球面上各向异性协方差和自协方差算子的函数估计

IF 1 4区 数学 Q3 STATISTICS & PROBABILITY Electronic Journal of Statistics Pub Date : 2021-12-23 DOI:10.1214/22-ejs2064
Alessia Caponera, J. Fageot, Matthieu Simeoni, V. Panaretos
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引用次数: 5

摘要

在函数数据分析的背景下,我们提出了可能各向异性球面随机场的二阶中心矩的非参数估计。我们考虑一个测量框架,其中在同分布的球形随机场集合中的每个随机场在几个随机方向上采样,可能会受到测量误差的影响。随机字段的集合可以是i.i.d.或序列相关的。尽管已经为单位区间上定义的随机函数探索了类似的设置,但文献中提出的非参数估计通常依赖于局部多项式,而局部多项式不容易扩展到(乘积)球面设置。因此,我们将我们的估计过程公式化为涉及广义Tikhonov正则化项的变分问题。后者倾向于平滑协方差/自协方差函数,其中平滑度是通过合适的类Sobolev伪微分算子来指定的。利用重生成核希尔伯特空间的机制,我们建立了完全表征我们的估计量形式的表示定理。对于密集(空间样本数量的增加)和稀疏(空间样本的有界数量)状态,我们确定它们随着随机场数的发散而一致的收敛速度。此外,我们还证明了我们的估计程序在模拟环境中的计算可行性和实际优点,假设每个随机场有固定数量的样本。我们的数值估计程序利用了我们设置的稀疏性和二阶Kronecker结构,与简单的实现相比,将计算和内存需求减少了大约三个数量级。AMS 2000学科分类:初级62G08;次级62M。
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Functional estimation of anisotropic covariance and autocovariance operators on the sphere
We propose nonparametric estimators for the second-order central moments of possibly anisotropic spherical random fields, within a functional data analysis context. We consider a measurement framework where each random field among an identically distributed collection of spherical random fields is sampled at a few random directions, possibly subject to measurement error. The collection of random fields could be i.i.d. or serially dependent. Though similar setups have already been explored for random functions defined on the unit interval, the nonparametric estimators proposed in the literature often rely on local polynomials, which do not readily extend to the (product) spherical setting. We therefore formulate our estimation procedure as a variational problem involving a generalized Tikhonov regularization term. The latter favours smooth covariance/autocovariance functions, where the smoothness is specified by means of suitable Sobolev-like pseudo-differential operators. Using the machinery of reproducing kernel Hilbert spaces, we establish representer theorems that fully characterize the form of our estimators. We determine their uniform rates of convergence as the number of random fields diverges, both for the dense (increasing number of spatial samples) and sparse (bounded number of spatial samples) regimes. We moreover demonstrate the computational feasibility and practical merits of our estimation procedure in a simulation setting, assuming a fixed number of samples per random field. Our numerical estimation procedure leverages the sparsity and second-order Kronecker structure of our setup to reduce the computational and memory requirements by approximately three orders of magnitude compared to a naive implementation would require. AMS 2000 subject classifications: Primary 62G08; secondary 62M.
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来源期刊
Electronic Journal of Statistics
Electronic Journal of Statistics STATISTICS & PROBABILITY-
CiteScore
1.80
自引率
9.10%
发文量
100
审稿时长
3 months
期刊介绍: The Electronic Journal of Statistics (EJS) publishes research articles and short notes on theoretical, computational and applied statistics. The journal is open access. Articles are refereed and are held to the same standard as articles in other IMS journals. Articles become publicly available shortly after they are accepted.
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