BART: Bayesian Additive Regression Trees
CHChipman, Hugh AGEGeorge, Edward IMRMcCulloch, Robert E
Abstract
We develop a Bayesian “sum-of-trees” model where each tree is constrained by a regularization prior to be a weak learner, and fitting and inference are accomplished via an iterative Bayesian backfitting MCMC algorithm that generates samples from a posterior. Effectively, BART is a nonparametric Bayesian regression approach which uses dimensionally adaptive random basis elements. Motivated by ensemble methods in general, and boosting algorithms in particular, BART is defined by a statistical model: a prior and a likelihood. This approach enables full posterior inference including point and interval estimates of the unknown regression function as well as the marginal effects of potential predictors. By keeping…
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Authors
3- CHChipman, Hugh ACorresponding
- GEGeorge, Edward I
- MRMcCulloch, Robert E
Topics & keywords
Topics
Keywords
- Bayesian probability
- Bayesian inference
- Nonparametric regression
- Frequentist inference
- Computer science
- Bayesian linear regression
- Artificial intelligence
- Inference
UN Sustainable Development Goals
- Reduced inequalities
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