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Posterior mean and variance approximation for regression and time series problems

机译:回归和时间序列问题的后验均值和方差近似

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This paper develops a methodology for approximating the posterior first two moments of the posterior distribution in Bayesian inference. Partially specified probability models that are defined only by specifying means and variances, are constructed based upon second-order conditional independence in order to facilitate posterior updating and prediction of required distributional quantities. Such models are formulated particularly for multivariate regression and time series analysis with unknown observational variance-covariance components. The similarities and differences of these models with the Bayes linear approach are established. Several subclasses of important models, including regression and time series models with errors following multivariate t, inverted multivariate t and Wishart distributions, are discussed in detail. Two numerical examples consisting of simulated data and of US investment and change in inventory data illustrate the proposed methodology.
机译:本文提出了一种在贝叶斯推断中近似后验分布的后后两个矩的方法。基于二阶条件独立性构建仅通过指定均值和方差定义的部分指定概率模型,以便于后更新和预测所需的分配量。此类模型特别针对具有未知观测方差-协方差成分的多元回归和时间序列分析而制定。建立了这些模型与贝叶斯线性方法的异同。详细讨论了重要模型的几个子类,包括具有多元t,反向多元t和Wishart分布误差的回归和时间序列模型。由模拟数据和美国投资以及库存数据变化组成的两个数值示例说明了所提出的方法。

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