We investigate predictive densities for multivariate normal models with unknown mean vectors and known covariance matrices. Bayesian predictive densities based on shrinkage priors often have complex representations, although they are effective in various problems. We consider extended normal models with mean vectors and covariance matrices as parameters, and adopt predictive densities that belong to the extended models including the original normal model. We adopt predictive densities that are optimal with respect to the posterior Bayes risk in the extended models. The proposed predictive density based on a superharmonic shrinkage prior is shown to dominate the Bayesian predictive density based on the uniform prior under a loss function based on the Kullback-Leibler divergence. Our method provides an alternative to the empirical Bayes method, which is widely used to construct tractable predictive densities.
翻译:我们调查了具有未知平均矢量和已知共变矩阵的多变正常模型的预测密度。基于萎缩前期的贝叶斯预测密度往往具有复杂的表现形式,尽管在各种问题上是有效的。我们认为,以中值矢量和共变矩阵作为参数的扩展正常模型,并采用属于扩展模型的预测密度,包括原始正常模型。我们在扩展模型中采用了对后波湾风险最有利的预测密度。基于前超协调缩缩的拟议预测密度显示,根据基于基于Kullback-Libeler差异的损耗函数,以先前的均值为基础,在Bayesian预测密度中占主导地位。我们的方法为实验海湾方法提供了一种替代方法,该方法被广泛用于构建可移动的预测密度。