Quantum solvability of noisy linear problems by divide-and-conquer strategy
Abstract
Noisy linear problems have been studied in various science and engineering disciplines. A class of "hard" noisy linear problems can be formulated as follows: Given a matrix and a vector constructed using a finite set of samples, a hidden vector or structure involved in is obtained by solving a noise-corrupted linear equation , where is a noise vector that cannot be identified. For solving such a noisy linear problem, we consider a quantum algorithm based on a divide-and-conquer strategy, wherein a large core process is divided into smaller subprocesses. The algorithm appropriately reduces both the computational complexities and size of a quantum sample. More specifically, if a quantum computer can access a particular reduced form of the quantum samples, polynomial quantum-sample and time complexities are achieved in the main computation. The size of a quantum sample and its executing system can be reduced, e.g., from exponential to sub-exponential with respect to the problem length, which is better than other results we are aware. We analyse the noise model conditions for such a quantum advantage, and show when the divide-and-conquer strategy can be beneficial for quantum noisy linear problems.
Cite
@article{arxiv.1908.06229,
title = {Quantum solvability of noisy linear problems by divide-and-conquer strategy},
author = {Wooyeong Song and Youngrong Lim and Kabgyun Jeong and Yun-Seong Ji and Jinhyoung Lee and Jaewan Kim and M. S. Kim and Jeongho Bang},
journal= {arXiv preprint arXiv:1908.06229},
year = {2022}
}
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published version