mL-BFGS: A Momentum-based L-BFGS for Distributed Large-Scale Neural Network Optimization

  • Niu, Yue
  • Fabian, Zalan
  • Lee, Sunwoo
  • Soltanolkotabi, Mahdi
  • Avestimehr, Salman
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초록

Quasi-Newton methods still face significant challenges in training large-scale neural networks due to additional compute costs in the Hessian related computations and instability issues in stochastic training. A well-known method, L-BFGS that efficiently approximates the Hessian using history parameter and gradient changes, suffers convergence instability in stochastic training. So far, attempts that adapt L-BFGS to large-scale stochastic training incur considerable extra overhead, which offsets its convergence benefits in wall-clock time. In this paper, we propose mL-BFGS, a lightweight momentum-based L-BFGS algorithm that paves the way for quasi-Newton (QN) methods in large-scale distributed deep neural network (DNN) optimization. mL-BFGS introduces a nearly cost-free momentum scheme into L-BFGS update and greatly reduces stochastic noise in the Hessian, therefore stabilizing convergence during stochastic optimization. For model training at a large scale, mL-BFGS approximates a block-wise Hessian, thus enabling distributing compute and memory costs across all computing nodes. We provide a supporting convergence analysis for mL-BFGS in stochastic settings. To investigate mL-BFGS’s potential in large-scale DNN training, we train benchmark neural models using mL-BFGS and compare performance with baselines (SGD, Adam, and other quasi-Newton methods). Results show that mL-BFGS achieves both noticeable iteration-wise and wall-clock speedup. © 2023, Transactions on Machine Learning Research. All rights reserved.

제목
mL-BFGS: A Momentum-based L-BFGS for Distributed Large-Scale Neural Network Optimization
저자
Niu, YueFabian, ZalanLee, SunwooSoltanolkotabi, MahdiAvestimehr, Salman
발행일
2023
유형
Article
저널명
Transactions on Machine Learning Research (TMLR)
2023