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Importance sampling for a robust and efficient multilevel Monte Carlo estimator for stochastic reaction networks

机译:用于随机反应网络的强大高效的多级Monte Carlo估算器的重要性抽样

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The multilevel Monte Carlo (MLMC) method for continuous-time Markov chains, first introduced by Anderson and Higham (SIAM Multiscal Model Simul 10(1):146-179, 2012), is a highly efficient simulation technique that can be used to estimate various statistical quantities for stochastic reaction networks, in particular for stochastic biological systems. Unfortunately, the robustness and performance of the multilevel method can be affected by the high kurtosis, a phenomenon observed at the deep levels of MLMC, which leads to inaccurate estimates of the sample variance. In this work, we address cases where the high-kurtosis phenomenon is due to catastrophic coupling (characteristic of pure jump processes where coupled consecutive paths are identical in most of the simulations, while differences only appear in a tiny proportion) and introduce a pathwise-dependent importance sampling (IS) technique that improves the robustness and efficiency of the multilevel method. Our theoretical results, along with the conducted numerical experiments, demonstrate that our proposed method significantly reduces the kurtosis of the deep levels of MLMC, and also improves the strong convergence rate from beta = 1 for the standard case (without IS), to beta = 1 + delta, where 0 delta 1 is a user-selected parameter in our IS algorithm. Due to the complexity theorem of MLMC, and given a pre-selected tolerance, TOL, this results in an improvement of the complexity from O(TOL-2 log(TOL)(2)) in the standard case to O(TOL-2), which is the optimal complexity of the MLMC estimator. We achieve all these improvements with a negligible additional cost since our IS algorithm is only applied a few times across each simulated path.
机译:用于连续时间Markov链的多级Monte Carlo(MLMC)方法,由Anderson和Higham推出(Siam Multiscal Model Simul 10(1):146-179,2012)是一种高效的仿真技术,可用于估计用于随机反应网络的各种统计量,特别是随机生物系统。不幸的是,多级方法的稳健性和性能可能受到高峰度的影响,在MLMC的深度水平下观察到的现象,这导致样品方差的估计不准确。在这项工作中,我们解决了高刚性病变现象是由于灾难性耦合的案例(涉及连续路径在大部分模拟中耦合连续路径相同的纯跳跃过程的特性,而差异仅出现在微小的比例)并引入途径 - 依赖性重要性采样(IS)技术提高了多级方法的鲁棒性和效率。我们的理论结果以及进行的数控实验表明,我们的提出方法显着降低了MLMC的深度水平的峰度,并且还提高了标准情况(无需)的β= 1的强烈收敛速度,β= 1 + Delta,其中0

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