International audienceRecently, several theoretical and applied studies have shown that unsupervised Bayesian classification systems are of particular relevance for biological studies. However, these systems have not yet fully reached the biological community mainly because there are few freely available dedicated computer programs, and Bayesian clustering algorithms are known to be time consuming, which limits their usefulness when using personal computers. To overcome these limitations, we developed AutoClass@IJM, a computational resource with a web interface to AutoClass, a powerful unsupervised Bayesian classification system developed by the Ames Research Center at N.A.S.A. AutoClass has many powerful features with broad applications in...
UNLABELLED: Genetic data obtained on population samples convey information about their evolutionary ...
Genetic data obtained on population samples convey information about their evolutionary history. Inf...
Recent advances in experimental methods have resulted in the generation of enormous volumes of data ...
Recently, several theoretical and applied studies have shown that unsupervised Bayesian classificati...
Data clustering is a common exploration step in the omics era, notably in genomics and proteomics wh...
International audienceObjective: Data clustering is a common exploration step in the omics era, nota...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Based on mixture models, we present a Bayesian method (called BClass) to classify biological entitie...
This paper will discuss the Simple Bayesian Classifier. First Information Retrieval in general will ...
Abstract. Bayesian network is a widely used tool for data analysis, modeling and decision support in...
Today, a single laboratory can generate a vast amount of biological data. There is a wealth of data ...
The proliferation of biological databases and the easy access enabled by the Internet is having a be...
Motivation: Bayesian methods are widely used in many different areas of research. Recently, it has b...
UNLABELLED: Genetic data obtained on population samples convey information about their evolutionary ...
Genetic data obtained on population samples convey information about their evolutionary history. Inf...
Recent advances in experimental methods have resulted in the generation of enormous volumes of data ...
Recently, several theoretical and applied studies have shown that unsupervised Bayesian classificati...
Data clustering is a common exploration step in the omics era, notably in genomics and proteomics wh...
International audienceObjective: Data clustering is a common exploration step in the omics era, nota...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
The task of inferring a set of classes and class descriptions most likely to explain a given data se...
Machine learning (ML) techniques have revolutionized the way of data classification, clustering, seg...
Based on mixture models, we present a Bayesian method (called BClass) to classify biological entitie...
This paper will discuss the Simple Bayesian Classifier. First Information Retrieval in general will ...
Abstract. Bayesian network is a widely used tool for data analysis, modeling and decision support in...
Today, a single laboratory can generate a vast amount of biological data. There is a wealth of data ...
The proliferation of biological databases and the easy access enabled by the Internet is having a be...
Motivation: Bayesian methods are widely used in many different areas of research. Recently, it has b...
UNLABELLED: Genetic data obtained on population samples convey information about their evolutionary ...
Genetic data obtained on population samples convey information about their evolutionary history. Inf...
Recent advances in experimental methods have resulted in the generation of enormous volumes of data ...