Optimizing Black-Box Metrics with Adaptive Surrogates
Abstract
We address the problem of training models with black-box and hard-to-optimize metrics by expressing the metric as a monotonic function of a small number of easy-to-optimize surrogates. We pose the training problem as an optimization over a relaxed surrogate space, which we solve by estimating local gradients for the metric and performing inexact convex projections. We analyze gradient estimates based on finite differences and local linear interpolations, and show convergence of our approach under smoothness assumptions with respect to the surrogates. Experimental results on classification and ranking problems verify the proposal performs on par with methods that know the mathematical formulation, and adds notable value when the form of the metric is unknown.
Cite
Text
Jiang et al. "Optimizing Black-Box Metrics with Adaptive Surrogates." International Conference on Machine Learning, 2020.Markdown
[Jiang et al. "Optimizing Black-Box Metrics with Adaptive Surrogates." International Conference on Machine Learning, 2020.](https://mlanthology.org/icml/2020/jiang2020icml-optimizing/)BibTeX
@inproceedings{jiang2020icml-optimizing,
title = {{Optimizing Black-Box Metrics with Adaptive Surrogates}},
author = {Jiang, Qijia and Adigun, Olaoluwa and Narasimhan, Harikrishna and Fard, Mahdi Milani and Gupta, Maya},
booktitle = {International Conference on Machine Learning},
year = {2020},
pages = {4784-4793},
volume = {119},
url = {https://mlanthology.org/icml/2020/jiang2020icml-optimizing/}
}