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Sample-efficient quantum error mitigation via classical learning surrogates

Quantum Physics 2025-11-11 v1 Artificial Intelligence Machine Learning

Abstract

The pursuit of practical quantum utility on near-term quantum processors is critically challenged by their inherent noise. Quantum error mitigation (QEM) techniques are leading solutions to improve computation fidelity with relatively low qubit-overhead, while full-scale quantum error correction remains a distant goal. However, QEM techniques incur substantial measurement overheads, especially when applied to families of quantum circuits parameterized by classical inputs. Focusing on zero-noise extrapolation (ZNE), a widely adopted QEM technique, here we devise the surrogate-enabled ZNE (S-ZNE), which leverages classical learning surrogates to perform ZNE entirely on the classical side. Unlike conventional ZNE, whose measurement cost scales linearly with the number of circuits, S-ZNE requires only constant measurement overhead for an entire family of quantum circuits, offering superior scalability. Theoretical analysis indicates that S-ZNE achieves accuracy comparable to conventional ZNE in many practical scenarios, and numerical experiments on up to 100-qubit ground-state energy and quantum metrology tasks confirm its effectiveness. Our approach provides a template that can be effectively extended to other quantum error mitigation protocols, opening a promising path toward scalable error mitigation.

Keywords

Cite

@article{arxiv.2511.07092,
  title  = {Sample-efficient quantum error mitigation via classical learning surrogates},
  author = {Wei-You Liao and Ge Yan and Yujin Song and Tian-Ci Tian and Wei-Ming Zhu and De-Tao Jiang and Yuxuan Du and He-Liang Huang},
  journal= {arXiv preprint arXiv:2511.07092},
  year   = {2025}
}

Comments

26 pages, 8 figures