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Nonparametric bootstrap of sample means of positive-definite matrices with an application to diffusion-tensor-imaging data analysis

机译:正定矩阵样本均值的非参数自举及其在扩散张量成像数据分析中的应用

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This paper presents nonparametric two-sample bootstrap tests for means of random symmetric positive-definite (SPD) matrices according to two different metrics: the Frobenius (or Euclidean) metric, inherited from the embedding of the set of SPD metrics in the Euclidean set of symmetric matrices, and the canonical metric, which is defined without an embedding and suggests an intrinsic analysis. A fast algorithm is used to compute the bootstrap intrinsic means in the case of the latter. The methods are illustrated in a simulation study and applied to a two-group comparison of means of diffusion tensors (DTs) obtained from a single voxel of registered DT images of children in a dyslexia study.
机译:本文针对随机对称正定(SPD)矩阵的方法,根据两种不同的度量标准,提出了非参数两样本自举测试:Frobenius(或Euclidean)度量标准,它是从SPD度量标准的嵌入到Euclidean集合中继承而来的。对称矩阵和规范度量,它无需嵌入即可定义并建议进行内在分析。在后者的情况下,使用快速算法来计算自举内在均值。该方法在模拟研究中得到了说明,并应用于在阅读障碍研究中从已注册儿童的DT图像的单个体素中获得的扩散张量(DT)的两组比较。

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