The Fuzzy ARTMAP algorithm has been proven to be one of the premier neural network architectures for classification problems. One of the properties of Fuzzy ARTMAP, which can be both an asset and a liability, is its capacity to produce new nodes (templates) on demand to represent classification categories. This property allows Fuzzy ARTMAP to automatically adapt to the database without having to a priori specify its network size. On the other hand, it has the undesirable side effect that large databases might produce a large network size (node proliferation) that can dramatically slow down the training speed of the algorithm. To address the slow convergence speed of Fuzzy ARTMAP for large database problems, we propose the use of space-filli...
In this paper we introduce a variation of the performance phase of Fuzzy ARTMAP which is called Fuzz...
Fuzzy ARTMAP (FAM) is currently considered to be one of the premier neural network architectures in ...
In this paper we present a clustering technique for fuzzy rules based on Hilbert Space-filling Curve...
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...
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...
Abstract—One of the properties of FAM, which can be both an asset and a liability, is its capacity t...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between r...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between ...
The Fuzzy–ARTMAP (FAM) algorithm has been proven to be one of the premier neural network architectur...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP (FAM) is one of the best neural network architectures in solving classification problem...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
We present a clustering technique for fuzzy rules based on Hilbert space-filling curves (SFC). SFC s...
In this paper we introduce a variation of the performance phase of Fuzzy ARTMAP which is called Fuzz...
Fuzzy ARTMAP (FAM) is currently considered to be one of the premier neural network architectures in ...
In this paper we present a clustering technique for fuzzy rules based on Hilbert Space-filling Curve...
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...
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...
Abstract—One of the properties of FAM, which can be both an asset and a liability, is its capacity t...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between r...
Fuzzy ARTMAP (FAM) is a neural network architecture that can establish the correct mapping between ...
The Fuzzy–ARTMAP (FAM) algorithm has been proven to be one of the premier neural network architectur...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
Fuzzy ARTMAP (FAM) is one of the best neural network architectures in solving classification problem...
Fuzzy ARTMAP neural networks have been proven to be good classifiers on a variety of classification ...
We present a clustering technique for fuzzy rules based on Hilbert space-filling curves (SFC). SFC s...
In this paper we introduce a variation of the performance phase of Fuzzy ARTMAP which is called Fuzz...
Fuzzy ARTMAP (FAM) is currently considered to be one of the premier neural network architectures in ...
In this paper we present a clustering technique for fuzzy rules based on Hilbert Space-filling Curve...