Article
Recurrent neural network for non-smooth convex optimization problems with application to the identification of genetic regulatory networks.
IEEE Transactions on Neural Networks (impact factor:
2.95).
03/2011;
22(5):714-26.
DOI:10.1109/TNN.2011.2109735
pp.714-26
Source: PubMed
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Keywords
Clarke's generalized gradients
convex inequality
dynamics
existing neural network models
genetic regulatory networks
inequality constraints
Lagrangian saddle-point theorem
larger class
linear equality constraints
neural network
non-smooth convex optimization problem
non-smooth optimization problems
objective function
original optimization problem
proposed approach
proposed neural network
recurrent neural network
simulation results
weak conditions