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Bayes Extended Estimators for Curved Exponential Families

机译:贝叶斯扩展估算估计曲线级家庭

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The Bayesian predictive density has complex representation and does not belong to any finite-dimensional statistical model except for in limited situations. In this paper, we introduce its simple approximate representation employing its projection onto a finite-dimensional exponential family. Its theoretical properties are established parallelly to those of the Bayesian predictive density when the model belongs to curved exponential families. It is also demonstrated that the projection asymptotically coincides with the plugin density with the posterior mean of the expectation parameter of the exponential family, which we refer to as the Bayes extended estimator. Information-geometric correspondence indicates that the Bayesian predictive density can be represented as the posterior mean of the infinite-dimensional exponential family. The Kullback–Leibler risk performance of the approximation is demonstrated by numerical simulations and it indicates that the posterior mean of the expectation parameter approaches the Bayesian predictive density as the dimension of the exponential family increases. It also suggests that approximation by projection onto an exponential family of reasonable size is practically advantageous with respect to risk performance and computational cost.
机译:贝叶斯预测密度具有复杂的表示,并且不属于除非在有限情况下除外的任何有限维统计模型。在本文中,我们介绍了其在有限维指数家庭上的简单近似表示。当模型属于弯曲的指数家庭时,其理论性质并行地与贝叶斯预测密度的那些建立。还表明,投影渐近地与插件密度与指数家庭期望参数的后置均匀,我们称为贝叶斯扩展估计。信息 - 几何对应表明贝叶斯预测密度可以表示为无限维指数家庭的后叶。通过数值模拟证明了近似值的kullback-leibler风险性能,表明期望参数的后纱接近贝叶斯预测密度,因为指数家庭的尺寸增加。它还表明,通过投影到指数尺寸的指数家庭上的近似是关于风险性能和计算成本的实际有利的。

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