High-dimensional feature selection arises in many areas of modern science. For example, in genomic research we want to find the genes that can be used to separate tissues of different classes (e.g. cancer and normal) from tens of thousands of genes that are active (expressed) in certain tissue cells. To this end, we wish to fit regression and classification models with a large number of features (also called variables, predictors). In the past decade, penalized likelihood methods for fitting regression models based on hyper-LASSO penalization have received increasing attention in the literature. However, fully Bayesian methods that use Markov chain Monte Carlo (MCMC) are still in lack of development in the literature. In this paper we intro...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-ex...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
<p>Feature selection arises in many areas of modern science. For example, in genomic research, we wa...
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...
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 ...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
An important application of DNA microarray data is cancer classification. Because of the high-dimens...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
The necessity to perform variable selection and estimation in the high dimensional situation is incr...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-ex...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
<p>Feature selection arises in many areas of modern science. For example, in genomic research, we wa...
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...
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 ...
The lasso (Tibshirani,1996) has sparked interest in the use of penalization of the log-likelihood f...
The problem of variable selection in regression and the generalised linear model is addressed. We a...
An important application of DNA microarray data is cancer classification. Because of the high-dimens...
<p>Collections of large volumes of rich and complex data has become ubiquitous in recent years, posi...
The necessity to perform variable selection and estimation in the high dimensional situation is incr...
This paper reviews global-local prior distributions for Bayesian inference in high-dimensional regre...
Abstract. In large-scale genomic applications vast numbers of molecular features are scanned in orde...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...
The lasso estimate for linear regression corresponds to a posterior mode when independent, double-ex...
With the rapid development of new data collection and acquisition techniques, high-dimensional data ...