初始化
黑森矩阵
规范化(社会学)
计算机科学
超参数
人工智能
透视图(图形)
机器学习
启发式
深度学习
剪裁(形态学)
曲率
人工神经网络
数学
应用数学
人类学
操作系统
语言学
哲学
社会学
程序设计语言
几何学
作者
Justin Gilmer,Behrooz Ghorbani,Ankush Garg,Sneha Kudugunta,Behnam Neyshabur,David E. Cardoze,George E. Dahl,Zachary Nado,Orhan Fırat
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:5
标识
DOI:10.48550/arxiv.2110.04369
摘要
In this work, we study the evolution of the loss Hessian across many classification tasks in order to understand the effect the curvature of the loss has on the training dynamics. Whereas prior work has focused on how different learning rates affect the loss Hessian observed during training, we also analyze the effects of model initialization, architectural choices, and common training heuristics such as gradient clipping and learning rate warmup. Our results demonstrate that successful model and hyperparameter choices allow the early optimization trajectory to either avoid -- or navigate out of -- regions of high curvature and into flatter regions that tolerate a higher learning rate. Our results suggest a unifying perspective on how disparate mitigation strategies for training instability ultimately address the same underlying failure mode of neural network optimization, namely poor conditioning. Inspired by the conditioning perspective, we show that learning rate warmup can improve training stability just as much as batch normalization, layer normalization, MetaInit, GradInit, and Fixup initialization.
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