Publication | Open Access
<b>runjags</b>: An<i>R</i>Package Providing Interface Utilities, Model Templates, Parallel Computing Methods and Additional Distributions for MCMC Models in<b>JAGS</b>
715
Citations
26
References
2016
Year
EngineeringSimulationMarkov Chain Monte CarloMcmc ModelsRunjags PackageData ScienceStochastic ProcessesTemplate Model SpecificationsBayesian MethodsModeling And SimulationParallel ComputingPareto FamilyStatisticsMonte CarloComputer EngineeringComputer ScienceModel ComparisonMonte Carlo SamplingModel TemplatesSoftware TestingParallel Computing MethodsMonte Carlo MethodParallel ProgrammingStatistical InferenceComputer ModelingApproximate Bayesian Computation
The runjags package provides a set of interface functions to facilitate running Markov chain Monte Carlo models in JAGS from within R. Automated calculation of appropriate convergence and sample length diagnostics, user-friendly access to commonly used graphical outputs and summary statistics, and parallelized methods of running JAGS are provided. Template model specifications can be generated using a standard lme4-style formula interface to assist users less familiar with the BUGS syntax. Automated simulation study functions are implemented to facilitate model performance assessment, as well as drop-k type cross-validation studies, using high performance computing clusters such as those provided by parallel. A module extension for JAGS is also included within runjags, providing the Pareto family of distributions and a series of minimally-informative priors including the DuMouchel and half-Cauchy priors. This paper outlines the primary functions of this package, and gives an illustration of a simulation study to assess the sensitivity of two equivalent model formulations to different prior distributions.
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