Bayesian neural tree models for nonparametric regression
Article Type
Research Article
Publication Title
Australian and New Zealand Journal of Statistics
Abstract
Frequentist and Bayesian methods differ in many aspects but share some basic optimal properties. In real-life prediction problems, situations exist in which a model based on one of the above paradigms is preferable depending on some subjective criteria. Nonparametric classification and regression techniques, such as decision trees and neural networks, have both frequentist (classification and regression trees (CARTs) and artificial neural networks) as well as Bayesian counterparts (Bayesian CART and Bayesian neural networks) to learning from data. In this paper, we present two hybrid models combining the Bayesian and frequentist versions of CART and neural networks, which we call the Bayesian neural tree (BNT) models. BNT models can simultaneously perform feature selection and prediction, are highly flexible, and generalise well in settings with limited training observations. We study the statistical consistency of the proposed approaches and derive the optimal value of a vital model parameter. The excellent performance of the newly proposed BNT models is shown using simulation studies. We also provide some illustrative examples using a wide variety of standard regression datasets from a public available machine learning repository to show the superiority of the proposed models in comparison to popularly used Bayesian CART and Bayesian neural network models.
First Page
101
Last Page
126
DOI
https://10.1111/anzs.12386
Publication Date
6-1-2023
Recommended Citation
Chakraborty, Tanujit; Kamat, Gauri; and Chakraborty, Ashis Kumar, "Bayesian neural tree models for nonparametric regression" (2023). Journal Articles. 3687.
https://digitalcommons.isical.ac.in/journal-articles/3687
Comments
Open Access, Green