AI RESEARCH
Kernel Single-Index Bandits: Estimation, Inference, and Learning
arXiv CS.LG
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ArXi:2603.18938v1 Announce Type: cross We study contextual bandits with finitely many actions in which the reward of each arm follows a single-index model with an arm-specific index parameter and an unknown nonparametric link function. We consider a regime in which arms correspond to stable decision options and covariates evolve adaptively under the bandit policy. This setting creates significant statistical challenges: the sampling distribution depends on the allocation rule, observations are dependent over time, and inverse-propensity weighting induces variance inflation.