Machine-Learning based Decoding of Surface Code Syndromes in Quantum Error Correction

Debasmita Bhoumik, Pinaki Sen, Ritajit Majumdar, S. Sur-Kolay, L. Kj, S. S. Iyengar
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引用次数: 4

Abstract

: Errors in surface code have typically been decoded by Minimum Weight Perfect Matching (MWPM) based method. Recently, neural-network-based Machine Learning (ML) techniques have been employed for this purpose, although how an ML decoder will behave in a more realistic asymmetric noise model has not been studied. In this article we (i) establish a methodology to formulate the surface code decoding problem as an ML classification problem, and (ii) propose a two-level (low and high) ML-based decoding scheme, where the first (low) level corrects errors on physical qubits and the second (high) level corrects any existing logical errors, for various noise models. Our results show that our proposed decoding method achieves ∼ 10 × and ∼ 2 × higher values of pseudo-threshold and threshold respectively, than for those with MWPM. We also empirically establish that usage of more sophisticated ML models with higher training/testing time, do not provide significant improvement in the decoder performance.
量子纠错中基于机器学习的表面码证解码
表面码中的错误通常采用基于最小权重完美匹配(MWPM)的方法进行解码。最近,基于神经网络的机器学习(ML)技术已被用于此目的,尽管尚未研究ML解码器如何在更现实的非对称噪声模型中表现。在本文中,我们(i)建立了一种将表面代码解码问题表述为ML分类问题的方法,并且(ii)提出了一种基于ML的两级(低和高)解码方案,其中第一(低)级纠正物理量子比特上的错误,第二(高)级纠正任何现有的逻辑错误,用于各种噪声模型。我们的结果表明,我们提出的解码方法的伪阈值和阈值分别比使用MWPM的解码方法高10倍和2倍。我们还通过经验证明,使用更复杂的机器学习模型和更高的训练/测试时间,并不能显著提高解码器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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