2022
DOI: 10.48550/arxiv.2205.03820
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Some performance considerations when using multi-armed bandit algorithms in the presence of missing data

Xijin Chen,
Kim May Lee,
Sofia S. Villar
et al.

Abstract: When using multi-armed bandit algorithms, the potential impact of missing data is often overlooked. In practice, the simplest approach is to ignore missing outcomes and continue to sample following the bandit algorithm. We investigate the impact of missing data on several bandit algorithms via a simulation study assuming the rewards are missing at random. We focus on two-armed bandit algorithms with binary outcomes in the context of patient allocation for clinical trials with relatively small sample sizes. How… Show more

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