Feature selection is demanded in many modern scientific research problems that use high-dimensional data. A typical example is to find the genes that are most related to a certain disease (e.g., cancer) from high-dimensional gene expression profiles. There are tremendous difficulties in eliminating a large number of useless or redundant features. The expression levels of genes have structure; for example, a group of co-regulated genes that have similar biological functions tend to have similar mRNA expression levels. Many statistical methods have been proposed to take the grouping structure into consideration in feature selection and regression, including Group LASSO, Supervised Group LASSO, and regression on group representatives. In this ...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
High-dimensional feature selection arises in many areas of modern sciences. For example, in genomic ...
The problem of selecting the most useful features from a great many (eg, thousands) of candidates ar...
High-dimensional feature selection arises in many areas of modern science. For example, in genomic r...
International audienceIn computational biology, gene expression datasets are characterized by very f...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
The advent of new genomic technologies has resulted in production of massive data sets. The outcomes...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
One flexible technique for model search in probit regression is Markov chain Monte Carlo methodolog...
A critical issue for the construction of genetic regulatory networks is the identification of networ...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
Feature selection is demanded in many modern scientific research problems that use high-dimensional ...
High-dimensional feature selection arises in many areas of modern sciences. For example, in genomic ...
The problem of selecting the most useful features from a great many (eg, thousands) of candidates ar...
High-dimensional feature selection arises in many areas of modern science. For example, in genomic r...
International audienceIn computational biology, gene expression datasets are characterized by very f...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
The advent of new genomic technologies has resulted in production of massive data sets. The outcomes...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
One flexible technique for model search in probit regression is Markov chain Monte Carlo methodolog...
A critical issue for the construction of genetic regulatory networks is the identification of networ...
AbstractFeature selection is one of the crucial steps in supervised learning, which influences the e...
This thesis responds to the challenges of using a large number, such as thousands, of features in re...
This article describes a method for efficient posterior simulation for Bayesian variable selection i...