptation to sparsity for the construction of confidence intervals. Ideally, an adaptive confidence interval should have its length automatically adjusted to the sparsity of the unknown regression vector, while maintaining a pre-specified coverage probability. It is shown that such a goal is in general not attainable, except when the sparsity parameter is restricted to a small re...
We consider the problem of fitting the parameters of a high-dimensional linear regression model. In ...
It is a challenge to design randomized trials when it is suspected that a treatment may benefit only...
We construct honest confidence regions for a Hilbert space-valued pa-rameter in various statistical ...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
We provide adaptive confidence intervals on a parameter of interest in the presence of nuisance para...
Adaptive confidence intervals for regression functions are constructed under shape constraints of mo...
Construction of confidence sets is an important topic in statistical inference. In this dissertation...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
This paper considers point and interval estimation of the ℓq loss of an estimator in high-dimensiona...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
Confidence intervals based on penalized maximum likelihood estimators such as the LASSO, adaptive LA...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
We consider the problem of fitting the parameters of a high-dimensional linear regression model. In ...
It is a challenge to design randomized trials when it is suspected that a treatment may benefit only...
We construct honest confidence regions for a Hilbert space-valued pa-rameter in various statistical ...
Confidence sets play a fundamental role in statistical inference. In this paper, we consider confide...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
High-dimensional linear models play an important role in the analysis of modern data sets. Although ...
We provide adaptive confidence intervals on a parameter of interest in the presence of nuisance para...
Adaptive confidence intervals for regression functions are constructed under shape constraints of mo...
Construction of confidence sets is an important topic in statistical inference. In this dissertation...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
A nonparametric adaptation theory is developed for the construction of confidence intervals for line...
This paper considers point and interval estimation of the ℓq loss of an estimator in high-dimensiona...
We construct honest confidence regions for a Hilbert space-valued parameter in various statistical m...
Confidence intervals based on penalized maximum likelihood estimators such as the LASSO, adaptive LA...
Fitting high-dimensional statistical models often requires the use of non-linear parameter estimatio...
We consider the problem of fitting the parameters of a high-dimensional linear regression model. In ...
It is a challenge to design randomized trials when it is suspected that a treatment may benefit only...
We construct honest confidence regions for a Hilbert space-valued pa-rameter in various statistical ...