Hyperboost: Hyperparameter Optimization by Gradient Boosting surrogate models
Abstract
Bayesian Optimization is a popular tool for tuning algorithms in automatic machine learning (AutoML) systems. Current state-of-the-art methods leverage Random Forests or Gaussian processes to build a surrogate model that predicts algorithm performance given a certain set of hyperparameter settings. In this paper, we propose a new surrogate model based on gradient boosting, where we use quantile regression to provide optimistic estimates of the performance of an unobserved hyperparameter setting, and combine this with a distance metric between unobserved and observed hyperparameter settings to help regulate exploration. We demonstrate empirically that the new method is able to outperform some state-of-the art techniques across a reasonable sized set of classification problems.
Cite
@article{arxiv.2101.02289,
title = {Hyperboost: Hyperparameter Optimization by Gradient Boosting surrogate models},
author = {Jeroen van Hoof and Joaquin Vanschoren},
journal= {arXiv preprint arXiv:2101.02289},
year = {2021}
}
Comments
ECMLPKDD 2019 Workshop on Automating Data Science