Towards Noise-Resilient Quantum Multi-Armed and Stochastic Linear Bandits
arXiv cs.LG / 3/20/2026
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Key Points
- The paper analyzes the impact of noise on quantum MAB and stochastic linear bandits in NISQ devices and highlights the gap in relying on ideal quantum Monte Carlo for reward estimation.
- It proposes a noise-robust quantum Monte Carlo estimator to improve reward querying accuracy under realistic noise models.
- Building on this estimator, it introduces noise-robust QMAB and QSLB algorithms that aim to preserve quantum advantage even in noisy environments.
- Experimental results across several quantum noise models show improved estimation accuracy and reduced regret, demonstrating practical resilience on noisy quantum hardware.
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