Many constructive learning algorithms have been proposed to find an appropriate network structure for a classification problem automatically. Constructive learning algorithms have drawbacks especially when used for complex tasks and modular approaches have been devised to solve these drawbacks. At the same time, parallel training for neural networks with fixed configurations has also been proposed to accelerate the training process. A new approach that combines advantages of constructive learning and parallelism, output partitioning, is presented in this paper. Classification error is used to guide the proposed incremental-partitioning algorithm, which divides the original dataset into several smaller sub-datasets with distinct classes. Eac...
If neural networks are to be used on a large scale, they have to be implemented in hardware. However...
This paper presents an easy to use, constructive training algorithm for Probabilistic Neural Network...
Hierarchical Incremental Class Learning (HICL) is a new task decomposition method that addresses the...
Abstract Many constructive learning algorithms have been proposed to find an appropriate network str...
In order to find an appropriate architecture for a large-scale real-world application automatically ...
Artificial neural networks (ANN) have been a powerful data mining tool with no prior data assumption...
Abstract-We observe the effects of a variety of splitting strategies for partitioning the input doma...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
One connectionist approach to the classification problem, which has gained popularity in recent year...
The major drawback of a non-modular neural network classifier is its inability to cope with the incr...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Task Decomposition with Pattern Distributor (PD) is a new task decomposition method for multilayered...
Using a multi—layer perceptron as an implementation of a classifier can introduce some difficulties ...
Abstract—A novel modular perceptron network (MPN) and divide-and-conquer learning (DCL) schemes for ...
If neural networks are to be used on a large scale, they have to be implemented in hardware. However...
This paper presents an easy to use, constructive training algorithm for Probabilistic Neural Network...
Hierarchical Incremental Class Learning (HICL) is a new task decomposition method that addresses the...
Abstract Many constructive learning algorithms have been proposed to find an appropriate network str...
In order to find an appropriate architecture for a large-scale real-world application automatically ...
Artificial neural networks (ANN) have been a powerful data mining tool with no prior data assumption...
Abstract-We observe the effects of a variety of splitting strategies for partitioning the input doma...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
One connectionist approach to the classification problem, which has gained popularity in recent year...
The major drawback of a non-modular neural network classifier is its inability to cope with the incr...
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Task Decomposition with Pattern Distributor (PD) is a new task decomposition method for multilayered...
Using a multi—layer perceptron as an implementation of a classifier can introduce some difficulties ...
Abstract—A novel modular perceptron network (MPN) and divide-and-conquer learning (DCL) schemes for ...
If neural networks are to be used on a large scale, they have to be implemented in hardware. However...
This paper presents an easy to use, constructive training algorithm for Probabilistic Neural Network...
Hierarchical Incremental Class Learning (HICL) is a new task decomposition method that addresses the...