A robust locally adaptive learning algorithm is developed via two enhancements of the Resilient Propagation (RPROP) method. Remaining drawbacks of the gradient-based approach are addressed by hybridization with gradient-independent Local Search. Finally, a global optimization method based on recursion of the hybrid is constructed, making use of tabu neighborhoods to accelerate the search for minima through diversification. Enhanced RPROP is shown to be faster and more accurate than the standard RPROP in solving classification tasks based on natural data sets taken from the UCI repository of machine learning databases. Furthermore, the use of Local Search is shown to improve Enhanced RPROP by solving the same classification tasks as part of ...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Abstract—This paper proposes a hybrid optimization algorithm which combines the efforts of local sea...
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
In this paper, a new globally convergent modification of the Resilient Propagation-Rprop algorithm i...
Since the introduction of the backpropagation algorithm as a learning rule for neural networks much ...
Considering computational algorithms available in the literature, associated with supervised learnin...
: This paper describes two algorithms based on cooperative evolution of internal hidden network repr...
In this study we investigated a hybrid model based on the Discrete Gradient method and an evolutiona...
Supervised learning algorithms, often used to find the I/O relationship in data, have the tendency t...
In this paper we investigate different variants for hybrid models using the Discrete Gradient method...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
In this paper, a new learning algorithm, RPROP, is proposed. To overcome the inherent disadvantages ...
In recent decades, researches on optimizing the parameter of the artificial neural network (ANN) mod...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Abstract—This paper proposes a hybrid optimization algorithm which combines the efforts of local sea...
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
In this paper, a new globally convergent modification of the Resilient Propagation-Rprop algorithm i...
Since the introduction of the backpropagation algorithm as a learning rule for neural networks much ...
Considering computational algorithms available in the literature, associated with supervised learnin...
: This paper describes two algorithms based on cooperative evolution of internal hidden network repr...
In this study we investigated a hybrid model based on the Discrete Gradient method and an evolutiona...
Supervised learning algorithms, often used to find the I/O relationship in data, have the tendency t...
In this paper we investigate different variants for hybrid models using the Discrete Gradient method...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
In this paper, a new learning algorithm, RPROP, is proposed. To overcome the inherent disadvantages ...
In recent decades, researches on optimizing the parameter of the artificial neural network (ANN) mod...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Abstract—This paper proposes a hybrid optimization algorithm which combines the efforts of local sea...