Robust Learning for Smoothed Online Convex Optimization with Feedback Delay
–Neural Information Processing Systems
We study a general form of Smoothed Online Convex Optimization, a.k.a. We propose a novel machine learning (ML) augmented online algorithm, Robustness-Constrained Learning (RCL), which combines untrusted ML predictions with a trusted expert online algorithm via constrained projection to robustify the ML prediction. Specifically, we prove that RCL is able to guarantee (1 \lambda) -competitiveness against any given expert for any \lambda 0, while also explicitly training the ML model in a robustification-aware manner to improve the average-case performance. Importantly, RCL is the first ML-augmented algorithm with a provable robustness guarantee in the case of multi-step switching cost and feedback delay. We demonstrate the improvement of RCL in both robustness and average performance using battery management as a case study.
Neural Information Processing Systems
Oct-11-2024, 04:37:01 GMT
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