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Neural Networks 2020 : Special Issue on Deep Neural Network Representation and Generative Adversarial Learning

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Link: https://www.journals.elsevier.com/neural-networks/call-for-papers/special-issue-on-deep-neural-network-representation
 
When N/A
Where N/A
Submission Deadline Sep 30, 2019
Notification Due Dec 31, 2019
Final Version Due Apr 30, 2020
 

Call For Papers

Special Issue on Deep Neural Network Representation and Generative Adversarial Learning

This special issue on Deep Neural Network Representation and Generative Adversarial Learning invites researchers and practitioners to present novel contributions addressing theoretical and practical aspects of deep representation and generative adversarial learning. The special issue will feature a collection of high quality theoretical articles for improving the learning process and the generalization of generative neural networks. State-of-the-art applications based on deep generative adversarial networks are also very welcome.
Important Dates:

30 September 2019 - Submission deadline

31 December 2019 - First decision notification

28 February 2020 - Revised version deadline

30 April 2020 - Final decision notification

July 2020 - Publication

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