Fuzzy-rough cognitive networks (FRCNs) are recurrent neural networks (RNNs) intended for structured classification purposes in which the problem is described by an explicit set of features. The advantage of this granular neural system relies on its transparency and simplicity while being competitive to state-of-the-art classifiers. Despite their relative empirical success in terms of prediction rates, there are limited studies on FRCNs' dynamic properties and how their building blocks contribute to the algorithm's performance. In this article, we theoretically study these issues and conclude that boundary and negative neurons always converge to a unique fixed-point attractor. Moreover, we demonstrate that negative neurons have no impact on ...
We introduce a robust granular neural network (RGNN) model based on the multilayer perceptron using ...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
For the sake of measuring fuzzy uncertainty and rough uncertainty of real datasets, the fuzzy rough ...
Fuzzy-rough cognitive networks (FRCNs) are interpretable recurrent neural networks, primarily design...
Fuzzy-Rough Cognitive Networks (FRCNs) are neural networks that use rough information granules with ...
AbstractWe introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer per...
AbstractWe introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer per...
We introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer perceptron ...
A novel fuzzy rough granular neural network (NFRGNN) based on the multilayer perceptron using backpr...
This book provides a uniform framework describing how fuzzy rough granular neural network technologi...
A novel fuzzy rough granular neural network (NFRGNN) based on the multilayer perceptron using backpr...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
Abstract. A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this p...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
We introduce a robust granular neural network (RGNN) model based on the multilayer perceptron using ...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
For the sake of measuring fuzzy uncertainty and rough uncertainty of real datasets, the fuzzy rough ...
Fuzzy-rough cognitive networks (FRCNs) are interpretable recurrent neural networks, primarily design...
Fuzzy-Rough Cognitive Networks (FRCNs) are neural networks that use rough information granules with ...
AbstractWe introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer per...
AbstractWe introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer per...
We introduce a fuzzy rough granular neural network (FRGNN) model based on the multilayer perceptron ...
A novel fuzzy rough granular neural network (NFRGNN) based on the multilayer perceptron using backpr...
This book provides a uniform framework describing how fuzzy rough granular neural network technologi...
A novel fuzzy rough granular neural network (NFRGNN) based on the multilayer perceptron using backpr...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
This paper presents a methodological approach for developing image classifiers that work by exploiti...
Abstract. A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this p...
This paper proposes a classifier that uses fuzzy rough set theory to improve the Fuzzy Nearest Neigh...
We introduce a robust granular neural network (RGNN) model based on the multilayer perceptron using ...
A new fuzzy-rough nearest neighbour (FRNN) classification algorithm is presented in this paper, as a...
For the sake of measuring fuzzy uncertainty and rough uncertainty of real datasets, the fuzzy rough ...