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Bayesian analysis of elapsed times in continuous‐time Markov chains
Authors:Marco A R Ferreira  Marc A Suchard
Affiliation:1. Department of Statistics University of Missouri, Columbia Columbia, MO 65211, USA;2. Departments of Biomathematics, Human Genetics and Biostatistics University of California, Los Angeles Los Angeles, CA 90095, USA
Abstract:The authors consider Bayesian analysis for continuous‐time Markov chain models based on a conditional reference prior. For such models, inference of the elapsed time between chain observations depends heavily on the rate of decay of the prior as the elapsed time increases. Moreover, improper priors on the elapsed time may lead to improper posterior distributions. In addition, an infinitesimal rate matrix also characterizes this class of models. Experts often have good prior knowledge about the parameters of this matrix. The authors show that the use of a proper prior for the rate matrix parameters together with the conditional reference prior for the elapsed time yields a proper posterior distribution. The authors also demonstrate that, when compared to analyses based on priors previously proposed in the literature, a Bayesian analysis on the elapsed time based on the conditional reference prior possesses better frequentist properties. The type of prior thus represents a better default prior choice for estimation software.
Keywords:Bayesian inference  conditional reference prior  frequentist coverage  Markov process  mean squared error  phylogenetic reconstruction  prior for branch length
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