Deep learning is one of the most successful and far-reaching strategies used in machine learning today. However, the scale and utility of neural networks is still greatly limited by the current hardware used to train them. These concerns have become increasingly pressing as conventional computers quickly approach physical limitations that will slow performance improvements in years to come. For these reasons, scientists have begun to explore alternative computing platforms, like quantum computers, for training neural networks. In recent years, variational quantum circuits have emerged as one of the most successful approaches to quantum deep learning on noisy intermediate scale quantum devices. We propose a hybrid quantum-classical neural network architecture where each neuron is a variational quantum circuit. We empirically analyze the performance of this hybrid neural network on a series of binary classification data sets using a simulated universal quantum computer and a state of the art universal quantum computer. On simulated hardware, we observe that the hybrid neural network achieves roughly 10% higher classification accuracy and 20% better minimization of cost than an individual variational quantum circuit. On quantum hardware, we observe that each model only performs well when the qubit and gate count is sufficiently small.
翻译:深层学习是当今机器学习中最成功和意义最深远的战略之一。 但是,神经网络的规模和效用仍然受到目前用于培训这些网络的硬件的极大限制。 这些关注已变得日益紧迫,因为常规计算机迅速接近物理限制,从而在未来数年内减缓性能的改善。 出于这些原因,科学家已开始探索替代计算平台,如量子计算机,用于培训神经网络。近年来,变量子电路已成为在噪音中等规模量子设备上进行量子深层学习的最成功方法之一。 我们提议了一个混合的量子-古典神经网络结构,其中每个神经是变量子电路。 我们用模拟通用量子计算机和通用量子计算机的状态对一系列双轨分类数据集的性能进行了实验分析。 在模拟硬件方面,我们看到混合神经网络的分类精度达到大约10%,成本的最小度比单个变量量量电路要高20%。 在量子硬件方面,我们发现每种模型只有在数量小的情况下才能运行良好。