ICML 2020
Customizing ML Predictions for Online Algorithms
Abstract
A popular line of recent research incorporates ML advice in the design of online algorithms to improve their performance in typical instances. These papers treat the ML algorithm as a black-box, and redesign online algorithms to take advantage of ML predictions. In this paper, we ask the complementary question: can we redesign ML algorithms to provide better predictions for online algorithms? We explore this question in the context of the classic rent-or-buy problem, and show that incorporating optimization benchmarks in ML loss functions leads to significantly better performance, while maintaining a worst-case adversarial result when the advice is completely wrong. We support this finding both through theoretical bounds and numerical simulations.
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Keywords
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Context
- Venue
- International Conference on Machine Learning
- Archive span
- 1993-2025
- Indexed papers
- 16471
- Paper id
- 454735781789659975