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  4. From averaging to acceleration, there is only a step-size
 
conference paper

From averaging to acceleration, there is only a step-size

Flammarion, Nicolas  
•
Bach, Francis
2015
Proceedings of Machine Learning Research
Conference on Learning Theory (COLT)

We consider the optimization of a quadratic objective function whose gradients are only accessible through a stochastic oracle that returns the gradient at any given point plus a zero-mean finite variance random error. We present the first algorithm that achieves jointly the optimal prediction error rates for least-squares regression, both in terms of forgetting of initial conditions in O(1/n 2), and in terms of dependence on the noise and dimension d of the problem, as O(d/n). Our new algorithm is based on averaged accelerated regularized gradient descent, and may also be analyzed through finer assumptions on initial conditions and the Hessian matrix, leading to dimension-free quantities that may still be small while the " optimal " terms above are large. In order to characterize the tightness of these new bounds, we consider an application to non-parametric regression and use the known lower bounds on the statistical performance (without computational limits), which happen to match our bounds obtained from a single pass on the data and thus show optimality of our algorithm in a wide variety of particular trade-offs between bias and variance.

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Type
conference paper
Author(s)
Flammarion, Nicolas  
Bach, Francis
Date Issued

2015

Published in
Proceedings of Machine Learning Research
Volume

40

Editorial or Peer reviewed

REVIEWED

Written at

OTHER

EPFL units
TML  
Event name
Conference on Learning Theory (COLT)
Available on Infoscience
December 4, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/163546
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