© 2019 Neural information processing systems foundation. All rights reserved. The knockoff filter introduced by Barber and Candès 2016 is an elegant framework for controlling the false discovery rate in variable selection. While empirical results indicate that this methodology is not too conservative, there is no conclusive theoretical result on its power. When the predictors are i.i.d. Gaussian, it is known that as the signal to noise ratio tend to infinity, the knockoff filter is consistent in the sense that one can make FDR go to 0 and power go to 1 simultaneously. In this work we study the case where the predictors have a general covariance matrix S. We introduce a simple functional called effective signal deficiency (ESD) of the covari...
Controlled variable selection is an important analytical step in various scientific fields, such as ...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
The relative merits of different population coding schemes have mostly been studied in the framework...
In many fields of science, we observe a response variable together with a large number of potential ...
In many applications, we need to study a linear regression model that consists of a response variabl...
In Barber & Candès (2015, Ann. Statist., 43, 2055–2085), the authors introduced a new variable selec...
For code see https://github.com/qrebjock/fanokWe describe a series of algorithms that efficiently im...
Power and reproducibility are key to enabling refined scientific discoveries in contemporary big dat...
We consider the variable selection problem, which seeks to identify important variables influencin...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
In many fields, researchers are interested in discovering features with substantial effect on the re...
We consider testing whether a set of Gaussian variables, selected from the data, is independent of t...
Controlled variable selection is an important analytical step in various scientific fields, such as ...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
The relative merits of different population coding schemes have mostly been studied in the framework...
In many fields of science, we observe a response variable together with a large number of potential ...
In many applications, we need to study a linear regression model that consists of a response variabl...
In Barber & Candès (2015, Ann. Statist., 43, 2055–2085), the authors introduced a new variable selec...
For code see https://github.com/qrebjock/fanokWe describe a series of algorithms that efficiently im...
Power and reproducibility are key to enabling refined scientific discoveries in contemporary big dat...
We consider the variable selection problem, which seeks to identify important variables influencin...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
In many fields, researchers are interested in discovering features with substantial effect on the re...
We consider testing whether a set of Gaussian variables, selected from the data, is independent of t...
Controlled variable selection is an important analytical step in various scientific fields, such as ...
We propose the conditional predictive impact (CPI), a consistent and unbiased estimator of the assoc...
The relative merits of different population coding schemes have mostly been studied in the framework...