Single-shot measurement learning as a self-certifying estimator for quantum-enhanced sensing
Jeongho Bang

TL;DR
This paper introduces Single-shot measurement learning (SSML) as a self-certifying, adaptive estimator that preserves quantum metrological advantages in sensing, demonstrated through theoretical analysis and photonic NOON-state simulations.
Contribution
It recasts SSML as an intrinsic, Fisher-calibrated estimator that maintains quantum enhancement in sensing protocols, with practical validation via Monte Carlo simulations.
Findings
Terminal run length certifies local alignment and infidelity reduction.
SSML preserves quantum Fisher information using only one classical bit per copy.
Simulations show near-inverse infidelity decay and Heisenberg scaling under ideal conditions.
Abstract
Single-shot measurement learning (SSML) learns a compensation unitary from a one-bit success/failure record and halts after a prescribed run of consecutive successes. We recast SSML as an adaptive estimator on a parameterized sensing manifold and ask what role it can play in quantum-enhanced sensing. First, we show that the terminal run itself furnishes an intrinsic certificate of local alignment: longer terminal runs certify smaller infidelity, and near the optimum this becomes a Fisher-calibrated certificate of parameter error. Second, for compensation-type sensing families, the Bernoulli success/failure record is locally matched to the probe quantum Fisher information (QFI), so SSML preserves the probe's metrological content despite using only one classical bit per copy. In this sense, SSML makes the quantum enhancement carried by the probe operationally available in an online…
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