Flexible models for simple longitudinal data
Flexible models for simple longitudinal data
We propose a new method for estimating subject-specific mean functions from longitudinal data. We aim to do this in a flexible manner (without restrictive assumptions about the shape of the subject-specific mean functions), while exploiting similarities in the mean functions between different subjects. Functional principal components analysis fulfils both requirements, and methods for functional principal components analysis have been developed for longitudinal data. However, we find that these existing methods sometimes give fitted mean functions which are more complex than needed to provide a good fit to the data. We develop a new penalised likelihood approach to flexibly model longitudinal data, with a penalty term to control the balance between fit to the data and smoothness of the subject-specific mean curves. We run simulation studies to demonstrate that the new method substantially improves the quality of inference relative to existing methods across a range of examples, and apply the method to data on changes in body composition in adolescent girls.
Ogden, Helen
78b03322-3836-4d3b-8b84-faf12895854e
22 January 2024
Ogden, Helen
78b03322-3836-4d3b-8b84-faf12895854e
[Unknown type: UNSPECIFIED]
Abstract
We propose a new method for estimating subject-specific mean functions from longitudinal data. We aim to do this in a flexible manner (without restrictive assumptions about the shape of the subject-specific mean functions), while exploiting similarities in the mean functions between different subjects. Functional principal components analysis fulfils both requirements, and methods for functional principal components analysis have been developed for longitudinal data. However, we find that these existing methods sometimes give fitted mean functions which are more complex than needed to provide a good fit to the data. We develop a new penalised likelihood approach to flexibly model longitudinal data, with a penalty term to control the balance between fit to the data and smoothness of the subject-specific mean curves. We run simulation studies to demonstrate that the new method substantially improves the quality of inference relative to existing methods across a range of examples, and apply the method to data on changes in body composition in adolescent girls.
Text
2401.11827
- Author's Original
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e-pub ahead of print date: 22 January 2024
Published date: 22 January 2024
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Local EPrints ID: 488628
URI: http://eprints.soton.ac.uk/id/eprint/488628
PURE UUID: 76cfcd28-6a95-4ed2-9bb2-ccb6a7dd6dff
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Date deposited: 27 Mar 2024 17:56
Last modified: 04 May 2024 01:45
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