A high automation degree is one of the most important features of data driven modeling tools and it should be taken into consideration in classification systems design. In this regard, constructive training algorithms are essential to improve the automation degree of a modeling system. Among neuro-fuzzy classifiers, Simpson’s Min-Max networks have the advantage to be trained in a constructive way. The use of the hyperbox, as a frame on which different membership functions can be tailored, makes the Min-Max model a flexible tool. However, the original training algorithm evidences some serious drawbacks, together with a low automation degree. In order to overcome these inconveniences, in this paper two new learning algorithms for fuzzy Min-Ma...
Over the last few decades, pattern classification has become one of the most important fields of art...
Over the last few decades, pattern classification has become one of the most important fields of art...
In this paper, a boosted Fuzzy Min-Max Neural Network (FMM) is proposed. While FMM is a learning alg...
Although the most important feature of a classifier is its generalization capability, the effectiven...
A new neuro-fuzzy classifier, inspired by the min-max neural model, is presented. The classification...
This paper presents a new neuro-fuzzy classifier, inspired by the Simpson's (1992, 1993) min-max mod...
Classification can be considered as a basic data driven modeling problem, which allows us to define ...
In the present paper, a new algorithm to train Min-Max neural models is proposed. It is based on the...
In this thesis we studied two of the most promising neural network classifiers called as fuzzy min-m...
This paper proposes a method to accelerate the training process of general fuzzy min-max neural netw...
An improved Fuzzy Min-Max (FMM) neural network with a K-nearest hyperbox expansion rule is proposed ...
An improved Fuzzy Min-Max (FMM) neural network with a K-nearest hyperbox expansion rule is proposed ...
The fuzzy min-max (FMM) neural network is one of the most powerful neural networks that combines neu...
At present, pattern classification is one of the most important aspects of establishing machine inte...
This paper describes a novel adaptive network, which agglomerates a procedure based on the fuzzy min...
Over the last few decades, pattern classification has become one of the most important fields of art...
Over the last few decades, pattern classification has become one of the most important fields of art...
In this paper, a boosted Fuzzy Min-Max Neural Network (FMM) is proposed. While FMM is a learning alg...
Although the most important feature of a classifier is its generalization capability, the effectiven...
A new neuro-fuzzy classifier, inspired by the min-max neural model, is presented. The classification...
This paper presents a new neuro-fuzzy classifier, inspired by the Simpson's (1992, 1993) min-max mod...
Classification can be considered as a basic data driven modeling problem, which allows us to define ...
In the present paper, a new algorithm to train Min-Max neural models is proposed. It is based on the...
In this thesis we studied two of the most promising neural network classifiers called as fuzzy min-m...
This paper proposes a method to accelerate the training process of general fuzzy min-max neural netw...
An improved Fuzzy Min-Max (FMM) neural network with a K-nearest hyperbox expansion rule is proposed ...
An improved Fuzzy Min-Max (FMM) neural network with a K-nearest hyperbox expansion rule is proposed ...
The fuzzy min-max (FMM) neural network is one of the most powerful neural networks that combines neu...
At present, pattern classification is one of the most important aspects of establishing machine inte...
This paper describes a novel adaptive network, which agglomerates a procedure based on the fuzzy min...
Over the last few decades, pattern classification has become one of the most important fields of art...
Over the last few decades, pattern classification has become one of the most important fields of art...
In this paper, a boosted Fuzzy Min-Max Neural Network (FMM) is proposed. While FMM is a learning alg...