The traditional variable selection problem has attracted renewed atten- tion from statistical researchers due to the recent advances in data collection, es- pecially in fields such as bioinformatics and marketing. In this paper, we formulate regression variable selection as an optimization problem, propose and study several deterministic and stochastic sequential optimization methods with lookahead. Us- ing several synthetic examples, we show that the stochastic sequential method with lookahead robustly and significantly outperforms a few close competitors, includ- ing the popular stepwise methods. When applied to analyze a yeast amino acid starvation microarray experiment, this method can find many transcription factors that are known to b...
<div><p>When standard optimization methods fail to find a satisfactory solution for a parameter fitt...
International audienceIn the context of genomic selection in animal breeding, an important objective...
<p>The characteristics of the stimuli used in an experiment critically determine the theoretical que...
The traditional variable selection problem has attracted renewed attention from statistical research...
Motivation: With the growth of big data, variable selection has become one of the critical challenge...
Variable selection has been widely used in regression data mining not only to select informative var...
This approach imports an experimental design from pharmaceutical industry today. In the past, the as...
We develop a group of algorithms for variable selection using the accelerated failure time (AFT) mod...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
This article proposes a variable selection method termed “subtle uprooting” for linear regression. I...
We consider the task of discovering gene regulatory networks, which are defined as sets of genes and...
With advanced capability in data collection, applications of linear regression analysis now often in...
We consider the task of discovering gene regulatory networks, which are defined as sets of genes and...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
When standard optimization methods fail to find a satisfactory solution for a parameter fitting prob...
<div><p>When standard optimization methods fail to find a satisfactory solution for a parameter fitt...
International audienceIn the context of genomic selection in animal breeding, an important objective...
<p>The characteristics of the stimuli used in an experiment critically determine the theoretical que...
The traditional variable selection problem has attracted renewed attention from statistical research...
Motivation: With the growth of big data, variable selection has become one of the critical challenge...
Variable selection has been widely used in regression data mining not only to select informative var...
This approach imports an experimental design from pharmaceutical industry today. In the past, the as...
We develop a group of algorithms for variable selection using the accelerated failure time (AFT) mod...
In microarray experiments, the goal is often to examine many genes, and select some of them for addi...
This article proposes a variable selection method termed “subtle uprooting” for linear regression. I...
We consider the task of discovering gene regulatory networks, which are defined as sets of genes and...
With advanced capability in data collection, applications of linear regression analysis now often in...
We consider the task of discovering gene regulatory networks, which are defined as sets of genes and...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
When standard optimization methods fail to find a satisfactory solution for a parameter fitting prob...
<div><p>When standard optimization methods fail to find a satisfactory solution for a parameter fitt...
International audienceIn the context of genomic selection in animal breeding, an important objective...
<p>The characteristics of the stimuli used in an experiment critically determine the theoretical que...