In this paper we propose a classification method based on a special class of feed-forward neural network, namely product-unit neural networks, and on a dynamic version of a hybrid evolutionary neural network algorithm. The method combines an evolutionary algorithm, a clustering process, and a local search procedure, where the clustering process and the local search are only applied at specific stages of the evolutionary process. Our results with the product-unit models and the evolutionary approach show a very interesting performance in terms of classification accuracy, yielding a state-of-the-art performance
We propose a multilogistic regression model based on the combination of linear and product-unit mode...
This paper introduces a methodology that improves the accuracy of a two-stage algorithm in evolutio...
Considering computational algorithms available in the literature, associated with supervised learnin...
In this paper we propose a classification method based on a special class of feed-forward neural net...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
This paper sums up the main contributions of the PhD Dissertation with an homonymous name to the cur...
This paper presents a new method for regression based on the evolution of a type of feed-forward neu...
This paper proposes a hybrid neural network model using a possible combination of different transfer...
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
Considering computational algorithms available in the literature, associated with supervised learnin...
This paper combines feature selection methods with a two-stage evolutionary classifier based on prod...
We propose a logistic regression method based on the hybridation of a linear model and product-unit ...
Abstract: Classification is important in data mining and machine learning. In this paper, a classifi...
This work presents a new approach for multi-class pattern recognition based on the hybridization of ...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
We propose a multilogistic regression model based on the combination of linear and product-unit mode...
This paper introduces a methodology that improves the accuracy of a two-stage algorithm in evolutio...
Considering computational algorithms available in the literature, associated with supervised learnin...
In this paper we propose a classification method based on a special class of feed-forward neural net...
In this paper we present a hybrid evolutionary algorithm to solve nonlinear regression problems. Alt...
This paper sums up the main contributions of the PhD Dissertation with an homonymous name to the cur...
This paper presents a new method for regression based on the evolution of a type of feed-forward neu...
This paper proposes a hybrid neural network model using a possible combination of different transfer...
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
Considering computational algorithms available in the literature, associated with supervised learnin...
This paper combines feature selection methods with a two-stage evolutionary classifier based on prod...
We propose a logistic regression method based on the hybridation of a linear model and product-unit ...
Abstract: Classification is important in data mining and machine learning. In this paper, a classifi...
This work presents a new approach for multi-class pattern recognition based on the hybridization of ...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
We propose a multilogistic regression model based on the combination of linear and product-unit mode...
This paper introduces a methodology that improves the accuracy of a two-stage algorithm in evolutio...
Considering computational algorithms available in the literature, associated with supervised learnin...