Flexible cost‐penalized Bayesian model selection: Developing inclusion paths with an application to diagnosis of heart disease
Erica M. Porter,
Christopher T. Franck,
Stephen Adams
Abstract:We propose a Bayesian model selection approach that allows medical practitioners to select among predictor variables while taking their respective costs into account. Medical procedures almost always incur costs in time and/or money. These costs might exceed their usefulness for modeling the outcome of interest. We develop Bayesian model selection that uses flexible model priors to penalize costly predictors a priori and select a subset of predictors useful relative to their costs. Our approach (i) gives the p… Show more
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