A graph neural network and multi-task learning-based decoding algorithm for enhancing XZZX code stability in biased noise

Quantum error correction is a technique that enhances a system’s ability to combat noise by encoding logical information into additional quantum bits, which plays a key role in building practical quantum computers. The XZZX surface code, with only one stabilizer generator on each face, demonstrates...

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Bibliographic Details
Published inChinese physics B Vol. 34; no. 5; pp. 50306 - 50313
Main Authors Xiao, Bo, Fan, Zai-Xu, Sun, Hui-Qian, Ma, Hong-Yang, Fan, Xing-Kui
Format Journal Article
LanguageEnglish
Published Chinese Physical Society and IOP Publishing Ltd 01.05.2025
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ISSN1674-1056
2058-3834
DOI10.1088/1674-1056/adbadb

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Summary:Quantum error correction is a technique that enhances a system’s ability to combat noise by encoding logical information into additional quantum bits, which plays a key role in building practical quantum computers. The XZZX surface code, with only one stabilizer generator on each face, demonstrates significant application potential under biased noise. However, the existing minimum weight perfect matching (MWPM) algorithm has high computational complexity and lacks flexibility in large-scale systems. Therefore, this paper proposes a decoding method that combines graph neural networks (GNN) with multi-classifiers, the syndrome is transformed into an undirected graph, and the features are aggregated by convolutional layers, providing a more efficient and accurate decoding strategy. In the experiments, we evaluated the performance of the XZZX code under different biased noise conditions (bias = 1, 20, 200) and different code distances ( d = 3, 5, 7, 9, 11). The experimental results show that under low bias noise (bias = 1), the GNN decoder achieves a threshold of 0.18386, an improvement of approximately 19.12% compared to the MWPM decoder. Under high bias noise (bias = 200), the GNN decoder reaches a threshold of 0.40542, improving by approximately 20.76%, overcoming the limitations of the conventional decoder. They demonstrate that the GNN decoding method exhibits superior performance and has broad application potential in the error correction of XZZX code.
ISSN:1674-1056
2058-3834
DOI:10.1088/1674-1056/adbadb