Measurement-Guided State Refinement for Shallow Feedback-Based Quantum Optimization Algorithm
Abstract
Limited circuit depth remains a central constraint for quantum optimization in the noisy intermediate-scale quantum (NISQ) regime, where shallow unitary dynamics may fail to sufficiently concentrate probability on low-energy configurations. We introduce Measurement-Guided Initialization (MGI), an iterative strategy that uses measurement outcomes from previous executions to update the initialization of subsequent runs. The method extracts single-qubit marginal probabilities from dominant measurement outcomes and prepares a biased product-state initialization, allowing information obtained during optimization to be reused without introducing classical parameter optimization. We implement this approach in the context of the Feedback-Based Algorithm for Quantum Optimization (FALQON) and evaluate its performance on weighted MaxCut instances. Numerical results show that measurement-guided initialization improves the performance of shallow-depth circuits and enables iterative refinement toward high-quality solutions while preserving the non-variational structure of the algorithm. These results indicate that measurement statistics can be exploited to improve shallow quantum optimization protocols compatible with NISQ devices.
Cite
@article{arxiv.2602.20407,
title = {Measurement-Guided State Refinement for Shallow Feedback-Based Quantum Optimization Algorithm},
author = {Lucas A. M. Rattighieri and Pedro M. Prado and Marcos C. de Oliveira and Felipe F. Fanchini},
journal= {arXiv preprint arXiv:2602.20407},
year = {2026}
}
Comments
12 pages, 6 figures