Expert-Calibrated Learning for Online Optimization with Switching Costs
Pengfei Li, Jianyi Yang, Shaolei Ren

TL;DR
This paper introduces EC-L2O, a novel learning approach that trains ML-based optimizers considering expert calibration, leading to improved online optimization performance with switching costs, especially in high-error scenarios.
Contribution
It proposes EC-L2O, a new training method for ML optimizers that explicitly incorporates expert calibration, with theoretical guarantees and empirical validation.
Findings
EC-L2O achieves lower average costs in simulations.
EC-L2O provides better competitive ratios than baseline algorithms.
Theoretical bounds on tail cost ratios are established.
Abstract
We study online convex optimization with switching costs, a practically important but also extremely challenging problem due to the lack of complete offline information. By tapping into the power of machine learning (ML) based optimizers, ML-augmented online algorithms (also referred to as expert calibration in this paper) have been emerging as state of the art, with provable worst-case performance guarantees. Nonetheless, by using the standard practice of training an ML model as a standalone optimizer and plugging it into an ML-augmented algorithm, the average cost performance can be highly unsatisfactory. In order to address the "how to learn" challenge, we propose EC-L2O (expert-calibrated learning to optimize), which trains an ML-based optimizer by explicitly taking into account the downstream expert calibrator. To accomplish this, we propose a new differentiable expert calibrator…
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