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Competing with the empirical risk minimizer in a single pass

Publication ,  Conference
Frostig, R; Ge, R; Kakade, SM; Sidford, A
Published in: Journal of Machine Learning Research
January 1, 2015

In many estimation problems, e.g. linear and logistic regression, we wish to minimize an unknown objective given only unbiased samples of the objective function. Furthermore, we aim to achieve this using as few samples as possible. In the absence of computational constraints, the minimizer of a sample average of observed data - commonly referred to as either the empirical risk minimizer (ERM) or the M-estimator - is widely regarded as the estimation strategy of choice due to its desirable statistical convergence properties. Our goal in this work is to perform as well as the ERM, on every problem, while minimizing the use of computational resources such as running time and space usage. We provide a simple streaming algorithm which, under standard regularity assumptions on the underlying problem, enjoys the following properties: 1. The algorithm can be implemented in linear time with a single pass of the observed data, using space linear in the size of a single sample. 2. The algorithm achieves the same statistical rate of convergence as the empirical risk minimizer on every problem, even considering constant factors. 3. The algorithm's performance depends on the initial error at a rate that decreases super-polynomially. 4. The algorithm is easily parallelizable. Moreover, we quantify the (finite-sample) rate at which the algorithm becomes competitive with the ERM.

Duke Scholars

Published In

Journal of Machine Learning Research

EISSN

1533-7928

ISSN

1532-4435

Publication Date

January 1, 2015

Volume

40

Issue

2015

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences
 

Citation

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Frostig, R., Ge, R., Kakade, S. M., & Sidford, A. (2015). Competing with the empirical risk minimizer in a single pass. In Journal of Machine Learning Research (Vol. 40).
Frostig, R., R. Ge, S. M. Kakade, and A. Sidford. “Competing with the empirical risk minimizer in a single pass.” In Journal of Machine Learning Research, Vol. 40, 2015.
Frostig R, Ge R, Kakade SM, Sidford A. Competing with the empirical risk minimizer in a single pass. In: Journal of Machine Learning Research. 2015.
Frostig, R., et al. “Competing with the empirical risk minimizer in a single pass.” Journal of Machine Learning Research, vol. 40, no. 2015, 2015.
Frostig R, Ge R, Kakade SM, Sidford A. Competing with the empirical risk minimizer in a single pass. Journal of Machine Learning Research. 2015.

Published In

Journal of Machine Learning Research

EISSN

1533-7928

ISSN

1532-4435

Publication Date

January 1, 2015

Volume

40

Issue

2015

Related Subject Headings

  • Artificial Intelligence & Image Processing
  • 4905 Statistics
  • 4611 Machine learning
  • 17 Psychology and Cognitive Sciences
  • 08 Information and Computing Sciences