作者
Thomas George, César Laurent, Xavier Bouthillier, Nicolas Ballas, Pascal Vincent
发表日期
2018
期刊
Advances in Neural Information Processing Systems
卷号
31
简介
Optimization algorithms that leverage gradient covariance information, such as variants of natural gradient descent (Amari, 1998), offer the prospect of yielding more effective descent directions. For models with many parameters, the covari-ance matrix they are based on becomes gigantic, making them inapplicable in their original form. This has motivated research into both simple diagonal approxima-tions and more sophisticated factored approximations such as KFAC (Heskes, 2000; Martens & Grosse, 2015; Grosse & Martens, 2016). In the present work we draw inspiration from both to propose a novel approximation that is provably better than KFAC and amendable to cheap partial updates. It consists in tracking a diagonal variance, not in parameter coordinates, but in a Kronecker-factored eigenbasis, in which the diagonal approximation is likely to be more effective. Experiments show improvements over KFAC in optimization speed for several deep network architectures.
引用总数
2018201920202021202220232024192122214118
学术搜索中的文章
T George, C Laurent, X Bouthillier, N Ballas, P Vincent - Advances in Neural Information Processing Systems, 2018