AI RESEARCH
Batched Stochastic Linear Bandits with 1-Bit Communication Constraints
arXiv CS.LG
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ArXi:2605.30976v1 Announce Type: cross We study stochastic linear bandits under a natural combination of batching and communication constraints: the time horizon is partitioned into batches of equal size $B$, and during each batch the learner sends $B$ requested arm pulls to an agent, who then observes the corresponding $B$ rewards and responds with a single bit of feedback to the learner. For each batch, the learner specifies the 1-bit quantization rule the agent uses, which may depend on all previously received bits but not on any past rewards directly.