论文标题
quangn:稳健量子图卷积网络的噪声适应训练
QuanGCN: Noise-Adaptive Training for Robust Quantum Graph Convolutional Networks
论文作者
论文摘要
量子神经网络(QNN)是量子计算和机器学习的跨学科领域,由于特定的量子优势,吸引了巨大的研究兴趣。尽管在计算机视觉域中开发了很多努力,但尚未完全探索现实图形属性分类的QNN,并在量子设备中对其进行了评估。为了弥合差距,我们提出了量子图卷积网络(QUANCN),该网络以跨栅极量子操作的顺序了解了节点之间的局部消息。为了减轻现代量子设备的固有噪声,我们应用稀疏约束来稀疏节点的连接并减轻量子门的错误率,并使用SKIP连接来增强具有原始节点特征的量子输出以提高鲁棒性。实验结果表明,我们的Quangn在功能上比几个基准图数据集上的经典算法具有比较可比性甚至优越。模拟器和实际量子机的全面评估都证明了Quangn对未来图分析问题的适用性。
Quantum neural networks (QNNs), an interdisciplinary field of quantum computing and machine learning, have attracted tremendous research interests due to the specific quantum advantages. Despite lots of efforts developed in computer vision domain, one has not fully explored QNNs for the real-world graph property classification and evaluated them in the quantum device. To bridge the gap, we propose quantum graph convolutional networks (QuanGCN), which learns the local message passing among nodes with the sequence of crossing-gate quantum operations. To mitigate the inherent noises from modern quantum devices, we apply sparse constraint to sparsify the nodes' connections and relieve the error rate of quantum gates, and use skip connection to augment the quantum outputs with original node features to improve robustness. The experimental results show that our QuanGCN is functionally comparable or even superior than the classical algorithms on several benchmark graph datasets. The comprehensive evaluations in both simulator and real quantum machines demonstrate the applicability of QuanGCN to the future graph analysis problem.