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A Bayesian approach for inducing sparsity in generalized linear models with multi-category response
2015
BMC Bioinformatics
The dimension and complexity of high-throughput gene expression data create many challenges for downstream analysis. Several approaches exist to reduce the number of variables with respect to small sample sizes. In this study, we utilized the Generalized Double Pareto (GDP) prior to induce sparsity in a Bayesian Generalized Linear Model (GLM) setting. The approach was evaluated using a publicly available microarray dataset containing 99 samples corresponding to four different prostate cancer
doi:10.1186/1471-2105-16-s13-s13
pmid:26423345
pmcid:PMC4597416
fatcat:rpmnyjudifbvpjt2m72tb7luli