maclogp - Measures of Uncertainty for Model Selection
Following the common types of measures of uncertainty for
parameter estimation, two measures of uncertainty were proposed
for model selection, see Liu, Li and Jiang (2020)
<doi:10.1007/s11749-020-00737-9>. The first measure is a kind
of model confidence set that relates to the variation of model
selection, called Mac. The second measure focuses on error of
model selection, called LogP. They are all computed via
bootstrapping. This package provides functions to compute these
two measures. Furthermore, a similar model confidence set
adapted from Bayesian Model Averaging can also be computed
using this package.