Correlated optical convolutional neural network with "quantum speedup".

IF 19.4 1区 物理与天体物理 Q1 Physics and Astronomy Light, science & applications Pub Date : 2024-01-31 DOI:10.1038/s41377-024-01376-7
Yifan Sun, Qian Li, Ling-Jun Kong, Xiangdong Zhang
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Abstract

Compared with electrical neural networks, optical neural networks (ONNs) have the potentials to break the limit of the bandwidth and reduce the consumption of energy, and therefore draw much attention in recent years. By far, several types of ONNs have been implemented. However, the current ONNs cannot realize the acceleration as powerful as that indicated by the models like quantum neural networks. How to construct and realize an ONN with the quantum speedup is a huge challenge. Here, we propose theoretically and demonstrate experimentally a new type of optical convolutional neural network by introducing the optical correlation. It is called the correlated optical convolutional neural network (COCNN). We show that the COCNN can exhibit "quantum speedup" in the training process. The character is verified from the two aspects. One is the direct illustration of the faster convergence by comparing the loss function curves of the COCNN with that of the traditional convolutional neural network (CNN). Such a result is compatible with the training performance of the recently proposed quantum convolutional neural network (QCNN). The other is the demonstration of the COCNN's capability to perform the QCNN phase recognition circuit, validating the connection between the COCNN and the QCNN. Furthermore, we take the COCNN analog to the 3-qubit QCNN phase recognition circuit as an example and perform an experiment to show the soundness and the feasibility of it. The results perfectly match the theoretical calculations. Our proposal opens up a new avenue for realizing the ONNs with the quantum speedup, which will benefit the information processing in the era of big data.

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具有 "量子加速 "功能的相关光学卷积神经网络
与电神经网络相比,光神经网络(ONNs)具有突破带宽限制和降低能耗的潜力,因此近年来备受关注。迄今为止,已有多种类型的光神经网络得以实现。然而,目前的 ONN 无法实现量子神经网络等模型所显示的强大加速能力。如何构建并实现量子加速的 ONN 是一个巨大的挑战。在此,我们从理论上提出并通过实验证明了一种引入光相关性的新型光卷积神经网络。它被称为相关光卷积神经网络(COCNN)。我们证明,COCNN 在训练过程中可以表现出 "量子加速"。我们从两个方面验证了这一特性。一是通过比较 COCNN 与传统卷积神经网络(CNN)的损失函数曲线,直接说明了收敛速度更快。这一结果与最近提出的量子卷积神经网络(QCNN)的训练性能相吻合。另一方面,COCNN 演示了执行 QCNN 相位识别电路的能力,验证了 COCNN 与 QCNN 之间的联系。此外,我们还以 COCNN 模拟 3 量子位 QCNN 相位识别电路为例,进行了实验,以证明其合理性和可行性。实验结果与理论计算结果完全吻合。我们的建议为实现量子加速的ONNs开辟了一条新途径,这将有利于大数据时代的信息处理。
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来源期刊
CiteScore
27.00
自引率
2.60%
发文量
331
审稿时长
20 weeks
期刊介绍: Light: Science & Applications is an open-access, fully peer-reviewed publication.It publishes high-quality optics and photonics research globally, covering fundamental research and important issues in engineering and applied sciences related to optics and photonics.
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