Inspired by the success of classical neural networks, there has been tremendous effort to develop classical effective neural networks into quantum concept. In this paper, a novel hybrid quantum-classical neural network with deep residual learning (Res-HQCNN) is proposed. We firstly analysis how to connect residual block structure with a quantum neural network, and give the corresponding training algorithm. At the same time, the advantages and disadvantages of transforming deep residual learning into quantum concept are provided. As a result, the model can be trained in an end-to-end fashion, analogue to the backpropagation in classical neural networks. To explore the effectiveness of Res-HQCNN , we perform extensive experiments for quantum data with or without noisy on classical computer. The experimental results show the Res-HQCNN performs better to learn an unknown unitary transformation and has stronger robustness for noisy data, when compared to state of the arts. Moreover, the possible methods of combining residual learning with quantum neural networks are also discussed.
翻译:在古典神经网络的成功激励下,我们作出了巨大的努力,将古典有效的神经网络发展成量子概念。在本文中,提出了一个新的混合量子-古典神经网络,具有深层残余学习(Res-HQCNN)的建议。我们首先分析如何将残余区块结构与量子神经网络连接起来,并给出相应的培训算法。与此同时,提供了将深层残余学习转化为量子概念的利弊。因此,可以对模型进行端至端式的培训,将模型与古典神经网络的后向再适应模拟。为了探索Res-HQN的有效性,我们用古典计算机进行量子数据的广泛实验,无论是否如此。实验结果显示,Res-HQN更好地学习未知的单一转变,在与艺术状态相比,对扰动数据具有更强的活力。此外,还讨论了将残余学习与量子神经网络相结合的可能方法。