Artem Beliakov

1paper

1 Paper

LGJun 11, 2022
Gradient Boosting Performs Gaussian Process Inference

Aleksei Ustimenko, Artem Beliakov, Liudmila Prokhorenkova

This paper shows that gradient boosting based on symmetric decision trees can be equivalently reformulated as a kernel method that converges to the solution of a certain Kernel Ridge Regression problem. Thus, we obtain the convergence to a Gaussian Process' posterior mean, which, in turn, allows us to easily transform gradient boosting into a sampler from the posterior to provide better knowledge uncertainty estimates through Monte-Carlo estimation of the posterior variance. We show that the proposed sampler allows for better knowledge uncertainty estimates leading to improved out-of-domain detection.