Computing the marginal likelihood or evidence is one of the core challenges in Bayesian analysis. While there are many established methods for estimating this quantity, they predominantly rely on using a large number of posterior samples obtained from a Markov Chain Monte Carlo (MCMC) algorithm. As the dimension of the parameter space increases, however, many of these methods become prohibitively slow and potentially inaccurate. In this paper, we propose a novel method in which we use the MCMC samples to learn a high probability partition of the parameter space and then form a deterministic approximation over each of these partition sets. This two-step procedure, which constitutes both a probabilistic and a deterministic component, is termed a Hybrid approximation to the marginal likelihood. We demonstrate its versatility in a plethora of examples with varying dimension and sample size, and we also highlight the Hybrid approximation's effectiveness in situations where there is either a limited number or only approximate MCMC samples available.
翻译:计算边际可能性或证据是巴伊西亚分析的核心挑战之一。 虽然有许多既定方法来估计这一数量,但它们主要依赖于使用从Markov 链子蒙特卡洛(MCMCC)算法中获取的大量后继样本。 但是,随着参数空间的维度增加,许多这些方法变得令人望而却步,而且可能不准确。在本文中,我们提出了一个新颖的方法,即我们利用MCMC的样本来了解参数空间的高概率分布,然后形成对每一个这些分区组的确定性近似。这一两步程序既构成概率性组成部分,又构成确定性组成部分,被称之为接近边缘可能性的混合近似法。我们用大量具有不同尺寸和样本大小的例子来证明其多才多用性。我们还强调混合近似在有数量有限或只有近似MC样品的情况下的有效性。