论文标题
对于高性能组合优化的非延期动力学的缩放优势
Scaling advantage of nonrelaxational dynamics for high-performance combinatorial optimization
论文作者
论文摘要
物理模拟器(称为Ising机器)的开发,这些模拟器的样本来自伊辛·哈密顿(Ising Hamiltonian)的低能状态,有可能极大地改变我们理解和控制复杂系统的能力。但是,此类机器的大多数物理实现都是基于类似概念,该概念与诸如模拟,平均场,混乱和量子退火之类的松弛动态密切相关。我们表明,与常规方法相比,与详细平衡和正熵产生速率有关的非递延动力学可以加速低能状态的采样。通过在现场可编程门阵列上实施此类动力学,我们表明我们提出的称为混乱幅度控制的非递延动力学表现出具有问题的缩放时间,该缩放时间大小,以找到最佳解决方案及其方差,其差异明显小于最近在Ising机器上实施的宽松方案。
The development of physical simulators, called Ising machines, that sample from low energy states of the Ising Hamiltonian has the potential to drastically transform our ability to understand and control complex systems. However, most of the physical implementations of such machines have been based on a similar concept that is closely related to relaxational dynamics such as in simulated, mean-field, chaotic, and quantum annealing. We show that nonrelaxational dynamics that is associated with broken detailed balance and positive entropy production rate can accelerate the sampling of low energy states compared to that of conventional methods. By implementing such dynamics on field programmable gate array, we show that the nonrelaxational dynamics that we propose, called chaotic amplitude control, exhibits a scaling with problem size of the time to finding optimal solutions and its variance that is significantly smaller than that of relaxational schemes recently implemented on Ising machines.