ArXiv TLDR

Multi-User mmWave Beam and Rate Adaptation via Combinatorial Satisficing Bandits

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2604.14908

Emre Özyıldırım, Barış Yaycı, Umut Eren Akturk, Cem Tekin

cs.LGeess.SYstat.ML

TLDR

SAT-CTS is a new policy for multi-user mmWave beam and rate adaptation using combinatorial satisficing bandits to meet QoS targets efficiently.

Key contributions

  • Proposes SAT-CTS for multi-user mmWave beam/rate adaptation using a combinatorial satisficing bandit framework.
  • Introduces a novel satisficing objective and provides the first finite-time regret bounds for this setting.
  • Achieves constant cumulative satisficing regret (if realizable) and O((log T)^2) standard regret.
  • Improves average throughput, fairness, and reduces satisficing regret without channel state knowledge.

Why it matters

This paper addresses efficient beam and rate adaptation in mmWave systems, crucial for 5G and beyond. It introduces SAT-CTS, a novel learning policy that meets QoS targets without needing full channel state information. This leads to better resource allocation and user experience in future wireless networks.

Original Abstract

We study downlink beam and rate adaptation in a multi-user mmWave MISO system where multiple base stations (BSs), each using analog beamforming from finite codebooks, serve multiple single-antenna user equipments (UEs) with a unique beam per UE and discrete data transmission rates. BSs learn about transmission success based on ACK/NACK feedback. To encode service goals, we introduce a satisficing throughput threshold $τ_r$ and cast joint beam and rate adaptation as a combinatorial semi-bandit over beam-rate tuples. Within this framework, we propose SAT-CTS, a lightweight, threshold-aware policy that blends conservative confidence estimates with posterior sampling, steering learning toward meeting $τ_r$ rather than merely maximizing. Our main theoretical contribution provides the first finite-time regret bounds for combinatorial semi-bandits with satisficing objective: when $τ_r$ is realizable, we upper bound the cumulative satisficing regret to the target with a time-independent constant, and when $τ_r$ is non-realizable, we show that SAT-CTS incurs only a finite expected transient outside committed CTS rounds, after which its regret is governed by the sum of the regret contributions of restarted CTS rounds, yielding an $O((\log T)^2)$ standard regret bound. On the practical side, we evaluate the performance via cumulative satisficing regret to $τ_r$ alongside standard regret and fairness. Experiments with time-varying sparse multipath channels show that SAT-CTS consistently reduces satisficing regret and maintains competitive standard regret, while achieving favorable average throughput and fairness across users, indicating that feedback-efficient learning can equitably allocate beams and rates to meet QoS targets without channel state knowledge.

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