MLDCLGOCOct 6, 2022

Scaling up Stochastic Gradient Descent for Non-convex Optimisation

arXiv:2210.02882v14 citationsh-index: 29
Originality Incremental advance
AI Analysis

This work addresses scalability bottlenecks in SGD for non-convex problems, benefiting researchers and practitioners in machine learning with large datasets, though it is incremental as it builds on existing SGD methods.

The paper tackles the problem of scaling stochastic gradient descent for non-convex optimization by proposing DPSGD, a unified distributed and parallel implementation that combines asynchronous distribution and lock-free parallelism to balance computation and communication, achieving an asymptotic convergence rate of O(1/√T) and demonstrating empirical gains in stochastic variational inference and deep reinforcement learning tasks.

Stochastic gradient descent (SGD) is a widely adopted iterative method for optimizing differentiable objective functions. In this paper, we propose and discuss a novel approach to scale up SGD in applications involving non-convex functions and large datasets. We address the bottleneck problem arising when using both shared and distributed memory. Typically, the former is bounded by limited computation resources and bandwidth whereas the latter suffers from communication overheads. We propose a unified distributed and parallel implementation of SGD (named DPSGD) that relies on both asynchronous distribution and lock-free parallelism. By combining two strategies into a unified framework, DPSGD is able to strike a better trade-off between local computation and communication. The convergence properties of DPSGD are studied for non-convex problems such as those arising in statistical modelling and machine learning. Our theoretical analysis shows that DPSGD leads to speed-up with respect to the number of cores and number of workers while guaranteeing an asymptotic convergence rate of $O(1/\sqrt{T})$ given that the number of cores is bounded by $T^{1/4}$ and the number of workers is bounded by $T^{1/2}$ where $T$ is the number of iterations. The potential gains that can be achieved by DPSGD are demonstrated empirically on a stochastic variational inference problem (Latent Dirichlet Allocation) and on a deep reinforcement learning (DRL) problem (advantage actor critic - A2C) resulting in two algorithms: DPSVI and HSA2C. Empirical results validate our theoretical findings. Comparative studies are conducted to show the performance of the proposed DPSGD against the state-of-the-art DRL algorithms.

Foundations

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