- Bayesian additive regression kernels
Bayesian additive regression kernels (BARK) is a
non-parametric statistics model for regression andclassification cite web| title= Bayesian Additive Regression Kernels |url= http://stat.duke.edu/people/theses/OuyangZ.html |Author = Zhi Ouyang |Publisher = Duke University] . The unknown mean function is represented as a weighted sum ofkernel function s, which is constructed by a prior using
alpha-stable Levy random fields. This leads to a specification of a joint prior distribution for the number of kernels, kernel regression coefficients and kernel location parameters. It can be shown cite web| title= Bayesian Additive Regression Kernels |url= http://stat.duke.edu/people/theses/OuyangZ.html |Author = Zhi Ouyang |Publisher = Duke University] that the alpha-stable prior onthe kernel regression coefficients may be approximated byt distribution s. With a heavy tail prior distribution on the kernel regression coefficients and a finite support on the kernel location parameter, BARK achieves sparse representations. The shape parameters in the kernel functions capture the non-linear interactions of the variables, which can be used for feature selection. Areversible jump Markov chain Monte Carlo algorithm is developed to make posterior inference on the unknown mean function, and the R package is available on CRANcite web| title= bark R package on CRAN |url= http://cran.r-project.org/web/packages/bark/index.html] .For binary classification using aprobit link, the model can be augmented with latent normal variables and hence the same method for Gaussian noise applies in the classification problem.Notes
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