Daniel Rademacher , Johannes Krebs , Rainer von Sachs
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引用次数: 0
摘要
本文利用对数欧氏距离对对称正定(SPD)曲线的小波估计器进行统计推断。该估计器保留了正定性并具有包换方差性,这与协方差矩阵尤其相关。我们的第二代小波估计器基于平均插值(AI),具有与标准欧几里得设置中的小波非参数曲线估计器相同的强大特性,包括快速算法。我们工作的核心是为非欧几里得几何中的 AI 小波估计器提出置信集。我们推导出该估计器的渐近正态性,包括其渐近方差的明确表达式。这为我们构建渐近置信区域打开了大门,我们将这些置信区域与我们提出的引导推理方案进行比较。详细的数值模拟证实了我们建议的推理方案的适当性。
Statistical inference for wavelet curve estimators of symmetric positive definite matrices
In this paper we treat statistical inference for a wavelet estimator of curves of symmetric positive definite (SPD) using the log-Euclidean distance. This estimator preserves positive-definiteness and enjoys permutation-equivariance, which is particularly relevant for covariance matrices. Our second-generation wavelet estimator is based on average-interpolation (AI) and allows the same powerful properties, including fast algorithms, known from nonparametric curve estimation with wavelets in standard Euclidean set-ups. The core of our work is the proposition of confidence sets for our AI wavelet estimator in a non-Euclidean geometry. We derive asymptotic normality of this estimator, including explicit expressions of its asymptotic variance. This opens the door for constructing asymptotic confidence regions which we compare with our proposed bootstrap scheme for inference. Detailed numerical simulations confirm the appropriateness of our suggested inference schemes.