bayesian supports Bayesian modeling using
The stable version of
bayesian can be installed from CRAN using:
The development version of
bayesian can be installed from GitHub using:
library(bayesian) bayesian_mod <- bayesian() |> set_engine("brms") |> fit( rating ~ treat + period + carry + (1 | subject), data = inhaler ) summary(bayesian_mod$fit)
For more details, get started with
bayesian in publications, please use:
Hamada S. Badr and Paul C. Bürkner (2021): bayesian: Bindings for Bayesian TidyModels, Comprehensive R Archive Network (CRAN). URL: https://hsbadr.github.io/bayesian/.
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