The paper presents a method of rule extraction from the trained neural network by means of a genetic algorithm. The multiobjective approach is used to suit the nature of the problem, since different criteria (accuracy, complexity) may be taken into account during the search for a satisfying solution. The use of a hierarchical algorithm aims at reducing the complexity of the problem and thus enhancing the method performance. The overall structure and details of the algorithm as well as the results of experiments performed on popular benchmark data sets are presented
The primary contribution of the thesis is an algorithm that overcomes the significant limitations of...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
In the paper the method called CGA based on a cooperating genetic algorithm is presented. The CGA is...
Abstract. The paper presents a method of rule extraction from a trained neural network by means of a...
A common problem in KDD (Knowledge Discovery in Databases) is the presence of noise in the data bein...
Abstract. neural networks solving approximation problem. It is based on two hierarchical evolu-tiona...
Jin Y, Sendhoff B, Körner E. Rule Extraction from Compact Pareto-optimal Neural Networks. In: Ghosh ...
Abstract This paper deals with the use of neural network rule extraction techniques based on the Ge-...
Abstract- Various rule-extraction techniques using ANNs have been used so far, most of them being ap...
Wang H, Kwong S, Jin Y, Wei W, Man KF. Multi-objective hierarchical genetic algorithm for interpreta...
A genetic algorithm system is developed and applied to classification and feature extraction of high...
In this paper, a two-stage pattern classification and rule extraction system is proposed. The first ...
Search methods for rule extraction from neural networks work by finding those combinations of inputs...
Rewolucyjne wynalazki człowieka bardzo często powstają w wyniku obserwacji przyrody. Korzysta ona z ...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
The primary contribution of the thesis is an algorithm that overcomes the significant limitations of...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
In the paper the method called CGA based on a cooperating genetic algorithm is presented. The CGA is...
Abstract. The paper presents a method of rule extraction from a trained neural network by means of a...
A common problem in KDD (Knowledge Discovery in Databases) is the presence of noise in the data bein...
Abstract. neural networks solving approximation problem. It is based on two hierarchical evolu-tiona...
Jin Y, Sendhoff B, Körner E. Rule Extraction from Compact Pareto-optimal Neural Networks. In: Ghosh ...
Abstract This paper deals with the use of neural network rule extraction techniques based on the Ge-...
Abstract- Various rule-extraction techniques using ANNs have been used so far, most of them being ap...
Wang H, Kwong S, Jin Y, Wei W, Man KF. Multi-objective hierarchical genetic algorithm for interpreta...
A genetic algorithm system is developed and applied to classification and feature extraction of high...
In this paper, a two-stage pattern classification and rule extraction system is proposed. The first ...
Search methods for rule extraction from neural networks work by finding those combinations of inputs...
Rewolucyjne wynalazki człowieka bardzo często powstają w wyniku obserwacji przyrody. Korzysta ona z ...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
The primary contribution of the thesis is an algorithm that overcomes the significant limitations of...
Recent years, data mining techniques have been developed for extracting rules from big data. However...
In the paper the method called CGA based on a cooperating genetic algorithm is presented. The CGA is...