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Simultaneous Credible Bands for Latent Gaussian Models

机译:潜在高斯模型的同时可信带

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Deterministic Bayesian inference for latent Gaussian models has recently become available using integrated nested Laplace approximations (INLA). Applying the INLA-methodology, marginal estimates for elements of the latent field can be computed efficiently, providing relevant summary statistics like posterior means, variances and pointwise credible intervals. In this article, we extend the use of INLA to joint inference and present an algorithm to derive analytical simultaneous credible bands for subsets of the latent field. The algorithm is based on approximating the joint distribution of the subsets by multivariate Gaussian mixtures. Additionally, we present a saddlepoint approximation to compute Bayesian contour probabilities, representing the posterior support of fixed parameter vectors of interest. We perform a simulation study and apply the given methods to two real examples.
机译:潜在的高斯模型的确定性贝叶斯推断最近已经可以使用集成嵌套拉普拉斯近似(INLA)获得。应用INLA方法,可以有效地计算潜在字段元素的边际估计,并提供相关的汇总统计信息,例如后验均值,方差和逐点可信区间。在本文中,我们将INLA的使用扩展到联合推理,并提出了一种算法,用于为潜场的子集导出分析同时可信带。该算法基于通过多元高斯混合来近似子集的联合分布。此外,我们提出了一个鞍点近似值来计算贝叶斯轮廓概率,表示感兴趣的固定参数向量的后验支持。我们进行了仿真研究,并将给定的方法应用于两个实际示例。

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