A Learning Algorithm for Continually Running Fully Recurrent Neural Networks 论文
1989Neural Computation引用 4437
Neural Networks and ApplicationsNeural Networks and Reservoir ComputingCognitive Science and Education Research
摘要
The exact form of a gradient-following learning algorithm for completely recurrent networks running in continually sampled time is derived and used as the basis for practical algorithms for temporal supervised learning tasks. These algorithms have (1) the advantage that they do not require a precisely defined training interval, operating while the network runs; and (2) the disadvantage that they require nonlocal communication in the network being trained and are computationally expensive. These algorithms allow networks having recurrent connections to learn complex tasks that require the retention of information over time periods having either fixed or indefinite length.