We develop simple and non-asymptotically justified methods for hypothesis testing about the coefficients ($\theta^{*}\in\mathbb{R}^{p}$) in the high dimensional generalized regression models where $p$ can exceed the sample size. Given a function $h:\,\mathbb{R}^{p}\mapsto\mathbb{R}^{m}$, we consider $H_{0}:\,h(\theta^{*})=\mathbf{0}_{m}$ against $H_{1}:\,h(\theta^{*})\neq\mathbf{0}_{m}$, where $m$ can be any integer in $\left[1,\,p\right]$ and $h$ can be nonlinear in $\theta^{*}$. Our test statistics is based on the sample ``quasi score'' vector evaluated at an estimate $\hat{\theta}_{\alpha}$ that satisfies $h(\hat{\theta}_{\alpha})=\mathbf{0}_{m}$, where $\alpha$ is the prespecified Type I error. By exploiting the concentration phenomenon...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
summary:Real valued $M$-estimators $\hat{\theta }_n:=\min \sum _1^n\rho (Y_i-\tau (\theta ))$ in a s...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
We develop simple and non-asymptotically justified methods for hypothesis testing about the coeffici...
We develop simple and non-asymptotically justified methods for hypothesis testing about the coeffici...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
long version of arXiv:math/0701605International audienceWe study generalized bootstrap confidence re...
Let $(Y,(X_i)_{i\in\mathcal{I}})$ be a zero mean Gaussian vector and $V$ be a subset of $\mathcal{I}...
We congratulate the authors on their stimulating contribution to the burgeoning high-dimensional inf...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
All models may be wrong -- but that is not necessarily a problem for inference. Consider the standar...
International audienceThe aim of this paper is to establish non-asymptotic minimax rates of testing ...
AbstractThis paper examines asymptotic expansions of test statistics for dimensionality and addition...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
2010 Mathematics Subject Classification: 62F12, 62M05, 62M09, 62M10, 60G42.Let {Zn}n∈N be a real sto...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
summary:Real valued $M$-estimators $\hat{\theta }_n:=\min \sum _1^n\rho (Y_i-\tau (\theta ))$ in a s...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
We develop simple and non-asymptotically justified methods for hypothesis testing about the coeffici...
We develop simple and non-asymptotically justified methods for hypothesis testing about the coeffici...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
long version of arXiv:math/0701605International audienceWe study generalized bootstrap confidence re...
Let $(Y,(X_i)_{i\in\mathcal{I}})$ be a zero mean Gaussian vector and $V$ be a subset of $\mathcal{I}...
We congratulate the authors on their stimulating contribution to the burgeoning high-dimensional inf...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...
All models may be wrong -- but that is not necessarily a problem for inference. Consider the standar...
International audienceThe aim of this paper is to establish non-asymptotic minimax rates of testing ...
AbstractThis paper examines asymptotic expansions of test statistics for dimensionality and addition...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
2010 Mathematics Subject Classification: 62F12, 62M05, 62M09, 62M10, 60G42.Let {Zn}n∈N be a real sto...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
summary:Real valued $M$-estimators $\hat{\theta }_n:=\min \sum _1^n\rho (Y_i-\tau (\theta ))$ in a s...
In the estimation of parametric models for stationary spatial or spatio-temporal data on a d-dimensi...