Multivariate Intrinsic Local Polynomial Regression on Isometric Riemannian Manifolds: Applications to Positive Definite Data
The paper introduces a novel non-parametric Riemannian regression method using Isometric Riemannian Manifolds (IRMs). The proposed technique, Intrinsic Local Polynomial Regression on IRMs (ILPR-IRMs), enables global data mapping between Riemannian manifolds while preserving underlying geometries. Th...
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Zusammenfassung: | The paper introduces a novel non-parametric Riemannian regression method
using Isometric Riemannian Manifolds (IRMs). The proposed technique, Intrinsic
Local Polynomial Regression on IRMs (ILPR-IRMs), enables global data mapping
between Riemannian manifolds while preserving underlying geometries. The ILPR
method is generalized to handle multivariate covariates on any Riemannian
manifold and isometry. Specifically, for manifolds equipped with Euclidean
Pullback Metrics (EPMs), a closed analytical formula is derived for the
multivariate ILPR (ILPR-EPM). Asymptotic statistical properties of the ILPR-EPM
for the multivariate local linear case are established, including a formula for
the asymptotic bias, establishing estimator consistency. The paper showcases
possible applications of the method by focusing on a group of Riemannian
metrics on the Symmetric Positive Definite (SPD) manifold, which arises in
machine learning and neuroscience. It is demonstrated that several metrics on
the SPD manifold are EPMs, resulting in a closed analytical expression for the
multivariate ILPR estimator on the SPD manifold. The paper evaluates the ILPR
estimator's performance under two specific EPMs, Log-Cholesky and
Log-Euclidean, on simulated data on the SPD manifold and compares it with
extrinsic LPR using the Affine-Invariant when scaling the manifold and
covariate dimension. The results show that the ILPR using the Log-Cholesky
metric is computationally faster and provides a better trade-off between error
and time than other metrics. Finally, the Log-Cholesky metric on the SPD
manifold is employed to implement an efficient and intrinsic version of Rie-SNE
for visualizing high-dimensional SPD data. The code for implementing ILPR-EPMs
and other relevant calculations is available on the GitHub page. |
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DOI: | 10.48550/arxiv.2305.01789 |