When Noisy Quantum Order Finding Remains Recoverable for Shor's Algorithm
Qingxin Yang, Stefano Markidis

TL;DR
This study investigates the conditions under which noisy quantum order finding remains successful in Shor's algorithm, analyzing quantum distributions with machine learning to identify key features affecting recoverability.
Contribution
The paper introduces a comprehensive analysis of noisy order finding recoverability using feature-based classification and interpretable decision trees, highlighting key indicators like verified mass fraction.
Findings
Dominant verified mass fraction strongly predicts recoverability.
Structured distributions can remain recoverable despite noise.
Classical post-processing may fail when it favors incorrect denominators.
Abstract
Order finding is the core subroutine of Shor's algorithm. On NISQ hardware, phase estimation output distributions are often distorted by noise, making correct order recovery difficult. We study recoverability in noisy order finding: given a measured precision-register distribution, when does standard classical post-processing still return the true order? We analyze 680 distributions from IBM quantum systems across problem instances and circuit settings. For each distribution, we apply continued-fraction post-processing with modular verification and define recoverability as whether the recovered order equals the true one. We characterize each distribution using four features: autocorrelation peak strength, normalized entropy, dominant verified mass fraction, and verified margin fraction. We evaluate these quantities using marginal feature comparisons, single-feature AUROC analysis, and…
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