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Bayesian Minimax Estimation of the Normal Model With Incomplete Prior Covariance Matrix Specification

机译:具有不完整先验协方差矩阵规范的正态模型的贝叶斯极小极大估计

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摘要

This work addresses the issue of Bayesian robustness in the multivariate normal model when the prior covariance matrix is not completely specified, but rather is described in terms of positive semi-definite bounds. This occurs in situations where, for example, the only prior information available is the bound on the diagonal of the covariance matrix derived from some physical constraints, and that the covariance matrix is positive semi-definite, but otherwise arbitrary. Under the conditional Gamma-minimax principle, previous work by DasGupta and Studden shows that an analytically exact solution is readily available for a special case where the bound difference is a scaled identity. The goal in this work is to consider this problem for general positive definite matrices. The contribution in this paper is a theoretical study of the geometry of the minimax problem. Extension of previous results to a more general case is shown and a practical algorithm that relies on semi-definite programming and the convexity of the minimax formulation is derived. Although the algorithm is numerically exact for up to the bivariate case, its exactness for other cases remains open. Numerical studies demonstrate the accuracy of the proposed algorithm and the robustness of the minimax solution relative to standard and recently proposed methods.
机译:当尚未完全指定先验协方差矩阵,而是用正半定界描述时,这项工作解决了多元正态模型中的贝叶斯鲁棒性问题。例如,在以下情况下会发生这种情况:唯一可用的先验信息是协方差矩阵的对角线的边界,该对角线是从某些物理约束得出的,并且协方差矩阵是正半定的,但其他情况下是任意的。在条件伽玛-极小极大原理下,DasGupta和Studden的先前工作表明,对于边界差为可缩放同一性的特殊情况,很容易获得解析精确的解决方案。这项工作的目的是考虑一般正定矩阵的问题。本文的贡献是对极小极大问题的几何学的理论研究。显示了将先前的结果扩展到更一般的情况,并且得出了一种实用的算法,该算法依赖于半定编程,并且得出了极大极小公式的凸性。尽管该算法在最大程度上适用于双变量情况,但其在其他情况下的准确性仍然存在。数值研究表明,相对于标准方法和最近提出的方法,所提出算法的准确性以及minimax解的鲁棒性。

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