A method for the multifidelity Monte Carlo (MFMC) estimation of statistical quantities is proposed which is applicable to computational budgets of any size. Based on a sequence of optimization problems each with a globally minimizing closed-form solution, this method extends the usability of a well known MFMC algorithm, recovering it when the computational budget is large enough. Theoretical results verify that the proposed approach is at least as optimal as its namesake and retains the benefits of multifidelity estimation with minimal assumptions on the budget or amount of available data, providing a notable reduction in variance over simple Monte Carlo estimation.
翻译:提议了一个统计数量多字蒙特卡洛(MFMC)估算方法,该方法适用于任何规模的计算预算。根据每个单位的优化问题顺序,在全球范围内尽量减少封闭式解决办法,这种方法扩大了众所周知的MFMC算法的可用性,在计算预算足够大时加以回收。理论结果证实,拟议的方法至少与其名词一样最佳,并保留多字性估算的好处,同时对预算或现有数据的数量作出最低假设,从而显著减少简单的Monte Carlo估算的差异。