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Activity Number: 89 - Nonparametric Methods for Modern Data
Type: Contributed
Date/Time: Monday, August 9, 2021 : 10:00 AM to 11:50 AM
Sponsor: Section on Nonparametric Statistics
Abstract #317987
Title: Robust Joint Modeling of Paired Sparse Functional Data
Author(s): Huiya Zhou*
Companies: Texas A&M University
Keywords: Functional data; Scale Mixture of Normal Distribution; Mixed-effects model; Principal component; Reduced-rank model; Penalized spline
Abstract:

A reduced-rank mixed effects model is developed for robust modeling of paired sparsely observed functional data. In this model, the curves for each functional variable are summarized using a few functional principal components, and the association of the two functional variables is modeled through the association of the principal component scores. Multivariate scale mixture of normal distributions is used to model the principal component scores and the measurement errors in order to handle outlying observations and achieve robust inference. The mean functions and principal comonent functions are modeled using splines and roughness penalties are applied to avoid overfitting. An EM algorithm is developed for computation of model fitting and prediction. A simulation study shows that the proposed method outperforms an existing method which is not designed for robust estimation. The effectiveness of the proposed method is illustrated in an application of fitting multi-band light curves of Type Ia supernovae.


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

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