2022
DOI: 10.48550/arxiv.2202.05630
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Scale-free Unconstrained Online Learning for Curved Losses

Abstract: A sequence of works in unconstrained online convex optimisation have investigated the possibility of adapting simultaneously to the norm U of the comparator and the maximum norm G of the gradients. In full generality, matching upper and lower bounds are known which show that this comes at the unavoidable cost of an additive GU 3 , which is not needed when either G or U is known in advance. Surprisingly, recent results by Kempka et al. (2019) show that no such price for adaptivity is needed in the specific case… Show more

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