Shrinkage estimation is a fundamental tool of modern statistics, pioneered by Charles Stein upon his discovery of the famous paradox involving the multivariate Gaussian. A large portion of the subsequent literature only considers the efficiency of shrinkage, and that of an associated procedure known as Stein's Unbiased Risk Estimate, or SURE, in the Gaussian setting of that original work. We investigate what extensions to the domain of validity of shrinkage and SURE can be made away from the Gaussian through the use of tools developed in the probabilistic area now known as Stein's method. We show that shrinkage is efficient away from the Gaussian under very mild conditions on the distribution of the noise. SURE is also proved to be adaptive under similar assumptions, and in particular in a way that retains the classical asymptotics of Pinsker's theorem. Notably, shrinkage and SURE are shown to be efficient under mild distributional assumptions, and particularly for general isotropic log-concave measures.
翻译:Charles Stein在发现涉及多变Gaussian的著名悖论后,开创了现代统计的一个基本工具,即缩小估算。随后的文献中很大一部分只考虑了缩小的效率,而与此相关的程序,即Stein's Unbectimate Rights Accession, 或Suret, 在最初工作的高斯环境里,也只考虑了缩小的效率。我们调查了在缩小和确定的有效性方面,通过使用在现称为Stein's方法的概率地区开发的工具,可以使缩小和确定的有效性领域从高斯人那里得到哪些扩展。我们表明,在噪音分布的非常温和的条件下,缩小是远离高斯人的效率。不确定性在类似的假设下也被证明具有适应性,特别是以某种方式保留Pinsker理论的古典的抑制性。值得注意的是,在温和分布假设下,特别是在一般的偏原对原的对数测量措施下,缩小和确定是有效的。