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Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization

Publication ,  Conference
Frostig, R; Ge, R; Kakade, SM; Sidford, A
Published in: 32nd International Conference on Machine Learning, ICML 2015
January 1, 2015

We develop a family of accelerated stochastic algorithms that optimize sums of convex functions. Our algorithms improve upon the fastest running time for empirical risk minimization (ERM), and in particular linear least-squares regression, across a wide range of problem settings. To achieve this, we establish a framework, based on the classical proximal point algorithm, useful for accelerating recent fast stochastic algorithms in a black-box fashion. Empirically, we demonstrate that the resulting algorithms exhibit notions of stability that are advantageous in practice. Both in theory and in practice, the provided algorithms reap the computational benefits of adding a large strongly convex regularization term, without incurring a corresponding bias to the original ERM problem.

Duke Scholars

Published In

32nd International Conference on Machine Learning, ICML 2015

ISBN

9781510810587

Publication Date

January 1, 2015

Volume

3

Start / End Page

2530 / 2538
 

Citation

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Frostig, R., Ge, R., Kakade, S. M., & Sidford, A. (2015). Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization. In 32nd International Conference on Machine Learning, ICML 2015 (Vol. 3, pp. 2530–2538).
Frostig, R., R. Ge, S. M. Kakade, and A. Sidford. “Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization.” In 32nd International Conference on Machine Learning, ICML 2015, 3:2530–38, 2015.
Frostig R, Ge R, Kakade SM, Sidford A. Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization. In: 32nd International Conference on Machine Learning, ICML 2015. 2015. p. 2530–8.
Frostig, R., et al. “Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization.” 32nd International Conference on Machine Learning, ICML 2015, vol. 3, 2015, pp. 2530–38.
Frostig R, Ge R, Kakade SM, Sidford A. Un-regularizing: Approximate proximal point and faster stochastic algorithms for empirical risk minimization. 32nd International Conference on Machine Learning, ICML 2015. 2015. p. 2530–2538.

Published In

32nd International Conference on Machine Learning, ICML 2015

ISBN

9781510810587

Publication Date

January 1, 2015

Volume

3

Start / End Page

2530 / 2538