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Gene selection: a Bayesian variable selection approach
2003
Bioinformatics
Selection of significant genes via expression patterns is an important problem in microarray experiments. Owing to small sample size and the large number of variables (genes), the selection process can be unstable. This paper proposes a hierarchical Bayesian model for gene (variable) selection. We employ latent variables to specialize the model to a regression setting and uses a Bayesian mixture prior to perform the variable selection. We control the size of the model by assigning a prior
doi:10.1093/bioinformatics/19.1.90
pmid:12499298
fatcat:7aexwp34fff3lbjq6qvculoll4