Over the last decade, rule-extraction from neural networks (ANN) techniques have been developed to explain how classification and regression are realised by the ANN. Yet, this is not the case for support vector machines (SVMs) which also demonstrate an inability to explain the process by which a learning result was reached and why a decision is being made. Rule-extraction from SVMs is important, especially for applications such as medical diagnosis. In this paper, an approach for learning-based rule-extraction from support vector machines is outlined, including an evaluation of the quality of the extracted rules in terms of fidelity, accuracy, consistency and comprehensibility. In addition, the rules are verified by use of knowledge from th...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
In recent years, support vector machines (SVMs) have shown good performance in a number of applicati...
Over the last three decades, data mining and machine learning techniques have been remarkably succes...
Over the last decade, support vector machine classifiers (SVMs) have demonstrated superior generaliz...
Rule-extraction from artificial neural networks(ANNs) as well as support vector machines (SVMs) prov...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
Summary. Innovative storage technology and the rising popularity of the Inter-net have generated an ...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
This paper presents a new approach to rule extraction from Support Vector Machines. SVMs have been a...
Despite the success of connectionist systems in prediction and classi¯cation problems, critics argue...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
Support vector machines (SVMs) have shown superior performance compared to other machine learning te...
Despite the success of connectionist systems in prediction and classification problems, critics argu...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
In recent years, support vector machines (SVMs) have shown good performance in a number of applicati...
Over the last three decades, data mining and machine learning techniques have been remarkably succes...
Over the last decade, support vector machine classifiers (SVMs) have demonstrated superior generaliz...
Rule-extraction from artificial neural networks(ANNs) as well as support vector machines (SVMs) prov...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
Summary. Innovative storage technology and the rising popularity of the Inter-net have generated an ...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
This paper presents a new approach to rule extraction from Support Vector Machines. SVMs have been a...
Despite the success of connectionist systems in prediction and classi¯cation problems, critics argue...
Prior knowledge about a problem domain can be utilized to bias Support Vector Machines (SVMs) toward...
Support vector machines (SVMs) have shown superior performance compared to other machine learning te...
Despite the success of connectionist systems in prediction and classification problems, critics argu...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...
Recently, the area of rule extraction from support vector machines (SVMs) has been explored. One imp...