Ensemble methods have become ubiquitous for the solution of Bayesian inference problems. State-of-the-art Langevin samplers such as the Ensemble Kalman Sampler (EKS), Affine Invariant Langevin Dynamics (ALDI) or its extension using weighted covariance estimates rely on successive evaluations of the forward model or its gradient. A main drawback of these methods hence is their vast number of required forward calls as well as their possible lack of convergence in the case of more involved posterior measures such as multimodal distributions. The goal of this paper is to address these challenges to some extend. First, several possible adaptive ensemble enrichment strategies that successively enlarge the number of particles in the underlying Langevin dynamics are discusses that in turn lead to a significant reduction of the total number of forward calls. Second, analytical consistency guarantees of the ensemble enrichment method are provided for linear forward models. Third, to address more involved target distributions, the method is extended by applying adapted Langevin dynamics based on a homotopy formalism for which convergence is proved. Finally, numerical investigations of several benchmark problems illustrates the possible gain of the proposed method, comparing it to state-of-the-art Langevin samplers.
翻译:对于解决巴伊西亚推论问题而言,综合方法已变得无处不在,因此,这些方法的一个主要缺点是,它们需要大量的前方呼声以及它们在更多涉及的后继措施(如多式联运等)方面可能缺乏趋同性。本文件的目的是应对这些挑战,以扩大一些范围。首先,一些可能的一系列适应性联合浓缩战略,这些战略相继扩大了Langevin基本动力中的粒子数量,这些战略正在讨论,这反过来又导致前方呼声总数大幅下降。第二,为线性前导模型提供了全套浓缩方法分析一致性保证。第三,为了解决更多涉及的目标分布,采用基于同质正式主义的经调整的朗埃文动态方法扩大了方法的范围。最后,对Langevin基本动力中的粒子数量进行的一系列可能的适应性联合浓缩战略,对一些拟议的兰伊文样本方法进行对比,从而说明可能采用的一些基准问题。