Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selected are Connection Weights (CW) and Garson’s Algorithm (GA). The ANNs-based classifiers that can provide such manipulation are Multi Layer Perceptron (MLP) and Evolving Fuzzy Neural Networks (EFuNNs). The goals for this work are firstly to identify which of the two classifiers works best with the filtered/ranked data, secondly is to test the FR method by using a selected dataset taken from the UCI Machine Learning Repository and in an online environment and lastly to attest the FR results by using another selected dataset taken from the same source and in the same environment. There are three groups of experiments conducted to accomplish these goals. The...
Neural networks are being used as tools for data analysis in a variety of applications. Neural netwo...
Artificial Neural Networks (ANNs) are weighted directed graphs of interconnected neurons widely empl...
Machine learning is a branch of artificial intelligence in which the system is made to learn from da...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selectedare Conne...
Today’s digital lifestyles are changing rapidly and already moving towards the Big Data phenomenon. ...
This work is interested in ISA methods that can manipulate synaptic weights namelyConnection Weights...
Artificial Neural Networks (ANNs) are often viewed as black box. This limits the comprehensive under...
In this dissertation we introduce methods for identifying input types and for determining an input r...
peer reviewedWe investigate several global variable importance measures derived from artificial neur...
Abstract — In this paper we use the maximization of Onicescu’s informational energy as a criteria fo...
Identifying and quantifying relevance of input features are particularly useful in data mining when ...
A genetic algorithm optimized artificial neural network GNW has been designed to rank features for t...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
Artificial neural networks (ANN) are designed to simulate the behavior of biological neural networks...
Neural networks are being used as tools for data analysis in a variety of applications. Neural netwo...
Artificial Neural Networks (ANNs) are weighted directed graphs of interconnected neurons widely empl...
Machine learning is a branch of artificial intelligence in which the system is made to learn from da...
Due to the ANNs architecture, the ISA methods that can manipulate synaptic weights selectedare Conne...
Today’s digital lifestyles are changing rapidly and already moving towards the Big Data phenomenon. ...
This work is interested in ISA methods that can manipulate synaptic weights namelyConnection Weights...
Artificial Neural Networks (ANNs) are often viewed as black box. This limits the comprehensive under...
In this dissertation we introduce methods for identifying input types and for determining an input r...
peer reviewedWe investigate several global variable importance measures derived from artificial neur...
Abstract — In this paper we use the maximization of Onicescu’s informational energy as a criteria fo...
Identifying and quantifying relevance of input features are particularly useful in data mining when ...
A genetic algorithm optimized artificial neural network GNW has been designed to rank features for t...
Data mining and machine learning have become enormously pivotal in this Big Data time, as people are...
Abstract:- Feature subset selection is a central issue in a vast diversity of problems including cla...
Artificial neural networks (ANN) are designed to simulate the behavior of biological neural networks...
Neural networks are being used as tools for data analysis in a variety of applications. Neural netwo...
Artificial Neural Networks (ANNs) are weighted directed graphs of interconnected neurons widely empl...
Machine learning is a branch of artificial intelligence in which the system is made to learn from da...