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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >A SMEARY CENTRAL LIMIT THEOREM FOR MANIFOLDS WITH APPLICATION TO HIGH-DIMENSIONAL SPHERES
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A SMEARY CENTRAL LIMIT THEOREM FOR MANIFOLDS WITH APPLICATION TO HIGH-DIMENSIONAL SPHERES

机译:具有应用于高维领域的歧管的污点中央极限定理

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摘要

The (CLT) central limit theorems for generalized Frechet means (data descriptors assuming values in manifolds, such as intrinsic means, geodesics, etc.) on manifolds from the literature are only valid if a certain empirical process of Hessians of the Frechet function converges suitably, as in the proof of the prototypical BP-CLT [Ann. Statist. 33 (2005) 1225-1259]. This is not valid in many realistic scenarios and we provide for a new very general CLT. In particular, this includes scenarios where, in a suitable chart, the sample mean fluctuates asymptotically at a scale n(alpha) with exponents alpha < 1/2 with a nonnormal distribution. As the BP-CLT yields only fluctuations that are, rescaled with n(1/2), asymptotically normal, just as the classical CLT for random vectors, these lower rates, somewhat loosely called smeariness, had to date been observed only on the circle. We make the concept of smeariness on manifolds precise, give an example for two-smeariness on spheres of arbitrary dimension, and show that smeariness, although "almost never" occurring, may have serious statistical implications on a continuum of sample scenarios nearby. In fact, this effect increases with dimension, striking in particular in high dimension low sample size scenarios.
机译:广义Frechet装置的(CLT)中央极限定理(假设来自文献的歧管中的歧管中的歧管的值的数据描述符,例如,如果机器函数的Hessians的一定经验过程适当地收敛,如原型BP-CLT的证明[ANN。统计数据。 33(2005)1225-1259]。这在许多现实场景中无效,我们提供了一个新的非常通用的CLT。特别地,这包括在合适的图表中,样本平均值在具有非正常分布的指数α<1/2的规模N(α)下渐近的样本平均波动。由于BP-CLT仅产生与N(1/2)重新定义的波动,渐近正常,就像随机向量的经典CLT一样,这些较低的速率仅在圆圈上仅观察到迄今为止迄今为止观察到的较低的速率。我们使歧管的污迹概念精确,举例说明了任意维度的球体上的两个污迹,并且表明这种污迹虽然“几乎从未”发生,但可能对附近的样本情景的连续性具有严重的统计影响。实际上,这种效果随尺寸而增加,特别是在高尺寸低样本大小场景中略微触。

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