Recurrent Sigma-Pi-linked back-propagation network
作者:T. W. S. Chow, Gou Fei
摘要
A recurrent Sigma-Pi-linked back-propagation neural network is presented. The increase of input information is achieved by the introduction of “higher-order≓ terms, that are generated through functional-linked input nodes. Based on the Sigma-Pi-linked model, this network is capable of approximating more complex function at a much faster convergence rate. This recurrent network is intensively tested by applying to different types of linear and nonlinear time-series. Comparing to the conventional feedforward BP network, the training convergence rate is substantially faster. Results indicate that the functional approximation property of this recurrent network is remarkable for time-series applications.
论文关键词:Neural Network, Artificial Intelligence, Complex System, Nonlinear Dynamics, Convergence Rate
论文评审过程:
论文官网地址:https://doi.org/10.1007/BF02310935