bartMachine (version 1.2.3)

plot_convergence_diagnostics: Plot Convergence Diagnostics

Description

A suite of plots to assess convergence diagonstics and features of the BART model.

Usage

plot_convergence_diagnostics(bart_machine, plots = c("sigsqs", "mh_acceptance", "num_nodes", "tree_depths"))

Arguments

bart_machine
An object of class ``bartMachine''.
plots
The list of plots to be displayed. The four options are: "sigsqs", "mh_acceptance", "num_nodes", "tree_depths".

Value

None.

Details

The ``sigsqs'' option plots the posterior error variance estimates by the Gibbs sample number. This is a standard tool to assess convergence of MCMC algorithms. This option is not applicable to classification BART models. The ``mh_acceptance'' option plots the proportion of Metropolis-Hastings steps accepted for each Gibbs sample (number accepted divided by number of trees). The ``num_nodes'' option plots the average number of nodes across each tree in the sum-of-trees model by the Gibbs sample number (for post burn-in only). The blue line is the average number of nodes over all trees. The ``tree_depths'' option plots the average tree depth across each tree in the sum-of-trees model by the Gibbs sample number (for post burn-in only). The blue line is the average number of nodes over all trees.

Examples

Run this code
## Not run: 
# #generate Friedman data
# set.seed(11)
# n  = 200 
# p = 5
# X = data.frame(matrix(runif(n * p), ncol = p))
# y = 10 * sin(pi* X[ ,1] * X[,2]) +20 * (X[,3] -.5)^2 + 10 * X[ ,4] + 5 * X[,5] + rnorm(n)
# 
# ##build BART regression model
# bart_machine = bartMachine(X, y)
# 
# #plot convergence diagnostics
# plot_convergence_diagnostics(bart_machine)
# ## End(Not run)

Run the code above in your browser using DataLab