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Activity Number: 10 - Advances in Functional and Geometric Data Analysis
Type: Invited
Date/Time: Sunday, August 8, 2021 : 1:30 PM to 3:20 PM
Sponsor: IMS
Abstract #314459
Title: Intrinsic Riemannian Functional Data Analysis for Sparse Longitudinal Data
Author(s): Zhenhua Lin* and Lingxuan Shao and Fang Yao
Companies: National University of Singapore and Peking University and Peking University
Keywords: covariance function; vector bundle; parallel transport; diffusion tensor; smoothing; Frechet mean
Abstract:

A novel framework is developed to intrinsically analyze sparsely observed Riemannian functional data. It features four innovative components: a frame-independent covariance function, a smooth vector bundle termed covariance vector bundle, a parallel transport and a smooth bundle metric on the covariance vector bundle. The introduced intrinsic covariance function links estimation of covariance structure to smoothing problems that involve raw covariance observations derived from sparsely observed Riemannian functional data, while the covariance vector bundle provides a rigorous mathematical foundation for formulating the smoothing problems. The parallel transport and the bundle metric together make it possible to measure fidelity of fit to the covariance function. They also play a critical role in quantifying the quality of estimators for the covariance function. As an illustration, based on the proposed framework, we develop a local linear smoothing estimator for the covariance function and study its theoretical and numerical properties. The intrinsic feature of the framework makes it applicable to not only Euclidean submanifolds but also manifolds without a canonical ambient space.


Authors who are presenting talks have a * after their name.

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