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人工智能学科交叉讲座系列第【16】期:Solving the Vanishing/Exploding Gradients Problem via High-Dimensional Probability Theory

信息来源:     发布时间:2023-09-27     浏览量:




报告人:路遥

            博士后

                北京大学|新甫京·娱乐娱城平台网址

主持人:林宙辰 教授

            北京大学|新甫京·娱乐娱城平台网址智能学院|新甫京·娱乐娱城平台网址、人工智能研究院

时   间:2023/10/12  10:00 - 11:00

地   址:北京大学|新甫京·娱乐娱城平台网址昌平校区教学楼115教室 / 北京大学|新甫京·娱乐娱城平台网址燕园校区理科二号楼2736

        腾讯会议:440-684-733


                


 报告题目:Solving the Vanishing/Exploding   Gradients Problem via   High-Dimensional Probability Theory


 报告摘要:   

The problem of vanishing and exploding gradients has been a long-standing obstacle that hinders the effective training of neural networks. Despite various tricks and techniques that have been employed to alleviate the problem in practice, there still lacks satisfactory theories or provable solutions. In this paper, we address the problem from the perspective of high-dimensional probability theory. We provide a rigorous result that shows, under mild conditions, how the vanishing/exploding gradients problem disappears with high probability if the neural networks have sufficient width. Our main idea is to constrain both forward and backward signal propagation in a nonlinear neural network through a new class of activation functions,namely Gaussian-Poincare normalized functions, and orthogonal weight matrices. Experiments on both synthetic and real-world data validate our theory and confirm its effectiveness on very deep neural networks when applied in practice.


报告人简介:   

路遥现为北京大学|新甫京·娱乐娱城平台网址心理与认知科学学院|新甫京·娱乐娱城平台网址博士后,于2021年在澳大利亚国立大学|新甫京·娱乐娱城平台网址获得计算机博士学位,研究方向是神经网络的学习算法。


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