picR - Predictive Information Criteria for Model Selection
Computation of predictive information criteria (PIC) from
select model object classes for model selection in predictive
contexts. In contrast to the more widely used Akaike
Information Criterion (AIC), which are derived under the
assumption that target(s) of prediction (i.e. validation data)
are independently and identically distributed to the fitting
data, the PIC are derived under less restrictive assumptions
and thus generalize AIC to the more practically relevant case
of training/validation data heterogeneity. The methodology
featured in this package is based on Flores (2021)
<https://iro.uiowa.edu/esploro/outputs/doctoral/A-new-class-of-information-criteria/9984097169902771?institution=01IOWA_INST>
"A new class of information criteria for improved prediction in
the presence of training/validation data heterogeneity".