Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors presented a number of techniques showing how to extract symbolic rules from Multi Layer Perceptrons (MLPs). Nevertheless, very few were related to ensembles of neural networks and even less for networks trained by deep learning. On several datasets we performed rule extraction from ensembles of Discretized Interpretable Multi Layer Perceptrons (DIMLP), and DIMLPs trained by deep learning. The results obtained on the Thyroid dataset and the Wisconsin Breast Cancer dataset show that the predictive accuracy of the extracted rules compare very favorably with respect to state of the art results. Finally, in the last classification problem on digit...
Convolutional Neural Networks (CNNs) lack an explanation capability in the form of propositional rul...
Making diagnosis by learning from examples is a typical field of artificial neural networks. However...
A distinct advantage of symbolic learning algorithms over artificial neural networks is that typical...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
This last decade multi-layer perceptrons (MLPs) have been widely used in classification tasks. Never...
One way to make the knowledge stored in an artificial neural network more intelligible is to extract...
The explainability of connectionist models is nowadays an ongoing research issue. Before the advent ...
We examine the feasibility of rule extraction as a method of explanation for neural networks with an...
The explanation of the decisions provided by a model are crucial in a domain such as medical diagnos...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
Classification is one of the data mining problems receiving great attention recently in the database...
Abstract-Classification is one of the data mining problems receiving great attention recently in the...
Abstract—Hybrid Intelligent Systems that combine knowledge-based and artificial neural network syste...
Convolutional Neural Networks (CNNs) lack an explanation capability in the form of propositional rul...
Making diagnosis by learning from examples is a typical field of artificial neural networks. However...
A distinct advantage of symbolic learning algorithms over artificial neural networks is that typical...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
Rule extraction from neural networks is a fervent research topic. In the last 20 years many authors ...
This last decade multi-layer perceptrons (MLPs) have been widely used in classification tasks. Never...
One way to make the knowledge stored in an artificial neural network more intelligible is to extract...
The explainability of connectionist models is nowadays an ongoing research issue. Before the advent ...
We examine the feasibility of rule extraction as a method of explanation for neural networks with an...
The explanation of the decisions provided by a model are crucial in a domain such as medical diagnos...
Although backpropagation ANNs generally predict better than decision trees do for pattern classifica...
Classification is one of the data mining problems receiving great attention recently in the database...
Abstract-Classification is one of the data mining problems receiving great attention recently in the...
Abstract—Hybrid Intelligent Systems that combine knowledge-based and artificial neural network syste...
Convolutional Neural Networks (CNNs) lack an explanation capability in the form of propositional rul...
Making diagnosis by learning from examples is a typical field of artificial neural networks. However...
A distinct advantage of symbolic learning algorithms over artificial neural networks is that typical...