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Multicomposite nonconvex optimization for training deep neural networks
Ying Cui, Ziyu He, Jong Shi Pang
Industrial and Systems Engineering
Research output
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Contribution to journal
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Article
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peer-review
12
Scopus citations
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Mathematics
Nonconvex Optimization
100%
Training
89%
Neural Networks
79%
Semismooth Newton Method
58%
Arbitrary
43%
Stationary Solutions
42%
Optimization Problem
30%
Gradient Projection
29%
Non-differentiability
29%
Training Samples
28%
Non-convexity
27%
Activation Function
24%
Enhancement
24%
Majorization
24%
Penalization
24%
Framework
24%
Stationarity
22%
MATLAB
21%
Neuron
21%
Computational Cost
21%
Knowledge
16%
Costs
15%
Numerical Results
13%
Demonstrate
12%
Engineering & Materials Science
Deep neural networks
81%
Newton-Raphson method
61%
Neurons
25%
Chemical activation
25%
MATLAB
22%
Costs
10%