On the Oracle Complexity of Higher-Order Smooth Non-Convex Finite-Sum Optimization
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Date
2022Type
- Conference Paper
ETH Bibliography
yes
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Abstract
We prove lower bounds for higher-order methods in smooth non-convex finite-sum optimization. Our contribution is threefold: We first show that a deterministic algorithm cannot profit from the finite-sum structure of the objective, and that simulating a pth-order regularized method on the whole function by constructing exact gradient information is optimal up to constant factors. We further show lower bounds for randomized algorithms and compare them with the best known upper bounds. To address some gaps between the bounds, we propose a new second-order smoothness assumption that can be seen as an analogue of the first-order mean-squared smoothness assumption. We prove that it is sufficient to ensure state-ofthe-art convergence guarantees, while allowing for a sharper lower bound. Show more
Publication status
publishedExternal links
Book title
Proceedings of The 25th International Conference on Artificial Intelligence and StatisticsJournal / series
Proceedings of Machine Learning ResearchVolume
Pages / Article No.
Publisher
PMLREvent
Organisational unit
09687 - Kyng, Rasmus / Kyng, Rasmus
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ETH Bibliography
yes
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