Metodiev Martin, Perrot-Dockès Marie, Ouadah Sarah, Irons Nicholas J, Latouche Pierre, Raftery Adrian E
Université Clermont Auvergne, Laboratoire de Mathématiques Blaise Pascal.
Université Paris Cité, CNRS, MAP5, F-75006 Paris, France.
Bayesian Anal. 2024 Apr 23. doi: 10.1214/24-ba1422.
We propose an easily computed estimator of marginal likelihoods from posterior simulation output, via reciprocal importance sampling, combining earlier proposals of DiCiccio et al (1997) and Robert and Wraith (2009). This involves only the unnormalized posterior densities from the sampled parameter values, and does not involve additional simulations beyond the main posterior simulation, or additional complicated calculations, provided that the parameter space is unconstrained. Even if this is not the case, the estimator is easily adjusted by a simple Monte Carlo approximation. It is unbiased for the reciprocal of the marginal likelihood, consistent, has finite variance, and is asymptotically normal. It involves one user-specified control parameter, and we derive an optimal way of specifying this. We illustrate it with several numerical examples.
我们通过倒数重要性抽样,结合迪西乔等人(1997年)和罗伯特与瑞思(2009年)早期的提议,提出了一种从后验模拟输出中轻松计算边际似然估计量的方法。这仅涉及来自抽样参数值的未归一化后验密度,并且只要参数空间无约束,就不需要在主要后验模拟之外进行额外模拟或进行额外复杂计算。即使情况并非如此,该估计量也可通过简单的蒙特卡罗近似轻松调整。它对于边际似然的倒数是无偏的、一致的、具有有限方差且渐近正态。它涉及一个用户指定的控制参数,并且我们推导了指定该参数的最优方法。我们用几个数值例子对其进行说明。