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首页> 外文期刊>Advances in applied probability >Principal component analysis for Riemannian manifolds, with an application to triangular shape spaces
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Principal component analysis for Riemannian manifolds, with an application to triangular shape spaces

机译:黎曼流形的主成分分析及其在三角形空间中的应用

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摘要

Classical principal component analysis on manifolds, for example on Kendall's shape spaces, is carried out in the tangent space of a Euclidean mean equipped with a Euclidean metric. We propose a method of principal component analysis for Riemannian manifolds based on geodesics of the intrinsic metric, and provide a numerical implementation in the case of spheres. This method allows us, for example, to compare principal component geodesics of different data samples. In order to determine principal component geodesics, we show that in general, owing to curvature, the principal component geodesics do not pass through the intrinsic mean. As a consequence, means other than the intrinsic mean are considered, allowing for several choices of definition of geodesic variance. In conclusion we apply our method to the space of planar triangular shapes and compare our findings with those of standard Euclidean principal component analysis.
机译:在配备欧几里德度量的欧几里德均值的切线空间中进行流形上的经典主成分分析,例如在肯德尔的形状空间上。我们提出了基于内在度量的测地线的黎曼流形的主成分分析方法,并提供了球体情况下的数值实现。例如,这种方法使我们能够比较不同数据样本的主分量测地线。为了确定主成分测地线,我们表明,通常,由于曲率,主成分测地线不会通过内在均值。结果,考虑了除内在均值以外的均值,从而允许对测地线方差的定义进行多种选择。总之,我们将我们的方法应用于平面三角形的空间,并将我们的发现与标准欧几里德主成分分析的发现进行比较。

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