Bayesian Dyadic Trees and Histograms for Regression
Stéphanie van der Pas, Veronika Rockova
–Neural Information Processing Systems
Many machine learning tools for regression are based on recursive partitioning of the covariate space into smaller regions, where the regression function can be estimated locally. Among these, regression trees and their ensembles have demonstrated impressive empirical performance. In this work, we shed light on the machinery behind Bayesian variants of these methods. In particular, we study Bayesian regression histograms, such as Bayesian dyadic trees, in the simple regression case with just one predictor. We focus on the reconstruction of regression surfaces that are piecewise constant, where the number of jumps is unknown.
Neural Information Processing Systems
Oct-4-2024, 08:31:18 GMT
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