量子纠错
物理
卷积神经网络
量子位元
量子
量子计算机
量子算法
量子机器学习
量子网络
计算机科学
算法
量子力学
拓扑(电路)
理论计算机科学
人工智能
数学
组合数学
作者
Iris Cong,Soonwon Choi,Mikhail D. Lukin
出处
期刊:Nature Physics
[Springer Nature]
日期:2019-08-26
卷期号:15 (12): 1273-1278
被引量:260
标识
DOI:10.1038/s41567-019-0648-8
摘要
Neural network-based machine learning has recently proven successful for many complex applications ranging from image recognition to precision medicine. However, its direct application to problems in quantum physics is challenging due to the exponential complexity of many-body systems. Motivated by recent advances in realizing quantum information processors, we introduce and analyse a quantum circuit-based algorithm inspired by convolutional neural networks, a highly effective model in machine learning. Our quantum convolutional neural network (QCNN) uses only O(log(N)) variational parameters for input sizes of N qubits, allowing for its efficient training and implementation on realistic, near-term quantum devices. To explicitly illustrate its capabilities, we show that QCNNs can accurately recognize quantum states associated with a one-dimensional symmetry-protected topological phase, with performance surpassing existing approaches. We further demonstrate that QCNNs can be used to devise a quantum error correction scheme optimized for a given, unknown error model that substantially outperforms known quantum codes of comparable complexity. The potential experimental realizations and generalizations of QCNNs are also discussed. A quantum circuit-based algorithm inspired by convolutional neural networks is shown to successfully perform quantum phase recognition and devise quantum error correcting codes when applied to arbitrary input quantum states.
科研通智能强力驱动
Strongly Powered by AbleSci AI