Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification problems. However, the time that Fuzzy ARTMAP takes to converge to a solution increases rapidly as the number of patterns used for training is increased. In this paper we examine the time Fuzzy ARTMAP takes to converge to a solution and we propose a coarse grain parallelization technique, based on a pipeline approach, to speed-up the training process. In particular, we have parallelized Fuzzy ARTMAP without the match-tracking mechanism. We provide a series of theorems and associated proofs that show the characteristics of Fuzzy ARTMAP\u27s, without matchtracking, parallel implementation. Results run on a BEOWULF cluster with three large datab...
In this paper we introduce a procedure that identifies a fixed order of training pattern presentatio...
In the process of learning a pattern I, the Fuzzy ARTMAP algorithm templates (i.e., the weight vecto...
In this paper, the impact on fuzzy ARTMAP performance of decisions taken for batch supervised learni...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between ...
In this paper we develop techniques that are suitable for the parallel implementation of Fuzzy ARTMA...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between r...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
One of the properties of FAM, which is a mixed blessing, is its capacity to produce new neurons (tem...
Abstract—One of the properties of FAM, which can be both an asset and a liability, is its capacity t...
A novel mapping of the Fuzzy ART algorithm onto a neural network architecture is described. The arch...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
The Fuzzy–ARTMAP (FAM) algorithm has been proven to be one of the premier neural network architectur...
In this paper we introduce a procedure that identifies a fixed order of training pattern presentatio...
In the process of learning a pattern I, the Fuzzy ARTMAP algorithm templates (i.e., the weight vecto...
In this paper, the impact on fuzzy ARTMAP performance of decisions taken for batch supervised learni...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between ...
In this paper we develop techniques that are suitable for the parallel implementation of Fuzzy ARTMA...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between r...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
One of the properties of FAM, which is a mixed blessing, is its capacity to produce new neurons (tem...
Abstract—One of the properties of FAM, which can be both an asset and a liability, is its capacity t...
A novel mapping of the Fuzzy ART algorithm onto a neural network architecture is described. The arch...
One of the properties of FAM, which can be both an asset and a liability, is its capacity to produce...
The Fuzzy–ARTMAP (FAM) algorithm has been proven to be one of the premier neural network architectur...
In this paper we introduce a procedure that identifies a fixed order of training pattern presentatio...
In the process of learning a pattern I, the Fuzzy ARTMAP algorithm templates (i.e., the weight vecto...
In this paper, the impact on fuzzy ARTMAP performance of decisions taken for batch supervised learni...