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首页> 外文期刊>Quantum - the open journal for quantum science >Machine-learning-assisted correction of correlated qubit errors in a topological code
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Machine-learning-assisted correction of correlated qubit errors in a topological code

机译:拓扑代码中相关量子位错误的机器学习辅助校正

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A fault-tolerant quantum computation requires an efficient means to detect and correct errors that accumulate in encoded quantum information. In the context of machine learning, neural networks are a promising new approach to quantum error correction. Here we show that a recurrent neural network can be trained, using only experimentally accessible data, to detect errors in a widely used topological code, the surface code, with a performance above that of the established minimum-weight perfect matching (or blossom) decoder. The performance gain is achieved because the neural network decoder can detect correlations between bit-flip (X) and phase-flip (Z) errors. The machine learning algorithm adapts to the physical system, hence no noise model is needed. The long short-term memory layers of the recurrent neural network maintain their performance over a large number of quantum error correction cycles, making it a practical decoder for forthcoming experimental realizations of the surface code.
机译:容错量子计算需要一种有效的方法来检测和纠正累积在编码量子信息中的错误。在机器学习的背景下,神经网络是一种有前途的量子误差校正新方法。在这里,我们表明可以仅使用实验可访问的数据来训练递归神经网络,以检测广泛使用的拓扑代码(表面代码)中的错误,其性能优于已建立的最小权重完美匹配(或开花)解码器。由于神经网络解码器可以检测到位翻转(X)和相位翻转(Z)误差之间的相关性,因此可以提高性能。机器学习算法适应物理系统,因此不需要噪声模型。循环神经网络的长短期存储层在大量量子纠错循环中保持其性能,使其成为即将面世的表面代码实验实现的实用解码器。

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