Schwartzman Armin
Department of Statistics, North Carolina State University.
Int Stat Rev. 2016 Dec;84(3):456-486. doi: 10.1111/insr.12113. Epub 2015 Aug 28.
This article gives a formal definition of a lognormal family of probability distributions on the set of symmetric positive definite (SPD) matrices, seen as a matrix-variate extension of the univariate lognormal family of distributions. Two forms of this distribution are obtained as the large sample limiting distribution via the central limit theorem of two types of geometric averages of i.i.d. SPD matrices: the log-Euclidean average and the canonical geometric average. These averages correspond to two different geometries imposed on the set of SPD matrices. The limiting distributions of these averages are used to provide large-sample confidence regions and two-sample tests for the corresponding population means. The methods are illustrated on a voxelwise analysis of diffusion tensor imaging data, permitting a comparison between the various average types from the point of view of their sampling variability.
本文给出了对称正定(SPD)矩阵集上概率分布的对数正态族的形式化定义,它被视为单变量对数正态分布族的矩阵变量扩展。通过独立同分布的SPD矩阵的两种几何平均值的中心极限定理,得到了该分布的两种形式作为大样本极限分布:对数欧几里得平均值和规范几何平均值。这些平均值对应于施加在SPD矩阵集上的两种不同几何结构。这些平均值的极限分布用于为相应的总体均值提供大样本置信区域和双样本检验。这些方法在扩散张量成像数据的体素分析中得到了说明,从而可以从采样变异性的角度对各种平均类型进行比较。