Backpropagation (BP) learning algorithm is the most widely supervised learning technique which is extensively applied in the training of multi-layer feed-forward neural networks. Many modifications that have been proposed to improve the performance of BP have focused on solving the ldquoflat spotrdquo problem to increase the convergence rate. However, their performance is limited due to the error overshooting problem. A novel approach called BP with two-phase magnified gradient function (2P-MGFPROP) was introduced to overcome the error overshooting problem and hence speed up the convergence rate of MGFPROP. In this paper, this approach is further enhanced by proposing to divide the learning process into multiple phases, and different fast l...
Gradient descent learning algorithms, namely Back Propagation (BP), can significantly increase the c...
The multilayer perceptron network has become one of the most used in the solution of a wide variety ...
This article focuses on gradient-based backpropagation algorithms that use either a common adaptive ...
Backpropagation (BP) learning algorithm is the most widely supervised learning technique which is ex...
The back-propagation algorithm calculates the weight changes of an artificial neural network, and a ...
The backpropagation (BP) algorithm is commonly used in many applications, including robotics, automa...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
Standard Backpropagation Algorithm (BP) is a widely used algorithm in training Neural Network that i...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
Artificial Neural Network (ANN) can be trained using back propagation (BP). It is the most widely us...
Back Propagation (BP) is commonly used algorithm that optimize the performance of network for traini...
In studies of neural networks, the Multilavered Feedforward Network is the most widely used network ...
BP algorithm is widely used in the field of business intelligence. Aimed at improving its relatively...
Some adaptations are proposed to the basic BP algorithm in order to provide in efficient method to n...
In this paper, a new learning algorithm, RPROP, is proposed. To overcome the inherent disadvantages ...
Gradient descent learning algorithms, namely Back Propagation (BP), can significantly increase the c...
The multilayer perceptron network has become one of the most used in the solution of a wide variety ...
This article focuses on gradient-based backpropagation algorithms that use either a common adaptive ...
Backpropagation (BP) learning algorithm is the most widely supervised learning technique which is ex...
The back-propagation algorithm calculates the weight changes of an artificial neural network, and a ...
The backpropagation (BP) algorithm is commonly used in many applications, including robotics, automa...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
Standard Backpropagation Algorithm (BP) is a widely used algorithm in training Neural Network that i...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
Artificial Neural Network (ANN) can be trained using back propagation (BP). It is the most widely us...
Back Propagation (BP) is commonly used algorithm that optimize the performance of network for traini...
In studies of neural networks, the Multilavered Feedforward Network is the most widely used network ...
BP algorithm is widely used in the field of business intelligence. Aimed at improving its relatively...
Some adaptations are proposed to the basic BP algorithm in order to provide in efficient method to n...
In this paper, a new learning algorithm, RPROP, is proposed. To overcome the inherent disadvantages ...
Gradient descent learning algorithms, namely Back Propagation (BP), can significantly increase the c...
The multilayer perceptron network has become one of the most used in the solution of a wide variety ...
This article focuses on gradient-based backpropagation algorithms that use either a common adaptive ...