论文标题
使用高斯工艺与性能量子内核一起学习量子机器
Quantum Machine Learning using Gaussian Processes with Performant Quantum Kernels
论文作者
论文摘要
量子计算机有机会对各种计算任务进行变革。最近,已经提出建议使用内核方法使用量子优势执行回归,分类和其他机器学习任务。虽然毫无疑问是机器学习中量子优势的必要条件,但这还不够,因为并非所有内核都同样有效。在这里,我们研究了使用量子计算机执行一维回归的机器学习任务,以及使用高斯流程的增强学习。通过使用额外的量子资源增强性能的经典内核的近似值,我们证明,在模拟和硬件上,量子设备都可以执行机器学习任务,至少要比经典灵感更好。我们知情的内核设计展示了有效利用量子设备进行机器学习任务的途径。
Quantum computers have the opportunity to be transformative for a variety of computational tasks. Recently, there have been proposals to use the unsimulatably of large quantum devices to perform regression, classification, and other machine learning tasks with quantum advantage by using kernel methods. While unsimulatably is a necessary condition for quantum advantage in machine learning, it is not sufficient, as not all kernels are equally effective. Here, we study the use of quantum computers to perform the machine learning tasks of one- and multi-dimensional regression, as well as reinforcement learning, using Gaussian Processes. By using approximations of performant classical kernels enhanced with extra quantum resources, we demonstrate that quantum devices, both in simulation and on hardware, can perform machine learning tasks at least as well as, and many times better than, the classical inspiration. Our informed kernel design demonstrates a path towards effectively utilizing quantum devices for machine learning tasks.