Although the standard formulations of prediction problems involve fully-observed and noise-less data drawn in an i.i.d. manner, many applications involve noisy and/or missing data, possibly involving dependencies. We study these issues in the context of high-dimensional sparse linear regression, and propose novel estimators for the cases of noisy, missing, and/or dependent data. Many standard approaches to noisy or missing data, such as those using the EM algorithm, lead to optimization problems that are inherently non-convex, and it is difficult to establish theoretical guarantees on practical algorithms. While our approach also involves optimizing non-convex programs, we are able to both analyze the statistical error associated with any g...
Many statistical M-estimators are based on convex optimization problems formed by the combination of...
textLearning an unknown parameter from data is a problem of fundamental importance across many field...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
Although the standard formulations of prediction problems involve fully-observed and noiseless data ...
Noisy and missing data are prevalent in many real-world statistical estimation problems. Popular tec...
High-dimensional statistical inference deals with models in which the number of parameters $p$ is co...
This thesis considers estimation and statistical inference for high dimensional model with constrain...
We consider the problem of structurally con-strained high-dimensional linear regression. This has at...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
Thesis (Ph.D.)--University of Washington, 2017-12This thesis tackles three different problems in hig...
This thesis contains two parts. The first part, in Chapter 2-4, addresses three connected issues i...
We present a robust framework to perform linear regression with missing entries in the features. By ...
We describe a computational method for parameter estimation in linear regression, that is capable of...
A popular approach for estimating an unknown signal x0 ∈ Rn from noisy, linear measurements y = Ax0 ...
Many statistical M-estimators are based on convex optimization problems formed by the combination of...
textLearning an unknown parameter from data is a problem of fundamental importance across many field...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
Although the standard formulations of prediction problems involve fully-observed and noiseless data ...
Noisy and missing data are prevalent in many real-world statistical estimation problems. Popular tec...
High-dimensional statistical inference deals with models in which the number of parameters $p$ is co...
This thesis considers estimation and statistical inference for high dimensional model with constrain...
We consider the problem of structurally con-strained high-dimensional linear regression. This has at...
A fundamental problem in modern high-dimensional data analysis involves efficiently inferring a set ...
We consider the problem of constrained M-estimation when both explanatory and response variables hav...
Thesis (Ph.D.)--University of Washington, 2017-12This thesis tackles three different problems in hig...
This thesis contains two parts. The first part, in Chapter 2-4, addresses three connected issues i...
We present a robust framework to perform linear regression with missing entries in the features. By ...
We describe a computational method for parameter estimation in linear regression, that is capable of...
A popular approach for estimating an unknown signal x0 ∈ Rn from noisy, linear measurements y = Ax0 ...
Many statistical M-estimators are based on convex optimization problems formed by the combination of...
textLearning an unknown parameter from data is a problem of fundamental importance across many field...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...