Regularization methods, including Lasso, group Lasso, and SCAD, typically focus on selecting variables with strong effects while ignoring weak signals. This may result in biased prediction, especially when weak signals outnumber strong signals. This paper aims to incorporate weak signals in variable selection, estimation, and prediction. We propose a two‐stage procedure, consisting of variable selection and postselection estimation. The variable selection stage involves a covariance‐insured screening for detecting weak signals, whereas the postselection estimation stage involves a shrinkage estimator for jointly estimating strong and weak signals selected from the first stage. We term the proposed method as the covariance‐insured screening‐...
International audienceBasis Pursuit (BP), Basis Pursuit DeNoising (BPDN), and LASSO are popular meth...
Analyzing a linear model is a fundamental topic in statistical inference and has been well-studied. ...
Transductive methods are useful in prediction problems when the training dataset is composed of a la...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
Penalized likelihood models are widely used to simultaneously select variables and estimate model pa...
Nowadays a large amount of data is available, and the need for novel statistical strategies to analy...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/136472/1/asmb2216_am.pdfhttps://deepbl...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Regression models are a form of supervised learning methods that are important for machine learning,...
Basis pursuit (BP), basis pursuit deNoising (BPDN), and least absolute shrinkage and selection opera...
The increased availability of high-dimensional data, and appeal of a “sparse” solution has made pena...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
Abstract High-dimensional prediction typically comprises vari-able selection followed by least-squar...
In high dimensional statistics, estimation and inference are often done by making use of the underly...
Modern statistical research focuses on problems in high-dimensional data analysis. This thesis focus...
International audienceBasis Pursuit (BP), Basis Pursuit DeNoising (BPDN), and LASSO are popular meth...
Analyzing a linear model is a fundamental topic in statistical inference and has been well-studied. ...
Transductive methods are useful in prediction problems when the training dataset is composed of a la...
In high-dimensional data settings where p » n, many penalized regularization approaches were studied...
Penalized likelihood models are widely used to simultaneously select variables and estimate model pa...
Nowadays a large amount of data is available, and the need for novel statistical strategies to analy...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/136472/1/asmb2216_am.pdfhttps://deepbl...
The abundance of available digital big data has created new challenges in identifying relevant varia...
Regression models are a form of supervised learning methods that are important for machine learning,...
Basis pursuit (BP), basis pursuit deNoising (BPDN), and least absolute shrinkage and selection opera...
The increased availability of high-dimensional data, and appeal of a “sparse” solution has made pena...
From the perspective of econometrics, an accurate variable selection method greatly enhances the rel...
Abstract High-dimensional prediction typically comprises vari-able selection followed by least-squar...
In high dimensional statistics, estimation and inference are often done by making use of the underly...
Modern statistical research focuses on problems in high-dimensional data analysis. This thesis focus...
International audienceBasis Pursuit (BP), Basis Pursuit DeNoising (BPDN), and LASSO are popular meth...
Analyzing a linear model is a fundamental topic in statistical inference and has been well-studied. ...
Transductive methods are useful in prediction problems when the training dataset is composed of a la...