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King Abdullah University of Science and Technology
Visual Computing Center
VCC
Visual Computing Center

Ohio State University

Heteroscedastic BART Using Multiplicative Regression Trees

Matthew Pratola, Assistant Professor of Statistics, The Ohio State University

May 7, 16:00 - 17:00

B1 L4 R4102

Ohio State University Environmental Statistics

Bayesian additive regression trees (BART) has become increasingly popular as a flexible and scalable non-parametric model useful in many modern applied statistics regression problems. It brings many advantages to the practitioner dealing with large and complex non-linear response surfaces, such as a matrix-free formulation and the lack of a requirement to specify a regression basis a priori.

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