Tukey's Depth for Object Data.

IF 3 1区 数学 Q1 STATISTICS & PROBABILITY Journal of the American Statistical Association Pub Date : 2023-01-01 Epub Date: 2022-02-03 DOI:10.1080/01621459.2021.2011298
Xiongtao Dai, Sara Lopez-Pintado
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引用次数: 10

Abstract

We develop a novel exploratory tool for non-Euclidean object data based on data depth, extending celebrated Tukey's depth for Euclidean data. The proposed metric halfspace depth, applicable to data objects in a general metric space, assigns to data points depth values that characterize the centrality of these points with respect to the distribution and provides an interpretable center-outward ranking. Desirable theoretical properties that generalize standard depth properties postulated for Euclidean data are established for the metric halfspace depth. The depth median, defined as the deepest point, is shown to have high robustness as a location descriptor both in theory and in simulation. We propose an efficient algorithm to approximate the metric halfspace depth and illustrate its ability to adapt to the intrinsic data geometry. The metric halfspace depth was applied to an Alzheimer's disease study, revealing group differences in the brain connectivity, modeled as covariance matrices, for subjects in different stages of dementia. Based on phylogenetic trees of 7 pathogenic parasites, our proposed metric halfspace depth was also used to construct a meaningful consensus estimate of the evolutionary history and to identify potential outlier trees.

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Tukey的对象数据深度。
我们开发了一种新的基于数据深度的非欧几里得对象数据探索工具,扩展了欧几里得数据的著名Tukey深度。所提出的度量半空间深度适用于一般度量空间中的数据对象,为数据点分配表征这些点相对于分布的中心性的深度值,并提供可解释的中心向外排名。对于度量半空间深度,建立了推广为欧几里得数据假设的标准深度性质的理想理论性质。深度中值被定义为最深点,在理论和模拟中都被证明作为位置描述符具有很高的鲁棒性。我们提出了一种有效的算法来近似度量半空间深度,并说明了它适应内在数据几何的能力。将度量半空间深度应用于阿尔茨海默病研究,揭示了痴呆症不同阶段受试者大脑连接的群体差异,建模为协方差矩阵。基于7种致病寄生虫的系统发育树,我们提出的度量半空间深度也用于构建进化史的有意义的一致估计,并识别潜在的异常树。
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来源期刊
CiteScore
7.50
自引率
8.10%
发文量
168
审稿时长
12 months
期刊介绍: Established in 1888 and published quarterly in March, June, September, and December, the Journal of the American Statistical Association ( JASA ) has long been considered the premier journal of statistical science. Articles focus on statistical applications, theory, and methods in economic, social, physical, engineering, and health sciences. Important books contributing to statistical advancement are reviewed in JASA . JASA is indexed in Current Index to Statistics and MathSci Online and reviewed in Mathematical Reviews. JASA is abstracted by Access Company and is indexed and abstracted in the SRM Database of Social Research Methodology.
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