Efficient Inference Without Trading-off Regret in Bandits: An Allocation Probability Test for Thompson Sampling
This addresses the challenge of reliable inference in small pilot studies for adaptive experiments, enabling promising interventions to advance without requiring large sample sizes or trading off regret.
The paper tackles the problem of conducting statistical inference in adaptive bandit experiments without sacrificing regret, introducing an Allocation Probability Test for Thompson Sampling that works in small samples without restricting the algorithm's exploitative nature. The method demonstrates improved regret and inference performance in simulations and a real-world mental health experiment.
Using bandit algorithms to conduct adaptive randomised experiments can minimise regret, but it poses major challenges for statistical inference (e.g., biased estimators, inflated type-I error and reduced power). Recent attempts to address these challenges typically impose restrictions on the exploitative nature of the bandit algorithm$-$trading off regret$-$and require large sample sizes to ensure asymptotic guarantees. However, large experiments generally follow a successful pilot study, which is tightly constrained in its size or duration. Increasing power in such small pilot experiments, without limiting the adaptive nature of the algorithm, can allow promising interventions to reach a larger experimental phase. In this work we introduce a novel hypothesis test, uniquely based on the allocation probabilities of the bandit algorithm, and without constraining its exploitative nature or requiring a minimum experimental size. We characterise our $Allocation\ Probability\ Test$ when applied to $Thompson\ Sampling$, presenting its asymptotic theoretical properties, and illustrating its finite-sample performances compared to state-of-the-art approaches. We demonstrate the regret and inferential advantages of our approach, particularly in small samples, in both extensive simulations and in a real-world experiment on mental health aspects.