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#80 Bayesian Additive Regression Trees (BARTs), with Sameer Deshpande

Learning Bayesian Statistics

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BART, or Bayesian additive regression trees, is a model that was initially proposed by Chipman, George, and McCulloch in this wonderful 2010 paper. What BART does is it says, let's try to approximate this function using a sum of binary regression trees. It'll say, find an ensemble of like 200 trees, that when you add them together, you get a good approximation of this regression function. And what they found was their MCMC would get bogged down around really deep trees. So about 10 years after that first Bayesian cart paper, they introduced the BART model which is a forest model.

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