In the past decades, there has been an increasing demand for methodology that is suitable for data with a large number of parameters compared to the number of observations. In this thesis, methodology is proposed for three situations where such data is encountered. First, this thesis discusses new methodology for a setting in which data comes from a linear model with parameters that add to one and are sparse in some sense. This has a variety of applications in Economics. In particular, an algorithm is proposed to fit such a model to data. Second, the thesis features a novel test for testing moment inequalities. The test is particularly well-suited against alternatives where multiple moment inequalities are violated. As a final part of this ...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
This doctoral thesis consists of five papers in the field of multivariate statistical analysis of hi...
I propose a new theoretical framework to assess the approximate validity of overidentifying moment r...
In the past decades, there has been an increasing demand for methodology that is suitable for data w...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2015.Title as it app...
This dissertation studies questions related to identification, estimation, and specification testing...
Abstract. This paper considers the problem of testing many moment inequalities where the number of m...
This article considers the problem of testing many moment inequalities where the number of moment in...
This article provides a uni\u85ed approach to speci\u85cation testing of econo-metric models de\u85n...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
This thesis concerns the problem of statistical hypothesis testing for mean vector as well as testin...
We introduce a new approach to goodness-of-fit testing in the high dimensional, sparse extended mult...
This paper is concerned with tests and confidence intervals for partially-identified parameters that a...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Economics, 2013.Cataloged from PDF ...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
This doctoral thesis consists of five papers in the field of multivariate statistical analysis of hi...
I propose a new theoretical framework to assess the approximate validity of overidentifying moment r...
In the past decades, there has been an increasing demand for methodology that is suitable for data w...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2015.Title as it app...
This dissertation studies questions related to identification, estimation, and specification testing...
Abstract. This paper considers the problem of testing many moment inequalities where the number of m...
This article considers the problem of testing many moment inequalities where the number of moment in...
This article provides a uni\u85ed approach to speci\u85cation testing of econo-metric models de\u85n...
Models with many signals, high-dimensional models, often impose structures on the signal strengths. ...
This thesis concerns the problem of statistical hypothesis testing for mean vector as well as testin...
We introduce a new approach to goodness-of-fit testing in the high dimensional, sparse extended mult...
This paper is concerned with tests and confidence intervals for partially-identified parameters that a...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Economics, 2013.Cataloged from PDF ...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
There is a well-developed statistical inference theory for classical one-dimensional models. However...
This doctoral thesis consists of five papers in the field of multivariate statistical analysis of hi...
I propose a new theoretical framework to assess the approximate validity of overidentifying moment r...