We consider the problem of estimating expectations with respect to a target distribution with an unknown normalizing constant, and where even the unnormalized target needs to be approximated at finite resolution. Under such an assumption, this work builds upon a recently introduced multi-index Sequential Monte Carlo (SMC) ratio estimator, which provably enjoys the complexity improvements of multi-index Monte Carlo (MIMC) and the efficiency of SMC for inference. The present work leverages a randomization strategy to remove bias entirely, which simplifies estimation substantially, particularly in the MIMC context, where the choice of index set is otherwise important. Under reasonable assumptions, the proposed method provably achieves the same canonical complexity of MSE^(-1) as the original method, but without discretization bias. It is illustrated on examples of Bayesian inverse problems.
翻译:我们考虑了对目标分布的预期估计问题,目标分配的常数未知,即使未实现的目标也需要以有限分辨率接近。在这种假设下,这项工作以最近推出的多指数序列蒙特卡洛(SMC)比率估计器为基础,该估计器具有多指数蒙特卡洛(SMC)的复杂性改进和SMC(MIMC)的推论效率。目前的工作利用随机化战略来完全消除偏见,这种偏差大大简化了估计,特别是在MIMC(MIMC)背景下,因为指数集的选择具有其他重要性。在合理的假设下,拟议方法可以实现MSE*(SE)的同样明理复杂性,但不会产生分解偏差。