Goudie Robert J B, Presanis Anne M, Lunn David, De Angelis Daniela, Wernisch Lorenz
MRC Biostatistics Unit, University of Cambridge, United Kingdom.
Bayesian Anal. 2019 Jan;14(1):81-109. doi: 10.1214/18-BA1104.
Analysing multiple evidence sources is often feasible only via a modular approach, with separate submodels specified for smaller components of the available evidence. Here we introduce a generic framework that enables fully Bayesian analysis in this setting. We propose a generic method for forming a suitable joint model when submodels, and a convenient computational algorithm for fitting this joint model in stages, rather than as a single, monolithic model. The approach also enables of large joint models into smaller submodels, allowing inference for the original joint model to be conducted via our multi-stage algorithm. We motivate and demonstrate our approach through two examples: joining components of an evidence synthesis of A/H1N1 influenza, and splitting a large ecology model.
通常只有通过模块化方法才能分析多个证据来源,为可用证据的较小组成部分指定单独的子模型。在此,我们引入一个通用框架,在这种情况下实现完全贝叶斯分析。我们提出一种通用方法,用于在有子模型时形成合适的联合模型,以及一种方便的计算算法,用于分阶段拟合此联合模型,而不是作为单个整体模型。该方法还能够将大型联合模型分解为较小的子模型,从而允许通过我们的多阶段算法对原始联合模型进行推断。我们通过两个示例来激发并演示我们的方法:结合甲型H1N1流感证据综合的各个组成部分,以及拆分一个大型生态模型。