QUANT-PHCCLGDec 14, 2025

Scalable Quantum Error Mitigation with Neighbor-Informed Learning

arXiv:2512.12578v1
Originality Highly original
AI Analysis

This addresses the critical problem of quantum error mitigation for near-term quantum computing, offering a theoretically grounded and efficient solution that is incremental but with strong improvements.

The paper tackles noise in quantum hardware by introducing neighbor-informed learning (NIL), a scalable quantum error mitigation framework that unifies and strengthens existing methods, achieving higher accuracy and efficiency with a training set size scaling logarithmically with circuit number.

Noise in quantum hardware is the primary obstacle to realizing the transformative potential of quantum computing. Quantum error mitigation (QEM) offers a promising pathway to enhance computational accuracy on near-term devices, yet existing methods face a difficult trade-off between performance, resource overhead, and theoretical guarantees. In this work, we introduce neighbor-informed learning (NIL), a versatile and scalable QEM framework that unifies and strengthens existing methods such as zero-noise extrapolation (ZNE) and probabilistic error cancellation (PEC), while offering improved flexibility, accuracy, efficiency, and robustness. NIL learns to predict the ideal output of a target quantum circuit from the noisy outputs of its structurally related ``neighbor'' circuits. A key innovation is our 2-design training method, which generates training data for our machine learning model. In contrast to conventional learning-based QEM protocols that create training circuits by replacing non-Clifford gates with uniformly random Clifford gates, our approach achieves higher accuracy and efficiency, as demonstrated by both theoretical analysis and numerical simulation. Furthermore, we prove that the required size of the training set scales only \emph{logarithmically} with the total number of neighbor circuits, enabling NIL to be applied to problems involving large-scale quantum circuits. Our work establishes a theoretically grounded and practically efficient framework for QEM, paving a viable path toward achieving quantum advantage on noisy hardware.

Foundations

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