查尔斯·斯坦与不变性:从亨特-斯坦定理开始

M. L. Eaton, E. George
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引用次数: 1

摘要

当统计决策理论作为一种有前途的新范式出现时,查尔斯·斯坦在为不变统计问题发展极大极小理论方面发挥了重要作用。在他与Gil Hunt的早期工作中,他开始证明,在不变量过程具有恒定风险的问题中,任何最佳不变量测试都将是所有测试中的最小最大值。虽然发现它在一般情况下并不完全正确,但这导致了传奇的亨特-斯坦定理,该定理在限制条件下建立了潜在变换组的结果。在这些合适组下不变的决策问题中,总体极大极小检验被保证驻留在通常更容易找到的不变过程类中。但是,当似乎不可能在全线性群下建立这个结果的不变性时,他转而用反例来证明它的不可能性,比如通常的样本协方差估计的非极小性,其中全线性群太大,亨特-斯坦定理无法应用。对不变性的进一步探索,如在基准分布下有时有问题的推断,或将最佳不变性过程描述为在right Haar先验下的正式贝叶斯过程,是斯坦因对不变性理论贡献的深远影响的进一步例子。
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Charles Stein and invariance: Beginning with the Hunt–Stein theorem
When statistical decision theory was emerging as a promising new paradigm, Charles Stein was to play a major role in the development of minimax theory for invariant statistical problems. In some of his earliest work with Gil Hunt, he set out to prove that, in problems where invariant procedures have constant risk, any best invariant test would be minimax among all tests. Although finding it not quite true in general, this led to the legendary Hunt–Stein theorem, which established the result under restrictive conditions on the underlying group of transformations. In decision problems invariant under such suitable groups, an overall minimax test was guaranteed to reside within the class of invariant procedures where it would typically be much easier to find. But when it did not seem possible to establish this result for invariance under the full linear group, he instead turned to prove its impossibility with counterexamples such as the nonminimaxity of the usual sample covariance estimator where the full linear group was just too big for the Hunt–Stein theorem to apply. Further explorations of invariance such as the sometimes problematic inference under a fiducial distribution, or the characterization of a best invariant procedure as a formal Bayes procedure under a right Haar prior, are further examples of the far reaching influence of Stein’s contributions to invariance theory.
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