Combining Adversarial Guarantees and Stochastic Fast Rates in Online Learning
–Neural Information Processing Systems
We consider online learning algorithms that guarantee worst-case regret rates in adversarial environments (so they can be deployed safely and will perform robustly), yet adapt optimally to favorable stochastic environments (so they will perform well in a variety of settings of practical importance). We quantify the friendliness of stochastic environments by means of the well-known Bernstein (a.k.a.
Neural Information Processing Systems
Mar-17-2026, 11:34:03 GMT
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