High-Dimensional Data Analysis for Elliptically Symmetric Distributions
Long Feng

TL;DR
This book systematically explores high-dimensional data analysis under elliptically symmetric distributions, emphasizing robust inference methods suitable for heavy-tailed and heterogeneous data.
Contribution
It provides a unified overview of robust high-dimensional inference techniques tailored to elliptical models, integrating recent research developments.
Findings
Development of robust methods based on spatial signs and ranks
Analysis of high-dimensional covariance and shape testing
Comparison of classical and robust high-dimensional procedures
Abstract
High-dimensional data arise routinely in modern statistics, econometrics, finance, genomics, and machine learning. While a large body of existing methodology is developed under Gaussian or light-tailed assumptions, many real data sets exhibit heavy tails, heterogeneity, and departures from classical covariance-based models. This book provides a systematic treatment of high-dimensional data analysis under elliptically symmetric distributions, with an emphasis on robust inference based on spatial signs, spatial ranks, multivariate Kendall's tau matrices, and related shape-based methods.The book covers the basic theory of elliptical symmetry, high-dimensional location inference, estimation and testing for covariance and precision matrices, sphericity and proportionality testing, high-dimensional alpha testing in factor pricing models, change-point analysis, white-noise and independence…
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