Learning in the Recurrent Random Neural Network 论文
1993Neural Computation引用 361
Neural Networks and ApplicationsControl Systems and IdentificationFuzzy Logic and Control Systems
摘要
The capacity to learn from examples is one of the most desirable features of neural network models. We present a learning algorithm for the recurrent random network model (Gelenbe 1989, 1990) using gradient descent of a quadratic error function. The analytical properties of the model lead to a "backpropagation" type algorithm that requires the solution of a system of n linear and n nonlinear equations each time the n-neuron network "learns" a new input-output pair.