Yuye He, Sebastien Blandin, et al.
ICDMW 2014
This paper presents a simple yet principled approach to boosting the robustness of the residual network (ResNet) that is motivated by a dynamical systems perspective. Namely, a deep neural network can be interpreted using a partial differential equation, which naturally inspires us to characterize ResNet based on an explicit Euler method. This consequently allows us to exploit the step factor h in the Euler method to control the robustness of ResNet in both its training and generalization. In particular, we prove that a small step factor h can benefit its training and generalization robustness during backpropagation and forward propagation, respectively. Empirical evaluation on real-world datasets corroborates our analytical findings that a small h can indeed improve both its training and generalization robustness.
Yuye He, Sebastien Blandin, et al.
ICDMW 2014
Truc Viet Le, Baoyang Song, et al.
ICC 2017
Phani Raj Lolakapuri, Umang Bhaskar, et al.
IJCAI 2019
Wei Shen, Laura Wynter
FUSION 2012