<p>We propose a methodology for testing linear hypothesis in high-dimensional linear models. The proposed test does not impose any restriction on the size of the model, that is, model sparsity or the loading vector representing the hypothesis. Providing asymptotically valid methods for testing general linear functions of the regression parameters in high-dimensions is extremely challenging—especially without making restrictive or unverifiable assumptions on the number of nonzero elements. We propose to test the moment conditions related to the newly designed restructured regression, where the inputs are transformed and augmented features. These new features incorporate the structure of the null hypothesis directly. The test statistics are c...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
Thesis (Ph.D.)--University of Washington, 2017-06In the past two decades, vast high-dimensional biom...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linea...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
In a high-dimensional linear regression model, we propose a new procedure for testing statistical si...
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 ...
This dissertation considers the problem of estimation and inference in four high-dimensional models:...
We propose a family of tests to assess the goodness of fit of a high dimensional generalized linear ...
During the past two decades, technological advances have led to a proliferation of high-dimensional ...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
We propose simultaneous tests for coefficients in high-dimensional linear regression models with fac...
We study partially linear single-index models where both model parts may contain high-dimensional va...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
Thesis (Ph.D.)--University of Washington, 2017-06In the past two decades, vast high-dimensional biom...
This paper is concerned with testing linear hypotheses in high dimensional generalized linear models...
We propose a framework for constructing goodness-of-fit tests in both low and high dimensional linea...
We consider testing regression coefficients in high dimensional generalized linear models. By modify...
In a high-dimensional linear regression model, we propose a new procedure for testing statistical si...
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 ...
This dissertation considers the problem of estimation and inference in four high-dimensional models:...
We propose a family of tests to assess the goodness of fit of a high dimensional generalized linear ...
During the past two decades, technological advances have led to a proliferation of high-dimensional ...
We develop a powerful quadratic test for the overall significance of many covariates in a dense regr...
We propose simultaneous tests for coefficients in high-dimensional linear regression models with fac...
We study partially linear single-index models where both model parts may contain high-dimensional va...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
Thesis (Ph.D.)--University of Washington, 2017-06In the past two decades, vast high-dimensional biom...