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Martin T Hagan

Showing results (1-10 of 5) with videos related to

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IEEE Transactions on Neural Networks|February 7, 2007
Backpropagation algorithms for a broad class of dynamic networksOrlando De Jesús, Martin T Hagan
IEEE Transactions on Neural Networks and Learning Systems|May 9, 2014
Error surface of recurrent neural networksManh Cong Phan, Martin T Hagan
IEEE Transactions on Neural Networks|March 11, 2009
Spurious valleys in the error surface of recurrent networks--analysis and avoidanceJason Horn, Orlando De Jesús, Martin T Hagan
The Journal of Chemical Physics|April 15, 2006
Molecular dynamics investigations of the dissociation of SiO2 on an ab initio potential energy surface obtained using neural network methodsParas M Agrawal, Lionel M Raff, Martin T Hagan, et al.
The Journal of Chemical Physics|December 27, 2005
Prediction of molecular-dynamics simulation results using feedforward neural networks: reaction of a C2 dimer with an activated diamond (100) surfaceParas M Agrawal, Abdul N A Samadh, Lionel M Raff, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
IEEE Transactions on Neural Networks|February 7, 2007
Backpropagation algorithms for a broad class of dynamic networksOrlando De Jesús, Martin T Hagan
IEEE Transactions on Neural Networks and Learning Systems|May 9, 2014
Error surface of recurrent neural networksManh Cong Phan, Martin T Hagan
IEEE Transactions on Neural Networks|March 11, 2009
Spurious valleys in the error surface of recurrent networks--analysis and avoidanceJason Horn, Orlando De Jesús, Martin T Hagan
The Journal of Chemical Physics|April 15, 2006
Molecular dynamics investigations of the dissociation of SiO2 on an ab initio potential energy surface obtained using neural network methodsParas M Agrawal, Lionel M Raff, Martin T Hagan, et al.
The Journal of Chemical Physics|December 27, 2005
Prediction of molecular-dynamics simulation results using feedforward neural networks: reaction of a C2 dimer with an activated diamond (100) surfaceParas M Agrawal, Abdul N A Samadh, Lionel M Raff, et al.
Pageof 1