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Efficient gradient estimation using finite differencing and likelihood ratios for kinetic Monte Carlo simulations

机译:使用有限差分和似然比进行动力学蒙特卡洛模拟的有效梯度估计

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摘要

While many optimization and control methods for stochastic processes require gradient information from the process of interest, obtaining gradient information from experiments is prohibitively expensive and time-consuming. As a result, such information is often obtained from stochastic process simulations. Computing gradients efficiently and accurately from stochastic simulations is challenging, especially for simulations involving computationally expensive models with significant inherent noise. In this work, we analyze and characterize the applicability of two gradient estimation methods for kinetic Monte Carlo simulations: finite differencing and likelihood ratio. We developed a systematic method for choosing an optimal perturbation size for finite differencing and discuss, for both methods, important implementation issues such as scaling with respect to the number of elements in the gradient vector. Through a series of numerical experiments, the methods were compared across different time and size regimes to characterize the precision and accuracy associated with each method. We determined that the likelihood ratio method is appropriate for estimating gradients at short (transient) times or for systems with small population sizes, whereas finite differencing is better-suited for gradient estimation at long times (steady state) or for systems with large population sizes.
机译:尽管许多用于随机过程的优化和控制方法都需要关注过程中的梯度信息,但是从实验中获得梯度信息却非常昂贵且耗时。结果,经常从随机过程仿真中获得这种信息。从随机模拟中有效而准确地计算梯度非常具有挑战性,特别是对于涉及具有显着固有噪声的计算量大的模型的模拟。在这项工作中,我们分析和表征了两种梯度估计方法在动力学蒙特卡洛模拟中的适用性:有限差分和似然比。我们开发了一种系统的方法来选择有限差分的最佳扰动大小,并针对这两种方法讨论了重要的实现问题,例如相对于梯度向量中元素数量的缩放。通过一系列数值实验,在不同的时间和大小范围内比较了这些方法,以表征与每种方法相关的精度和准确性。我们确定似然比方法适用于在短时间(瞬态)下估计梯度或适用于人口规模较小的系统,而有限差分法更适合于在较长时间(稳态)下进行梯度估算或人口规模较大的系统。

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