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Improved Space Bounds for Learning with Experts
Published 2 Mar 2023 in cs.DS and cs.LG | (2303.01453v1)
Abstract: We give improved tradeoffs between space and regret for the online learning with expert advice problem over $T$ days with $n$ experts. Given a space budget of $n{\delta}$ for $\delta \in (0,1)$, we provide an algorithm achieving regret $\tilde{O}(n2 T{1/(1+\delta)})$, improving upon the regret bound $\tilde{O}(n2 T{2/(2+\delta)})$ in the recent work of [PZ23]. The improvement is particularly salient in the regime $\delta \rightarrow 1$ where the regret of our algorithm approaches $\tilde{O}_n(\sqrt{T})$, matching the $T$ dependence in the standard online setting without space restrictions.
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