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Robust Learning Rate Selection for Stochastic Optimization via Splitting Diagnostic

Machine Learning 2024-02-20 v5 Machine Learning Optimization and Control Methodology

Abstract

This paper proposes SplitSGD, a new dynamic learning rate schedule for stochastic optimization. This method decreases the learning rate for better adaptation to the local geometry of the objective function whenever a stationary phase is detected, that is, the iterates are likely to bounce at around a vicinity of a local minimum. The detection is performed by splitting the single thread into two and using the inner product of the gradients from the two threads as a measure of stationarity. Owing to this simple yet provably valid stationarity detection, SplitSGD is easy-to-implement and essentially does not incur additional computational cost than standard SGD. Through a series of extensive experiments, we show that this method is appropriate for both convex problems and training (non-convex) neural networks, with performance compared favorably to other stochastic optimization methods. Importantly, this method is observed to be very robust with a set of default parameters for a wide range of problems and, moreover, can yield better generalization performance than other adaptive gradient methods such as Adam.

Keywords

Cite

@article{arxiv.1910.08597,
  title  = {Robust Learning Rate Selection for Stochastic Optimization via Splitting Diagnostic},
  author = {Matteo Sordello and Niccolò Dalmasso and Hangfeng He and Weijie Su},
  journal= {arXiv preprint arXiv:1910.08597},
  year   = {2024}
}
R2 v1 2026-06-23T11:48:11.529Z