Rule extraction (RE) from recurrent neural networks (RNNs) refers to finding models of the underlying RNN, typically in the form of finite state machines, that mimic the network to a satisfactory degree. RE from RNNs can be argued to allow a deeper and more profound form of analysis of RNNs than other, more or less ad hoc methods. RE may give us understanding of RNNs in the intermediate levels between quite abstract theoretical knowledge of RNNs as a class of computing devices and quantitative performance evaluations of RNN instantiations. The development of techniques for extraction of rules from RNNs has been an active field since the early nineties. In this paper, the progress of this development is reviewed and analysed in detail. In or...
Extracting rules from RBFs is not a trivial task because of nonlinear functions or high input di-men...
Abstract: This paper presents an overview of rule extraction and rule refinement techniques that hav...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
Rule extraction (RE) from recurrent neural networks (RNNs) refers to finding models of the underlyin...
The extraction of symbolic knowledge from trained neural networks and the direct encoding of (partia...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
Abstract- Various rule-extraction techniques using ANNs have been used so far, most of them being ap...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
This paper describes a method of rule extraction from trained artificial neural networks. The statem...
Recurrent neural networks readily process, recognize and generate temporal sequences. By encoding gr...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
This paper presents a quantitative investigation of the differences between rule extraction through ...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Hammer B, Strickert M, Villmann T. Rule Extraction from Self-Organizing Networks. In: Dorronsoro JR,...
Classification and Rule extraction is an important application of Artificial Neural Network. To extr...
Extracting rules from RBFs is not a trivial task because of nonlinear functions or high input di-men...
Abstract: This paper presents an overview of rule extraction and rule refinement techniques that hav...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
Rule extraction (RE) from recurrent neural networks (RNNs) refers to finding models of the underlyin...
The extraction of symbolic knowledge from trained neural networks and the direct encoding of (partia...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
Abstract- Various rule-extraction techniques using ANNs have been used so far, most of them being ap...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
This paper describes a method of rule extraction from trained artificial neural networks. The statem...
Recurrent neural networks readily process, recognize and generate temporal sequences. By encoding gr...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
This paper presents a quantitative investigation of the differences between rule extraction through ...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Hammer B, Strickert M, Villmann T. Rule Extraction from Self-Organizing Networks. In: Dorronsoro JR,...
Classification and Rule extraction is an important application of Artificial Neural Network. To extr...
Extracting rules from RBFs is not a trivial task because of nonlinear functions or high input di-men...
Abstract: This paper presents an overview of rule extraction and rule refinement techniques that hav...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...