Title of article :
Efficient recurrent neural network training incorporating
a priori knowledge
Author/Authors :
K.P. Dimopoulos ، نويسنده , , C. Kambhampati، نويسنده , , David R. Craddock، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2000
Abstract :
A new technique for efficient training of Hopfield network models using iterative training algorithms is described
and demonstrated. This technique is useful for producing stable Hopfield networks, using recently derived results
concerning stability conditions for the Hopfield network. Since the modified training algorithm ensures the stability
of the network, no off-line verification of stability is required. This technique can be applied to Hopfield networks
of any size, and therefore is tested for three different randomly selected sizes. Additionally, the advantage of
utilising a priori information about the plant is also tested and the results are compared with those cases where
no such information is available. This information is used to determine critical dynamic properties of the network
model, necessary for the network’s ability to generalise. In all tests, the networks are trained with modified genetic
algorithms, using different initial starting points for the algorithm. ©2000 IMACS/Elsevier Science B.V. All rights
reserved.
Keywords :
A priori information , Hopfield networks , stability , Genetic algorithms
Journal title :
Mathematics and Computers in Simulation
Journal title :
Mathematics and Computers in Simulation