countts:Thomson Sampling for Zero-Inflated Count Outcomes
A specialized tool is designed for assessing contextual bandit algorithms, particularly those aimed at handling
overdispersed and zero-inflated count data. It offers a
simulated testing environment that includes various models like
Poisson, Overdispersed Poisson, Zero-inflated Poisson, and
Zero-inflated Overdispersed Poisson. The package is capable of
executing five specific algorithms: Linear Thompson sampling
with log transformation on the outcome, Thompson sampling
Poisson, Thompson sampling Negative Binomial, Thompson sampling
Zero-inflated Poisson, and Thompson sampling Zero-inflated
Negative Binomial. Additionally, it can generate regret plots
to evaluate the performance of contextual bandit algorithms.
This package is based on the algorithms by Liu et al. (2023)
<arXiv:2311.14359>.