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Functional Logistic Mixed-Effects Models for Learning Curves From Longitudinal Binary Data.


ABSTRACT: Purpose We present functional logistic mixed-effects models (FLMEMs) for estimating population and individual-level learning curves in longitudinal experiments. Method Using functional analysis tools in a Bayesian hierarchical framework, the FLMEM captures nonlinear, smoothly varying learning curves, appropriately accommodating uncertainty in various aspects of the analysis while also borrowing information across different model layers. An R package implementing our method is available as part of the Supplemental Materials . Results Application to speech learning data from Reetzke, Xie, Llanos, and Chandrasekaran (2018) and a simulation study demonstrate the utility of FLMEM and its many advantages over linear and logistic mixed-effects models. Conclusion The FLMEM is highly flexible and efficient in improving upon the practical limitations of linear models and logistic linear mixed-effects models. We expect the FLMEM to be a useful addition to the speech, language, and hearing scientist's toolkit. Supplemental Material https://doi.org/10.23641/asha.7822568.

SUBMITTER: Paulon G 

PROVIDER: S-EPMC6802892 | biostudies-literature | 2019 Mar

REPOSITORIES: biostudies-literature

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Functional Logistic Mixed-Effects Models for Learning Curves From Longitudinal Binary Data.

Paulon Giorgio G   Reetzke Rachel R   Chandrasekaran Bharath B   Sarkar Abhra A  

Journal of speech, language, and hearing research : JSLHR 20190301 3


Purpose We present functional logistic mixed-effects models (FLMEMs) for estimating population and individual-level learning curves in longitudinal experiments. Method Using functional analysis tools in a Bayesian hierarchical framework, the FLMEM captures nonlinear, smoothly varying learning curves, appropriately accommodating uncertainty in various aspects of the analysis while also borrowing information across different model layers. An R package implementing our method is available as part o  ...[more]

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