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Reinforcing Neural Network Stability with Attractor Dynamics
Author(s) -
Hanming Deng,
Hua Yang,
Tao Song,
Zhengui Xue,
Ruhui Ma,
Neil M. Robertson,
Haibing Guan
Publication year - 2020
Publication title -
proceedings of the aaai conference on artificial intelligence
Language(s) - English
Resource type - Journals
eISSN - 2374-3468
pISSN - 2159-5399
DOI - 10.1609/aaai.v34i04.5787
Subject(s) - attractor , stability (learning theory) , generalization , representation (politics) , computer science , artificial neural network , state space , artificial intelligence , machine learning , mathematics , statistics , mathematical analysis , politics , law , political science
Recent approaches interpret deep neural works (DNNs) as dynamical systems, drawing the connection between stability in forward propagation and generalization of DNNs. In this paper, we take a step further to be the first to reinforce this stability of DNNs without changing their original structure and verify the impact of the reinforced stability on the network representation from various aspects. More specifically, we reinforce stability by modeling attractor dynamics of a DNN and propose relu-max attractor network (RMAN), a light-weight module readily to be deployed on state-of-the-art ResNet-like networks. RMAN is only needed during training so as to modify a ResNet's attractor dynamics by minimizing an energy function together with the loss of the original learning task. Through intensive experiments, we show that RMAN-modified attractor dynamics bring a more structured representation space to ResNet and its variants, and more importantly improve the generalization ability of ResNet-like networks in supervised tasks due to reinforced stability.

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