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Asynchronous Parallel Stochastic Quasi-Newton Methods.

Qianqian Tong1, Guannan Liang1, Xingyu Cai2

  • 1University of Connecticut, Storrs, CT 06269.

Parallel Computing
|December 28, 2020
PubMed
Summary
This summary is machine-generated.

We introduce Asynchronous Stochastic Quasi-Newton (AsySQN), a novel parallel algorithm for L-BFGS. AsySQN achieves significant speedup and maintains linear convergence, outperforming first-order methods on ill-conditioned problems.

Keywords:
Asynchronous parallelQuasi-Newton methodStochastic algorithmVariance Reduction

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Area of Science:

  • Machine Learning
  • Optimization Algorithms
  • Parallel Computing

Background:

  • First-order stochastic algorithms like stochastic gradient descent dominate large-scale machine learning.
  • Second-order quasi-Newton methods, particularly L-BFGS, show promise for ill-conditioned problems.
  • Existing parallelization attempts for L-BFGS are limited.

Purpose of the Study:

  • To develop a truly parallelized L-BFGS algorithm with convergence guarantees.
  • To enhance the efficiency of stochastic quasi-Newton methods for large-scale optimization.
  • To demonstrate the effectiveness of the proposed method on ill-conditioned problems.

Main Methods:

  • Proposed an asynchronous parallel algorithm for stochastic quasi-Newton (AsySQN) optimization.
  • Implemented a full parallelization of the L-BFGS method, including its two-loop recursion.
  • Utilized variance reduction techniques to ensure linear convergence.

Main Results:

  • The AsySQN algorithm achieves significant speedup compared to non-parallel L-BFGS.
  • Maintained the linear convergence rate of its sequential counterpart.
  • Demonstrated superior performance over first-order methods on ill-conditioned benchmark datasets.

Conclusions:

  • AsySQN offers a practical and efficient approach to parallelizing L-BFGS.
  • The method effectively addresses challenges posed by ill-conditioned optimization problems in machine learning.
  • AsySQN provides a scalable solution for training large machine learning models.