On the insufficiency of existing momentum schemes for Stochastic Optimization

2018 INFORMATION THEORY AND APPLICATIONS WORKSHOP (ITA)(2018)

引用 118|浏览64
暂无评分
摘要
Momentum based stochastic gradient methods such as heavy ball (HB) and Nesterov's accelerated gradient descent (NAG) method are widely used in practice for training deep networks and other supervised learning models, as they often provide significant improvements over stochastic gradient descent (SGD). Rigorously speaking, "fast gradient" methods have provable improvements over gradient descent only for the deterministic case, where the gradients are exact. In the stochastic case, the popular explanations for their wide applicability is that when these fast gradient methods are applied in the stochastic case, they partially mimic their exact gradient counterparts, resulting in some practical gain. This work provides a counterpoint to this belief by proving that there exist simple problem instances where these methods cannot outperform SGD despite the best setting of its parameters. These negative problem instances are, in an informal sense, generic; they do not look like carefully constructed pathological instances. These results suggest (along with empirical evidence) that HB or NAG's practical performance gains are a by-product of mini-batching. Furthermore, this work provides a viable (and provable) alternative, which, on the same set of problem instances, significantly improves over HB, NAG, and SGD's performance. This algorithm, referred to as Accelerated Stochastic Gradient Descent (ASGD), is a simple to implement stochastic algorithm, based on a relatively less popular variant of Nesterov's Acceleration. Extensive empirical results in this paper show that ASGD has performance gains over HB, NAG, and SGD.
更多
查看译文
关键词
momentum schemes,stochastic optimization,stochastic gradient methods,heavy ball,deep networks,supervised learning models,stochastic gradient descent,provable improvements,deterministic case,stochastic case,fast gradient methods,exact gradient counterparts,practical gain,simple problem instances,negative problem instances,carefully constructed pathological instances,SGD's performance,stochastic algorithm,NAG practical performance gains,HB,Nesterov accelerated gradient descent method,ASGD
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要