4.5 Article

Bayesian Model Selection in Additive Partial Linear Models Via Locally Adaptive Splines

期刊

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/10618600.2021.1999827

关键词

Bayesian adaptive regression; Function estimation; Knot-selection; Mixtures of g-priors; Nonparametric regression

资金

  1. Yonsei University Research Fund [2021-22-0032]
  2. Basic Science Research Programthrough theNational Research Foundation of Korea (NRF) - Ministry of Education [2017R1D1A1B03033536]
  3. National Research Foundation of Korea (NRF)
  4. National Research Foundation of Korea [2017R1D1A1B03033536] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

In this article, a Bayesian model selection method is proposed to specify a class of models and determine the effects of variables using latent variables, as well as to penalize smooth functions appropriately. Numerical results demonstrate that this method outperforms previously available methods in terms of effective sample sizes of Markov chain samplers and overall misclassification rates.
We provide a flexible framework for selecting among a class of additive partial linear models that allows both linear and nonlinear additive components. In practice, it is challenging to determine which additive components should be excluded from the model while simultaneously determining whether nonzero additive components should be represented as linear or nonlinear components in the final model. In this article, we propose a Bayesian model selection method that is facilitated by a carefully specified class of models, including the choice of a prior distribution and the nonparametric model used for the nonlinear additive components. We employ a series of latent variables that determine the effect of each variable among the three possibilities (no effect, linear effect, and nonlinear effect) and that simultaneously determine the knots of each spline for a suitable penalization of smooth functions. The use of a pseudo-prior distribution along with a collapsing scheme enables us to deploy well-behaved Markov chain Monte Carlo samplers, both for model selection and for fitting the preferred model. Our method and algorithm are deployed on a suite of numerical studies and are applied to a nutritional epidemiology study. The numerical results show that the proposed methodology outperforms previously available methods in terms of effective sample sizes of the Markov chain samplers and the overall misclassification rates.

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