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Accounting for shared covariates in semi-parametric Bayesian additive regression trees

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Forthcoming

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Accounting for shared covariates in semi-parametric Bayesian additive regression trees. / Batista Do Prado, Estevao; Parnell, Andrew; de Andrade Moral, Rafael et al.
In: Annals of Applied Statistics, 02.09.2024.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Batista Do Prado, E, Parnell, A, de Andrade Moral, R, McJames, N, O'Shea, A & Murphy, K 2024, 'Accounting for shared covariates in semi-parametric Bayesian additive regression trees', Annals of Applied Statistics. <https://arxiv.org/pdf/2108.07636>

APA

Batista Do Prado, E., Parnell, A., de Andrade Moral, R., McJames, N., O'Shea, A., & Murphy, K. (in press). Accounting for shared covariates in semi-parametric Bayesian additive regression trees. Annals of Applied Statistics. https://arxiv.org/pdf/2108.07636

Vancouver

Batista Do Prado E, Parnell A, de Andrade Moral R, McJames N, O'Shea A, Murphy K. Accounting for shared covariates in semi-parametric Bayesian additive regression trees. Annals of Applied Statistics. 2024 Sept 2.

Author

Batista Do Prado, Estevao ; Parnell, Andrew ; de Andrade Moral, Rafael et al. / Accounting for shared covariates in semi-parametric Bayesian additive regression trees. In: Annals of Applied Statistics. 2024.

Bibtex

@article{fb982ea878e542dcaf9c5b09865ba8da,
title = "Accounting for shared covariates in semi-parametric Bayesian additive regression trees",
abstract = "We propose some extensions to semi-parametric models based on Bayesian additive regression trees (BART). In the semi-parametric BART paradigm, the response variable is approximated by a linear predictor and a BART model, where the linear component is responsible for estimating the main effects and BART accounts for non-specified interactions and non-linearities. Previous semi-parametric models based on BART have assumed that the set of covariates in the linear predictor and the BART model are mutually exclusive in an attempt to avoid poor coverage properties and reduce bias in the estimates of the parameters in the linear predictor. The main novelty in our approach lies in the way we change the tree-generation moves in BART to deal with this bias and resolve non-identifiability issues between the parametric and non-parametric components, even when they have covariates in common. This allows us to model complex interactions involving the covariates of primary interest, both among themselves and with those in the BART component. Our novel method is developed with a view to analysing data from an international education assessment, where certain predictors of students' achievements in mathematics are of particular interpretational interest. Through additional simulation studies and another application to a well-known benchmark dataset, we also show competitive performance when compared to regression models, alternative formulations of semi-parametric BART, and other tree-based methods. The implementation of the proposed method is available at https://github.com/ebprado/CSP-BART.",
author = "{Batista Do Prado}, Estevao and Andrew Parnell and {de Andrade Moral}, Rafael and Nathan McJames and Ann O'Shea and Keefe Murphy",
year = "2024",
month = sep,
day = "2",
language = "English",
journal = "Annals of Applied Statistics",
issn = "1932-6157",
publisher = "Institute of Mathematical Statistics",

}

RIS

TY - JOUR

T1 - Accounting for shared covariates in semi-parametric Bayesian additive regression trees

AU - Batista Do Prado, Estevao

AU - Parnell, Andrew

AU - de Andrade Moral, Rafael

AU - McJames, Nathan

AU - O'Shea, Ann

AU - Murphy, Keefe

PY - 2024/9/2

Y1 - 2024/9/2

N2 - We propose some extensions to semi-parametric models based on Bayesian additive regression trees (BART). In the semi-parametric BART paradigm, the response variable is approximated by a linear predictor and a BART model, where the linear component is responsible for estimating the main effects and BART accounts for non-specified interactions and non-linearities. Previous semi-parametric models based on BART have assumed that the set of covariates in the linear predictor and the BART model are mutually exclusive in an attempt to avoid poor coverage properties and reduce bias in the estimates of the parameters in the linear predictor. The main novelty in our approach lies in the way we change the tree-generation moves in BART to deal with this bias and resolve non-identifiability issues between the parametric and non-parametric components, even when they have covariates in common. This allows us to model complex interactions involving the covariates of primary interest, both among themselves and with those in the BART component. Our novel method is developed with a view to analysing data from an international education assessment, where certain predictors of students' achievements in mathematics are of particular interpretational interest. Through additional simulation studies and another application to a well-known benchmark dataset, we also show competitive performance when compared to regression models, alternative formulations of semi-parametric BART, and other tree-based methods. The implementation of the proposed method is available at https://github.com/ebprado/CSP-BART.

AB - We propose some extensions to semi-parametric models based on Bayesian additive regression trees (BART). In the semi-parametric BART paradigm, the response variable is approximated by a linear predictor and a BART model, where the linear component is responsible for estimating the main effects and BART accounts for non-specified interactions and non-linearities. Previous semi-parametric models based on BART have assumed that the set of covariates in the linear predictor and the BART model are mutually exclusive in an attempt to avoid poor coverage properties and reduce bias in the estimates of the parameters in the linear predictor. The main novelty in our approach lies in the way we change the tree-generation moves in BART to deal with this bias and resolve non-identifiability issues between the parametric and non-parametric components, even when they have covariates in common. This allows us to model complex interactions involving the covariates of primary interest, both among themselves and with those in the BART component. Our novel method is developed with a view to analysing data from an international education assessment, where certain predictors of students' achievements in mathematics are of particular interpretational interest. Through additional simulation studies and another application to a well-known benchmark dataset, we also show competitive performance when compared to regression models, alternative formulations of semi-parametric BART, and other tree-based methods. The implementation of the proposed method is available at https://github.com/ebprado/CSP-BART.

M3 - Journal article

JO - Annals of Applied Statistics

JF - Annals of Applied Statistics

SN - 1932-6157

ER -