Learning to Transmit Over Unknown Erasure Channels with Empirical Erasure Rate Feedback
Learning to Transmit Over Unknown Erasure Channels with Empirical Erasure Rate Feedback
We address the problem of reliable data transmission within a finite time horizon $T$ over a binary erasure channel with unknown erasure probability. We consider a feedback model wherein the transmitter can query the receiver infrequently and obtain the empirical erasure rate experienced by the latter. We aim to minimize a regret quantity, i.e. how much worse a strategy performs compared to an oracle who knows the probability of erasure, while operating at the same block error rate. A learning vs. exploitation dilemma manifests in this scenario -- specifically, we need to balance between (i) learning the erasure probability with reasonable accuracy and (ii) utilizing the channel to transmit as many information bits as possible. We propose two strategies: (i) a two-phase approach using rate estimation followed by transmission that achieves an $O({T}^{\frac 23})$ regret using only one query, and (ii) a windowing strategy using geometrically-increasing window sizes that achieves an $O({\sqrt{T}})$ regret using $O(\log(T))$ queries.
Haricharan Balasundaram、Krishna Jagannathan
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Haricharan Balasundaram,Krishna Jagannathan.Learning to Transmit Over Unknown Erasure Channels with Empirical Erasure Rate Feedback[EB/OL].(2025-07-11)[2025-07-23].https://arxiv.org/abs/2507.08599.点此复制
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