In recent years, with rapid progress in the development of quantum technologies, quantum machine learning has attracted a lot of interest. In particular, a family of hybrid quantum-classical neural networks, consisting of classical and quantum elements, has been massively explored for the purpose of improving the performance of classical neural networks. In this paper, we propose a novel hybrid quantum-classical algorithm called quantum dilated convolutional neural networks (QDCNNs). Our method extends the concept of dilated convolution, which has been widely applied in modern deep learning algorithms, to the context of hybrid neural networks. The proposed QDCNNs are able to capture larger context during the quantum convolution process while reducing the computational cost. We perform empirical experiments on MNIST and Fashion-MNIST datasets for the task of image recognition and demonstrate that QDCNN models generally enjoy better performances in terms of both accuracy and computation efficiency compared to existing quantum convolutional neural networks (QCNNs).
翻译:近年来,随着量子技术的迅速发展,量子机器的学习吸引了许多人的兴趣,特别是,为了改善古典神经网络的性能,对一个由古典和量子元素组成的混合量子古典神经网络的组合进行了大规模探索,目的是为了改进古典神经网络的性能。在本文中,我们提出了一个新型的混合量子古典算法,称为量子放大神经网络(QDCNNs ) 。我们的方法把在现代深层学习算法中广泛应用的变异概念扩大到混合神经网络。拟议的QDCNNs能够在量子变异过程中捕捉更大的环境,同时降低计算成本。我们在MNIST和Fashon-MNIST数据集上进行了实验性实验,以完成图像识别任务,并表明QDCNNM模型在准确性和计算效率方面一般比现有的量子革命神经网络(QCNNs)都表现更好。