An improved algorithm has been devised for training a recurrent multilayer perceptron (RMLP) for optimal performance in predicting the behavior of a complex, dynamic, and noisy system multiple time steps into the future. [An RMLP is a computational neural network with self-feedback and cross-talk (both delayed by one time step) among neurons in hidden layers]. Like other neural-network-training algorithms, this algorithm adjusts network biases and synaptic-connection weights according to a gradient-descent rule. The distinguishing feature of this algorithm is a combination of global feedback (the use of predictions as well as the current output value in computing the gradient at each time step) and recursiveness. The recursive aspect of the...
This paper reviews different approaches to improving the real time recurrent learning (RTRL) algorit...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
Error backpropagation in feedforward neural network models is a popular learning algorithm that has ...
Recurrent neural networks have the potential to perform significantly better than the commonly used ...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
WOS: 000244970900005PubMed ID: 17385626The architecture and training procedure of a novel recurrent ...
A simulation approach is discussed for maneuverable aircraft motion as nonlinear controlled dynamica...
Trained recurrent networks are powerful tools for modeling dynamic neural computations. We present a...
The new modifications of multilayered neurak networks training algorithms in a generalized training ...
The authors describe a special type of dynamic neural network called the recursive neural network (R...
The error backpropagation multi-layer perceptron algorithm is revisited. This algorithm is used to t...
Over the past three years, our group has concentrated on the application of neural network methods t...
This letter proposes a novel predictive coding type neural network model, the predictive multiple sp...
“Recurrent neural networks (RNN) attract considerable interest in computational intelligence because...
Abstract-Due to the chaotic nature of multilayer perceptron training, training error usually fails t...
This paper reviews different approaches to improving the real time recurrent learning (RTRL) algorit...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
Error backpropagation in feedforward neural network models is a popular learning algorithm that has ...
Recurrent neural networks have the potential to perform significantly better than the commonly used ...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
WOS: 000244970900005PubMed ID: 17385626The architecture and training procedure of a novel recurrent ...
A simulation approach is discussed for maneuverable aircraft motion as nonlinear controlled dynamica...
Trained recurrent networks are powerful tools for modeling dynamic neural computations. We present a...
The new modifications of multilayered neurak networks training algorithms in a generalized training ...
The authors describe a special type of dynamic neural network called the recursive neural network (R...
The error backpropagation multi-layer perceptron algorithm is revisited. This algorithm is used to t...
Over the past three years, our group has concentrated on the application of neural network methods t...
This letter proposes a novel predictive coding type neural network model, the predictive multiple sp...
“Recurrent neural networks (RNN) attract considerable interest in computational intelligence because...
Abstract-Due to the chaotic nature of multilayer perceptron training, training error usually fails t...
This paper reviews different approaches to improving the real time recurrent learning (RTRL) algorit...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
Error backpropagation in feedforward neural network models is a popular learning algorithm that has ...