bayesvl - Visually Learning the Graphical Structure of Bayesian Networks
and Performing MCMC with 'Stan'
Provides users with its associated functions for
pedagogical purposes in visually learning Bayesian networks and
Markov chain Monte Carlo (MCMC) computations. It enables users
to: a) Create and examine the (starting) graphical structure of
Bayesian networks; b) Create random Bayesian networks using a
dataset with customized constraints; c) Generate Stan code for
structures of Bayesian networks for sampling the data and
learning parameters; d) Plot the network graphs; e) Perform
Markov chain Monte Carlo computations and produce graphs for
posteriors checks. The package refers to one reference item,
which describes the methods and algorithms: Vuong, Quan-Hoang
and La, Viet-Phuong (2019) <doi:10.31219/osf.io/w5dx6> The
'bayesvl' R package. Open Science Framework (May 18).