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Following the Leader and Fast Rates in Online Linear Prediction: Curved Constraint Sets and Other Regularities

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Title: Following the Leader and Fast Rates in Online Linear Prediction: Curved Constraint Sets and Other Regularities
Authors: Huang, R
Lattimore, T
Gyorgy, A
Szepesvari, C
Item Type: Journal Article
Abstract: Follow the leader (FTL) is a simple online learning algorithm that is known to perform well when the loss functions are convex and positively curved. In this paper we ask whether there are other settings when FTL achieves low regret. In particular, we study the fundamental problem of linear prediction over a convex, compact domain with non-empty interior. Amongst other results, we prove that the curvature of the boundary of the domain can act as if the losses were curved: In this case, we prove that as long as the mean of the loss vectors have positive lengths bounded away from zero, FTL enjoys logarithmic regret, while for polytope domains and stochastic data it enjoys finite expected regret. The former result is also extended to strongly convex domains by establishing an equivalence between the strong convexity of sets and the minimum curvature of their boundary, which may be of independent interest. Building on a previously known meta-algorithm, we also get an algorithm that simultaneously enjoys the worst-case guarantees and the smaller regret of FTL when the data is ‘easy’. Finally, we show that such guarantees are achievable directly (e.g., by the follow the regularized leader algorithm or by a shrinkage-based variant of FTL) when the constraint set is an ellipsoid.
Issue Date: 1-Dec-2017
Date of Acceptance: 24-Nov-2017
URI: http://hdl.handle.net/10044/1/55686
ISSN: 1532-4435
Publisher: Microtome Publishing
Start Page: 1
End Page: 31
Journal / Book Title: Journal of Machine Learning Research
Volume: 18
Copyright Statement: c 2017 Ruitong Huang, Tor Lattimore, András György, and Csaba Szepesvári. License: CC-BY 4.0, see https://creativecommons.org/licenses/by/4.0/. Attribution requirements are provided at http://jmlr.org/papers/v18/17-079.html.
Keywords: 08 Information And Computing Sciences
17 Psychology And Cognitive Sciences
Artificial Intelligence & Image Processing
Publication Status: Published
Appears in Collections:Electrical and Electronic Engineering
Faculty of Engineering