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Wang et al., 2020 - Google Patents

PID controller-based stochastic optimization acceleration for deep neural networks

Wang et al., 2020

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Document ID
15088399508766802670
Author
Wang H
Luo Y
An W
Sun Q
Xu J
Zhang L
Publication year
Publication venue
IEEE transactions on neural networks and learning systems

External Links

Snippet

Deep neural networks (DNNs) are widely used and demonstrated their power in many applications, such as computer vision and pattern recognition. However, the training of these networks can be time consuming. Such a problem could be alleviated by using efficient …
Continue reading at csjunxu.github.io (PDF) (other versions)

Classifications

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