Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
×
Any time
  • Any time
  • Past hour
  • Past 24 hours
  • Past week
  • Past month
  • Past year
Verbatim
Mar 4, 2018 · Abstract:Deep learning is formulated as a discrete-time optimal control problem. This allows one to characterize necessary conditions for ...
The developed methods are applied to train, in a rather principled way, neural networks with weights that are constrained to take values in a discrete set. We ...
The discrete-time method of successive approximations (MSA), which is based on the Pontryagin's maximum principle, is introduced for training neural ...
Deep learning is formulated as a discrete-time optimal control problem. This allows one to characterize necessary conditions for optimality and develop ...
Jun 2, 2018 · Deep learning is formulated as a discrete-time optimal control problem. This allows one to char- acterize necessary conditions for ...
Paper: Qianxiao Li and Shuji Hao. "An Optimal Control Approach to Deep Learning and Applications to Discrete-Weight Neural Networks". The 35th International ...
People also ask
“An Optimal Control Approach to Deep Learning and. Applications to Discrete-Weight Neural Networks”. A Full Statement and Sketch of the Proof of Theorem 1. In ...
A mean-field optimal control formulation of deep learning ... An Optimal Control Approach to Deep Learning and Applications to Discrete-Weight Neural Networks.
An optimal control approach to deep learning and applications to discrete-weight neural networks. In International Conference on Machine Learning, pages 2991–.