In Barber & Candès (2015, Ann. Statist., 43, 2055–2085), the authors introduced a new variable selection procedure called the knockoff filter to control the false discovery rate (FDR) and proved that this method achieves exact FDR control. Inspired by the work by Barber & Candès (2015, Ann. Statist., 43, 2055–2085), we propose a pseudo knockoff filter that inherits some advantages of the original knockoff filter and has more flexibility in constructing its knockoff matrix. Moreover, we perform a number of numerical experiments that seem to suggest that the pseudo knockoff filter with the half Lasso statistic has FDR control and offers more power than the original knockoff filter with the Lasso Path or the half Lasso statistic for the numeri...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
Abstract Background Procedures for controlling the false discovery rate (FDR) are widely applied as ...
The knockoff filter is a variable selection technique for linear regression with finite-sample contr...
In many applications, we need to study a linear regression model that consists of a response variabl...
In many fields of science, we observe a response variable together with a large number of potential ...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
Model-X knockoffs is a flexible wrapper method for high-dimensional regression algorithms, which pro...
Controlled variable selection is an important analytical step in various scientific fields, such as ...
We propose new methods to obtain simultaneous false discovery proportion bounds for knockoff-based a...
We consider the variable selection problem, which seeks to identify important variables influencin...
© 2019 Neural information processing systems foundation. All rights reserved. The knockoff filter in...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
In many fields, researchers are interested in discovering features with substantial effect on the re...
Controlled feature selection aims to discover the features a response depends on while limiting the ...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
Abstract Background Procedures for controlling the false discovery rate (FDR) are widely applied as ...
The knockoff filter is a variable selection technique for linear regression with finite-sample contr...
In many applications, we need to study a linear regression model that consists of a response variabl...
In many fields of science, we observe a response variable together with a large number of potential ...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
Model-X knockoffs is a flexible wrapper method for high-dimensional regression algorithms, which pro...
Controlled variable selection is an important analytical step in various scientific fields, such as ...
We propose new methods to obtain simultaneous false discovery proportion bounds for knockoff-based a...
We consider the variable selection problem, which seeks to identify important variables influencin...
© 2019 Neural information processing systems foundation. All rights reserved. The knockoff filter in...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
In many fields, researchers are interested in discovering features with substantial effect on the re...
Controlled feature selection aims to discover the features a response depends on while limiting the ...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
Abstract Background Procedures for controlling the false discovery rate (FDR) are widely applied as ...
The knockoff filter is a variable selection technique for linear regression with finite-sample contr...