Weak signal identification and inference are very important in the area of penalized model selection, yet they are under-developed and not well-studied. Existing inference procedures for penalized estimators are mainly focused on strong signals. This thesis propose an identification procedure for weak signals in finite samples, and provide a transition phase in-between noise and strong signal strengths. A new two-step inferential method is introduced to construct better confidence intervals for the identified weak signals. Both theory and numerical studies indicate that the proposed method leads to better confidence coverage for weak signals, compared with those using asymptotic inference. In addition, the proposed method outper...
The presented work addresses application of the evidence procedure to the field of signal processing...
This paper examines the issue of weak identification in maximum likelihood, motivated by problems wi...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Weak signal identification and inference are very important in the area of penalized model selection...
Penalized likelihood models are widely used to simultaneously select variables and estimate model pa...
Traditional inference can be distorted in the presence of weakly identified parameters. I explore t...
Signal identification in large-dimensional settings is a challenging problem in biostatistics. Recen...
We consider models defined by a set of conditional moment restrictions where weak identification may...
An objective of microarray data analysis is to identify gene expressions that are associated with a ...
Finite-sample system identification (FSID) methods infer properties of stochastic dynamical systems ...
Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variabl...
The purpose of this paper is to describe the performance of generalized empirical likelihood (GEL) m...
The central concern of this paper is the provision in a time series moment condition framework of pr...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2014.Cataloged from ...
Parametric signal models are used in a multitude of signal processing applications. This thesis deal...
The presented work addresses application of the evidence procedure to the field of signal processing...
This paper examines the issue of weak identification in maximum likelihood, motivated by problems wi...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...
Weak signal identification and inference are very important in the area of penalized model selection...
Penalized likelihood models are widely used to simultaneously select variables and estimate model pa...
Traditional inference can be distorted in the presence of weakly identified parameters. I explore t...
Signal identification in large-dimensional settings is a challenging problem in biostatistics. Recen...
We consider models defined by a set of conditional moment restrictions where weak identification may...
An objective of microarray data analysis is to identify gene expressions that are associated with a ...
Finite-sample system identification (FSID) methods infer properties of stochastic dynamical systems ...
Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variabl...
The purpose of this paper is to describe the performance of generalized empirical likelihood (GEL) m...
The central concern of this paper is the provision in a time series moment condition framework of pr...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Economics, 2014.Cataloged from ...
Parametric signal models are used in a multitude of signal processing applications. This thesis deal...
The presented work addresses application of the evidence procedure to the field of signal processing...
This paper examines the issue of weak identification in maximum likelihood, motivated by problems wi...
In the signal+noise model, we assume that the signal has a more general sparsity structure in the se...