Publication | Closed Access
Recurrent Backpropagation and the Dynamical Approach to Adaptive Neural Computation
157
Citations
12
References
1989
Year
Artificial IntelligenceError GradientsNonlinear System IdentificationEvolving Neural NetworkEngineeringMachine LearningComputational NeuroscienceSequential LearningPopular Learning AlgorithmSystems EngineeringError BackpropagationComputer ScienceAdaptive AlgorithmLearning ControlBrain-like ComputingRecurrent Neural NetworkRecurrent BackpropagationNonlinear Time Series
Error backpropagation in feedforward neural network models is a popular learning algorithm that has its roots in nonlinear estimation and optimization. It is being used routinely to calculate error gradients in nonlinear systems with hundreds of thousands of parameters. However, the classical architecture for backpropagation has severe restrictions. The extension of backpropagation to networks with recurrent connections will be reviewed. It is now possible to efficiently compute the error gradients for networks that have temporal dynamics, which opens applications to a host of problems in systems identification and control.
| Year | Citations | |
|---|---|---|
Page 1
Page 1