Article ID Journal Published Year Pages File Type
438399 Theoretical Computer Science 2014 25 Pages PDF
Abstract

We consider the problem of online linear regression on individual sequences. The goal in this paper is for the forecaster to output sequential predictions which are, after T   time rounds, almost as good as the ones output by the best linear predictor in a given ℓ1ℓ1-ball in RdRd. We consider both the cases where the dimension d is small and large relative to the time horizon T. We first present regret bounds with optimal dependencies on d, T, and on the sizes U, X and Y   of the ℓ1ℓ1-ball, the input data and the observations. The minimax regret is shown to exhibit a regime transition around the point d=TUX/(2Y). Furthermore, we present efficient algorithms that are adaptive, i.e., that do not require the knowledge of U, X, Y, and T, but still achieve nearly optimal regret bounds.

Related Topics
Physical Sciences and Engineering Computer Science Computational Theory and Mathematics
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