Artificial neural networks are widely spread models that outperform more basic, but explainable machine learning models like classification decision tree. Although their lack of explainability severely limits their area of application. All mission critical areas or law regulated areas (like European GDPR) require model to be explained. Explainability allows model validation for correctness and lack of bias. Thus methods for knowledge extraction from artificial neural networks have gained attention and development efforts. Current paper addresses this problem and describes knowledge extraction methodology which can be applied to classification problems. It is based on previous research and allows knowledge to be extracted from trained fully ...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
In this report, we investigate the problem of symbolic knowledge extraction from trained neural netw...
The primary contribution of the thesis is an algorithm that overcomes the significant limitations of...
Inside the sets of data, hidden knowledge can be acquired by using neural network. These knowledge a...
(eng) Artificial neural networks may learn to solve arbitrary complex problems. But knowledge acquir...
Active research into processes and techniques for extracting the knowledge embedded within trained a...
Neural networks have been successfully applied in a wide range of supervised and unsupervised learni...
One of the major drawbacks or challenges of neural network models is that these models can not expla...
A major drawback of artificial neural networks is their black-box character. Therefore, the rule ex...
Hybrid intelligent systems that combine knowledge based and artificial neural network systems typica...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Artificial neural networks (ANN) have demonstrated good predictive performance in a wide variety of ...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
In this report, we investigate the problem of symbolic knowledge extraction from trained neural netw...
The primary contribution of the thesis is an algorithm that overcomes the significant limitations of...
Inside the sets of data, hidden knowledge can be acquired by using neural network. These knowledge a...
(eng) Artificial neural networks may learn to solve arbitrary complex problems. But knowledge acquir...
Active research into processes and techniques for extracting the knowledge embedded within trained a...
Neural networks have been successfully applied in a wide range of supervised and unsupervised learni...
One of the major drawbacks or challenges of neural network models is that these models can not expla...
A major drawback of artificial neural networks is their black-box character. Therefore, the rule ex...
Hybrid intelligent systems that combine knowledge based and artificial neural network systems typica...
It is becoming increasingly apparent that, without some form of explanation capability, the full pot...
Contrary to the common opinion, neural networks may be used for knowledge extraction. Recently, a ne...
Title: Artificial Neural Networks and Their Usage For Knowledge Extraction Author: RNDr. Zuzana Petř...
Artificial neural networks (ANN) have demonstrated good predictive performance in a wide variety of ...
Given paper is a review on existing decompositional rules extraction methods from artificial neural ...
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
In this report, we investigate the problem of symbolic knowledge extraction from trained neural netw...