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Generalized Bayesian Cramér-Rao Inequality via Information Geometry of Relative α-Entropy

机译:相对α熵的信息几何形式的广义贝叶斯Cramér-Rao不等式

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摘要

The relative α-entropy is the Rényi analog of relative entropy and arises prominently in information-theoretic problems. Recent information geometric investigations on this quantity have enabled the generalization of the Cramér-Rao inequality, which provides a lower bound for the variance of an estimator of an escort of the underlying parametric probability distribution. However, this framework remains unexamined in the Bayesian framework. In this paper, we propose a general Riemannian metric based on relative α-entropy to obtain a generalized Bayesian Cramér-Rao inequality. This establishes a lower bound for the variance of an unbiased estimator for the α-escort distribution starting from an unbiased estimator for the underlying distribution. We show that in the limiting case when the entropy order approaches unity, this framework reduces to the conventional Bayesian Cramér-Rao inequality. Further, in the absence of priors, the same framework yields the deterministic Cramér-Rao inequality.
机译:相对α熵是相对熵的Rényi类似物,在信息理论问题中特别突出。最近有关此数量的信息几何研究已使Cramér-Rao不等式得以推广,这为基本参数概率分布的押解估计量的方差提供了下限。但是,该框架在贝叶斯框架中仍未得到检验。在本文中,我们提出了一个基于相对α熵的通用黎曼度量,以获得广义贝叶斯Cramér-Rao不等式。这从针对基础分布的无偏估计量开始,为α伴游分布的无偏估计量的方差确定了一个下限。我们表明,在熵阶接近统一的极限情况下,该框架可简化为传统的贝叶斯Cramér-Rao不等式。此外,在没有先验条件的情况下,相同的框架会产生确定性的Cramér-Rao不等式。

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