We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coefficients in (possibly nonlinear) regression models, where the hypotheses can also be nonlinear in the coefficients. Our (nonasymptotic) control on the Type I and Type II errors holds for fixed n and does not rely on well-behaved estimation error or prediction error; in particular, when the number of restrictions in the null hypothesis is large relative to p-n, we show it is possible to bypass the sparsity assumption on the coefficients (for both Type I and Type II error control), regularization on the estimates of the coefficients, and other inherent challenges in an inverse problem. We also demonstrate an interesting link between our framewor...
We provide a methodology for testing a polynomial model hypothesis by extending the approach and res...
In this PHD thesis, we propose a nonparametric method based on the empirical likelihood for detectin...
This paper adapts an already existing nonparametric hypothesis test to the bootstrap framework. The ...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
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...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
This thesis presents procedures for performing inferences of causal parameters across an array of co...
Rapporteurs:Peter L. Bartlett (University of California, Berkeley)Yuhong Yang (University of Minneso...
This thesis consists of three chapters which relate to problems of statistical inference in (potent...
The Ph.D. thesis, called Testing for Non-linearity and Asymmetry in Time Series, focuses on various ...
This thesis consists of three chapters which represent my journey as a researcher during this PhD. T...
The asymptotic power of a statistical test depends on the model being tested, the (implicit) alterna...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
We provide a methodology for testing a polynomial model hypothesis by extending the approach and res...
In this PHD thesis, we propose a nonparametric method based on the empirical likelihood for detectin...
This paper adapts an already existing nonparametric hypothesis test to the bootstrap framework. The ...
We develop non-asymptotically justified methods for hypothesis testing about the p-dimensional coeff...
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...
Thesis (Ph.D.)--University of Washington, 2021This dissertation is divided into two parts. In the fi...
This thesis presents procedures for performing inferences of causal parameters across an array of co...
Rapporteurs:Peter L. Bartlett (University of California, Berkeley)Yuhong Yang (University of Minneso...
This thesis consists of three chapters which relate to problems of statistical inference in (potent...
The Ph.D. thesis, called Testing for Non-linearity and Asymmetry in Time Series, focuses on various ...
This thesis consists of three chapters which represent my journey as a researcher during this PhD. T...
The asymptotic power of a statistical test depends on the model being tested, the (implicit) alterna...
The paper studies the asymptotic efficiency and robustness of hypothesis tests when models of intere...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
We provide a methodology for testing a polynomial model hypothesis by extending the approach and res...
In this PHD thesis, we propose a nonparametric method based on the empirical likelihood for detectin...
This paper adapts an already existing nonparametric hypothesis test to the bootstrap framework. The ...