PAPER DIGEST
Most Influential UAI 2019 Paper · 2026-03 edition

Practical Multi-fidelity Bayesian Optimization For Hyperparameter Tuning

Jian Wu; Saul Toscano-Palmerin; Peter I. Frazier; Andrew Gordon Wilson

Venue
Conference on Uncertainty in Artificial Intelligence (UAI) 2019
Recognition
Most Influential UAI 2019 Paper (Rank No. 11)
Edition
2026-03
Impact factor
4
Certificate ID
797943ef51ef938c

Abstract

Bayesian optimization is popular for optimizing time-consuming black-box objectives. Nonetheless, for hyperparameter tuning in deep neural networks, the time required to evaluate the validation error for even a few hyperparameter settings remains a bottleneck. Multi-fidelity optimization promises relief using cheaper proxies to such objectives — for example, validation error for a network trained using a subset of the training points or fewer iterations than required for convergence. We propose a highly flexible and practical approach to multi-fidelity Bayesian optimization, focused on efficiently optimizing hyperparameters for iteratively trained supervised learning models. We introduce a new acquisition function, the trace-aware knowledge-gradient, which efficiently leverages both multiple continuous fidelity controls and trace observations — values of the objective at a sequence of fidelities, available when varying fidelity using training iterations. We provide a provably convergent method for optimizing our acquisition function and show it outperforms state-of-the-art alternatives for hyperparameter tuning of deep neural networks and large-scale kernel learning.

Download PDF certificate