AI RESEARCH
Active Learning for Stochastic Contextual Linear Bandits
arXiv CS.LG
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ArXi:2605.24803v1 Announce Type: new A key goal in stochastic contextual linear bandits is to efficiently learn a near-optimal policy. Prior algorithms for this problem learn a policy by strategically sampling actions but naively (passively) sampling contexts from the underlying context distribution. However, in many practical scenarios -- including online content recommendation, survey research, and clinical trials -- practitioners can actively sample or recruit contexts based on prior knowledge of the context distribution.