Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of the bottlenecks in artificial intelligence. Recently, knowledge acquisition using neural networks, called rule extraction, is attracting wide attention because of its computational simplicity and ability to generalize. Proposed in this paper is a novel approach to rule extraction named successive regularization. It generates a small number of dominant rules at an earlier stage and less dominant rules or exceptions at later stages. It has various advantages such as robustness of computation, better understanding, and similarity to child development. It is applied to the classification of mushrooms, the recognition of promoters in DNA sequences...
One of the major drawbacks or challenges of neural network models is that these models can not expla...
Mining sequential rules from large databases is an important topic in data mining fields with wide a...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
Rule extraction (RE) from recurrent neural networks (RNNs) refers to finding models of the underlyin...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Abstract—Hybrid Intelligent Systems that combine knowledge-based and artificial neural network syste...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a supervised learnin...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Concepts learned by neural networks are difficult to understand because they are represented using l...
An important area of application for machine learning is in automating the acquisition of knowledge ...
In this report, we investigate the problem of symbolic knowledge extraction from trained neural netw...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
One of the major drawbacks or challenges of neural network models is that these models can not expla...
Mining sequential rules from large databases is an important topic in data mining fields with wide a...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Knowledge acquisition is, needless to say, important, because it is a key to the solution to one of ...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
Rule extraction (RE) from recurrent neural networks (RNNs) refers to finding models of the underlyin...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Abstract—Hybrid Intelligent Systems that combine knowledge-based and artificial neural network syste...
Various benchmarking studies have shown that artificial neural networks and support vector machines ...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a supervised learnin...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Concepts learned by neural networks are difficult to understand because they are represented using l...
An important area of application for machine learning is in automating the acquisition of knowledge ...
In this report, we investigate the problem of symbolic knowledge extraction from trained neural netw...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
One of the major drawbacks or challenges of neural network models is that these models can not expla...
Mining sequential rules from large databases is an important topic in data mining fields with wide a...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...