SSQEM: Semi-Supervised Quantum Error Mitigation

Alperen Sayar, Suayb S. Arslan, Tuna Çakar
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Abstract

One of the fundamental obstacles for quantum computation (especially in noisy intermediate-scale quantum (NISQ) era) to be a near-term reality is the manufacturing gate/measurement technologies that make the system state quite fragile due to decoherence. As the world we live in is quite far away from the ideal, complex particle-level material imperfections due to interactions with the environment are an inevitable part of the computation process. Hence keeping the accurate state of the particles involved in the computation becomes almost impossible. In this study, we posit that any physical quantum computer sys-tem manifests more multiple error source processes as the number of qubits as well as depth of the circuit increase. Accordingly, we propose a semi-supervised quantum error mitigation technique consisting of two separate stages each based on an unsupervised and a supervised machine learning model, respectively. The proposed scheme initially learns the error types/processes and then compensates the error due to data processing and the projective measurement all in the computational basis.
SSQEM:半监督量子误差缓解
量子计算(特别是在有噪声的中尺度量子(NISQ)时代)近期成为现实的基本障碍之一是制造门/测量技术,这些技术由于退相干而使系统状态非常脆弱。由于我们所处的世界与理想世界相距甚远,由于与环境的相互作用而产生的复杂粒子级材料缺陷是计算过程中不可避免的一部分。因此,在计算中保持粒子的准确状态几乎是不可能的。在本研究中,我们假设任何物理量子计算机系统随着量子比特数量和电路深度的增加而表现出更多的多重误差源过程。因此,我们提出了一种半监督量子误差缓解技术,该技术由两个独立的阶段组成,每个阶段分别基于无监督和有监督的机器学习模型。该方案首先学习误差类型/过程,然后在计算基础上补偿由于数据处理和投影测量引起的误差。
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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