4.5 Article

Analysis of principal nested spheres

Journal

BIOMETRIKA
Volume 99, Issue 3, Pages 551-568

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/biomet/ass022

Keywords

Dimension reduction; Kendall's shape space; Manifold; Principal arc; Principal component analysis; Spherical data

Funding

  1. U.S. National Science Foundation
  2. National Institutes of Health
  3. Statistical and Applied Mathematical Sciences Institute

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A general framework for a novel non-geodesic decomposition of high-dimensional spheres or high-dimensional shape spaces for planar landmarks is discussed. The decomposition, principal nested spheres, leads to a sequence of submanifolds with decreasing intrinsic dimensions, which can be interpreted as an analogue of principal component analysis. In a number of real datasets, an apparent one-dimensional mode of variation curving through more than one geodesic component is captured in the one-dimensional component of principal nested spheres. While analysis of principal nested spheres provides an intuitive and flexible decomposition of the high-dimensional sphere, an interesting special case of the analysis results in finding principal geodesics, similar to those from previous approaches to manifold principal component analysis. An adaptation of our method to Kendall's shape space is discussed, and a computational algorithm for fitting principal nested spheres is proposed. The result provides a coordinate system to visualize the data structure and an intuitive summary of principal modes of variation, as exemplified by several datasets.

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