Changnian Han, Peng Zhang, et al.
Journal of Computational Physics
Momentum method has been used extensively in optimizers for deep learning. Recent studies show that distributed training through K-step averaging has many nice properties. We propose a momentum method for such model averaging approaches. At each individual learner level traditional stochastic gradient is applied. At the meta-level (global learner level), one momentum term is applied and we call it block momentum. We analyze the convergence and scaling properties of such momentum methods. Our experimental results show that block momentum not only accelerates training, but also achieves better results.
Changnian Han, Peng Zhang, et al.
Journal of Computational Physics
Guojing Cong, David A. Bader
Journal of Parallel and Distributed Computing
Onkar Bhardwaj, Guojing Cong
MLHPC 2016
David A. Bader, Guojing Cong
Journal of Parallel and Distributed Computing