Predictions of machine learning with mixed-effects in analyzing longitudinal data under model misspecification

, , , & Cao, Taoyun (2023) Predictions of machine learning with mixed-effects in analyzing longitudinal data under model misspecification. Statistical Methods and Applications, 32(2), pp. 681-711.

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Description

We consider predictions in longitudinal studies, and investigate the well known statistical mixed-effects model, piecewise linear mixed-effects model and six different popular machine learning approaches: decision trees, bagging, random forest, boosting, support-vector machine and neural network. In order to consider the correlated data in machine learning, the random effects is combined into the traditional tree methods and random forest. Our focus is the performance of statistical modelling and machine learning especially in the cases of the misspecification of the fixed effects and the random effects. Extensive simulation studies have been carried out to evaluate the performance using a number of criteria. Two real datasets from longitudinal studies are analysed to demonstrate our findings. The R code and dataset are freely available at https://github.com/shuwen92/MEML.

Impact and interest:

3 citations in Scopus
1 citations in Web of Science®
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ID Code: 237280
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Hu, Shuwenorcid.org/0000-0002-6953-4815
Wang, You Ganorcid.org/0000-0003-0901-4671
Drovandi, Christopherorcid.org/0000-0001-9222-8763
Additional Information: Funding Information: This work is in part supported by Australian Research Council (ARC) Discovery Project (DP160104292), the Australian Research Council Centre of Excellence for Mathematical and Statistical Frontiers (ACEMS), under grant number CE140100049, Guangdong Basic and Applied Basic Research Foundation (2020A1515011580), and Guangdong Provincial key platforms and major scientific research projects of Guang-dong universities (2018GKTSCX010). Open Access funding enabled and organized by CAUL and its Member Institutions.
Measurements or Duration: 31 pages
Keywords: Comparison study, Longitudinal data, Machine learning, Misspecification, Mixed-effects model, Regression tree, Support vector machine
DOI: 10.1007/s10260-022-00658-x
ISSN: 1618-2510
Pure ID: 122093984
Divisions: Current > Research Centres > Centre for Data Science
Current > QUT Faculties and Divisions > Faculty of Science
Current > Schools > School of Mathematical Sciences
Funding Information: This work is in part supported by Australian Research Council (ARC) Discovery Project (DP160104292), the Australian Research Council Centre of Excellence for Mathematical and Statistical Frontiers (ACEMS), under grant number CE140100049, Guangdong Basic and Applied Basic Research Foundation (2020A1515011580), and Guangdong Provincial key platforms and major scientific research projects of Guang-dong universities (2018GKTSCX010).
Funding:
Copyright Owner: 2022 Crown
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Deposited On: 23 Jan 2023 06:22
Last Modified: 29 Mar 2024 12:35