Horst, Nicholas H2023-11-292023-11-292023https://hdl.handle.net/11299/258805This research delves into the assessment of the Gittins Index, a predictive metric pivotal in guiding artificial intelligence agents within multi-armed bandit scenarios. The study unfolds through two trials, one devoid of Gittins Index guidance and the other with the index informing decision-making in a virtual slot machine simulation. Results reveal a notable increase in credit accumulation in the guided trial, maintaining a comparable machine count across both trials. The Gittins Index consistently demonstrates high predictive accuracy. Conclusively, the Gittins Index emerges as a robust tool, offering valuable insights for optimizing decision processes in artificial intelligence training, exemplified by its efficacy in navigating search spaces with enhanced efficiency.enTesting the Robustness of the Gittins Index Through A Virtual Slot Machine SimulationPresentation