Sorted L-One Penalized Estimation (SLOPE) has shown the nice theoretical property as well as empirical behavior recently on the false discovery rate (FDR) control of high-dimensional feature selection by adaptively imposing the non-increasing sequence of tuning parameters on the sorted L1 penalties. This paper goes beyond the previous concern limited to the FDR control by considering the stepdown-based SLOPE in order to control the probability of k or more false rejections (k-FWER) and the false discovery proportion (FDP). Two new SLOPEs, called k-SLOPE and F-SLOPE, are proposed to realize k-FWER and FDP control respectively, where the stepdown procedure is injected into the SLOPE scheme. For the proposed stepdown SLOPEs, we establish their...
The linear step-up multiple testing procedure controls the false discovery rate at the desired level...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
The generalized linear model (GLM) has been widely used in practice to model counts or other types o...
Sorted L-One Penalized Estimator (SLOPE) is a relatively new convex optimization procedure for selec...
Extracting relevant features from data sets where the number of observations n is much smaller then ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We propose a new method, semi-penalized inference with direct false discovery rate control (SPIDR), ...
International audienceA decade ago OSCAR was introduced as a penalized estimator where the penalty t...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
Abstract: Procedures controlling error rates measuring at least k false rejections, instead of at le...
The era of machine learning features large datasets that have high dimension of features. This leads...
<p>Sorted L-One Penalized Estimation (SLOPE; Bogdan et al. <a href="#cit0011" target="_blank">2013</...
Abstract: Often in practice when a large number of hypotheses are simultaneously tested, one is will...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
The linear step-up multiple testing procedure controls the false discovery rate at the desired level...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
The generalized linear model (GLM) has been widely used in practice to model counts or other types o...
Sorted L-One Penalized Estimator (SLOPE) is a relatively new convex optimization procedure for selec...
Extracting relevant features from data sets where the number of observations n is much smaller then ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We propose a new method, semi-penalized inference with direct false discovery rate control (SPIDR), ...
International audienceA decade ago OSCAR was introduced as a penalized estimator where the penalty t...
Recently, the scheme of model-X knockoffs was proposed as a promising solution to address controlled...
Abstract: Procedures controlling error rates measuring at least k false rejections, instead of at le...
The era of machine learning features large datasets that have high dimension of features. This leads...
<p>Sorted L-One Penalized Estimation (SLOPE; Bogdan et al. <a href="#cit0011" target="_blank">2013</...
Abstract: Often in practice when a large number of hypotheses are simultaneously tested, one is will...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
The linear step-up multiple testing procedure controls the false discovery rate at the desired level...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
The generalized linear model (GLM) has been widely used in practice to model counts or other types o...