This work investigates variable selection and classification for biomedical datasets with a small sample size and a very high input dimension. The sequential sparse Bayesian learning methods with linear bases are used as the basic variable selection algorithm. Selected variables are fed to the kernel based probabilistic classifiers: Bayesian least squares support vector machines (LS-SVMs) and relevance vector machines (RVMs). We employ the bagging techniques for both variable selection and model building in order to improve the reliability of the selected variables and the predictive performance. This modelling strategy is applied to real-life medical classification problems, including two binary cancer diagnosis problems based on microarra...
International audienceThis paper describes a novel method for improving classification of support vec...
The fundamental problem of gene selection via cDNA data is to identify which genes are differentiall...
The objectives of this “perspective ” paper are to review some recent advances in sparse feature sel...
This work investigates variable selection and classification for biomedical datasets with a small sa...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
High-throughput microarray technology is here to stay, e.g. in oncology for tumour classification an...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
This paper concerns classification of high-dimensional yet small sample size biomedical data and fea...
The meaning of parsimony is twofold in machine learning: either the structure or (and) the parameter...
This paper concerns classification of high-dimensional yet small sample size biomedical data and fea...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
The fundamental problem of gene selection via cDNA data is to identify which genes are differentiall...
The objectives of this “perspective ” paper are to review some recent advances in sparse feature sel...
This work investigates variable selection and classification for biomedical datasets with a small sa...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
Motivation: Gene selection algorithms for cancer classification, based on the expression of a small ...
High-throughput microarray technology is here to stay, e.g. in oncology for tumour classification an...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
This paper concerns classification of high-dimensional yet small sample size biomedical data and fea...
The meaning of parsimony is twofold in machine learning: either the structure or (and) the parameter...
This paper concerns classification of high-dimensional yet small sample size biomedical data and fea...
International audienceThis paper describes a novel method for improving classification of support vec...
International audienceThis paper describes a novel method for improving classification of support vec...
The fundamental problem of gene selection via cDNA data is to identify which genes are differentiall...
The objectives of this “perspective ” paper are to review some recent advances in sparse feature sel...