GeodRegr - Geodesic Regression
Provides a gradient descent algorithm to find a geodesic
relationship between real-valued independent variables and a
manifold-valued dependent variable (i.e. geodesic regression).
Available manifolds are Euclidean space, the sphere, hyperbolic
space, and Kendall's 2-dimensional shape space. Besides the
standard least-squares loss, the least absolute deviations,
Huber, and Tukey biweight loss functions can also be used to
perform robust geodesic regression. Functions to help choose
appropriate cutoff parameters to maintain high efficiency for
the Huber and Tukey biweight estimators are included, as are
functions for generating random tangent vectors from the
Riemannian normal distributions on the sphere and hyperbolic
space. The n-sphere is a n-dimensional manifold: we represent
it as a sphere of radius 1 and center 0 embedded in
(n+1)-dimensional space. Using the hyperboloid model of
hyperbolic space, n-dimensional hyperbolic space is embedded in
(n+1)-dimensional Minkowski space as the upper sheet of a
hyperboloid of two sheets. Kendall's 2D shape space with K
landmarks is of real dimension 2K-4; preshapes are represented
as complex K-vectors with mean 0 and magnitude 1. Details are
described in Shin, H.-Y. and Oh, H.-S. (2020)
<arXiv:2007.04518>. Also see Fletcher, P. T. (2013)
<doi:10.1007/s11263-012-0591-y>.