Authors
Ryan Turner, David Eriksson, Michael McCourt, Juha Kiili, Eero Laaksonen, Zhen Xu, Isabelle Guyon
Publication date
2021/8/7
Conference
NeurIPS 2020 Competition and Demonstration Track
Pages
3-26
Publisher
PMLR
Description
This paper presents the results and insights from the black-box optimization (BBO) challenge at NeurIPS2020 which ran from July–October, 2020. The challenge emphasized the importance of evaluating derivative-free optimizers for tuning the hyperparameters of machine learning models. This was the first black-box optimization challenge with a machine learning emphasis. It was based on tuning (validation set) performance of standard machine learning models on real datasets. This competition has widespread impact as black-box optimization (eg, Bayesian optimization) is relevant for hyperparameter tuning in almost every machine learning project as well as many applications outside of machine learning. The final leaderboard was determined using the optimization performance on held-out (hidden) objective functions, where the optimizers ran without human intervention. Baselines were set using the default settings of several open source black-box optimization packages as well as random search.
Total citations
2021202220232024199413166
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