English

Efficient Online Learning for Cognitive Radar-Cellular Coexistence via Contextual Thompson Sampling

Information Theory 2020-08-25 v1 Machine Learning math.IT

Abstract

This paper describes a sequential, or online, learning scheme for adaptive radar transmissions that facilitate spectrum sharing with a non-cooperative cellular network. First, the interference channel between the radar and a spatially distant cellular network is modeled. Then, a linear Contextual Bandit (CB) learning framework is applied to drive the radar's behavior. The fundamental trade-off between exploration and exploitation is balanced by a proposed Thompson Sampling (TS) algorithm, a pseudo-Bayesian approach which selects waveform parameters based on the posterior probability that a specific waveform is optimal, given discounted channel information as context. It is shown that the contextual TS approach converges more rapidly to behavior that minimizes mutual interference and maximizes spectrum utilization than comparable contextual bandit algorithms. Additionally, we show that the TS learning scheme results in a favorable SINR distribution compared to other online learning algorithms. Finally, the proposed TS algorithm is compared to a deep reinforcement learning model. We show that the TS algorithm maintains competitive performance with a more complex Deep Q-Network (DQN).

Keywords

Cite

@article{arxiv.2008.10149,
  title  = {Efficient Online Learning for Cognitive Radar-Cellular Coexistence via Contextual Thompson Sampling},
  author = {Charles E. Thornton and R. Michael Buehrer and Anthony F. Martone},
  journal= {arXiv preprint arXiv:2008.10149},
  year   = {2020}
}

Comments

6 pages, 6 Figures, To Appear in Proc. IEEE GLOBECOM 2020, Taipei Taiwan

R2 v1 2026-06-23T18:03:05.580Z