countSTAR - Flexible Modeling of Count Data
For Bayesian and classical inference and prediction with
count-valued data, Simultaneous Transformation and Rounding
(STAR) Models provide a flexible, interpretable, and
easy-to-use approach. STAR models the observed count data using
a rounded continuous data model and incorporates a
transformation for greater flexibility. Implicitly, STAR
formalizes the commonly-applied yet incoherent procedure of (i)
transforming count-valued data and subsequently (ii) modeling
the transformed data using Gaussian models. STAR is
well-defined for count-valued data, which is reflected in
predictive accuracy, and is designed to account for
zero-inflation, bounded or censored data, and over- or
underdispersion. Importantly, STAR is easy to combine with
existing MCMC or point estimation methods for continuous data,
which allows seamless adaptation of continuous data models
(such as linear regressions, additive models, BART, random
forests, and gradient boosting machines) for count-valued data.
The package also includes several methods for modeling count
time series data, namely via warped Dynamic Linear Models. For
more details and background on these methodologies, see the
works of Kowal and Canale (2020) <doi:10.1214/20-EJS1707>,
Kowal and Wu (2022) <doi:10.1111/biom.13617>, King and Kowal
(2023) <doi:10.1214/23-BA1394>, and Kowal and Wu (2023)
<arXiv:2110.12316>.