In recent years, support vector machines (SVMs) have shown good performance in a number of application areas, including text classification. However, the success of SVMs comes at a cost - 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 for the acceptance of this machine learning technology, especially for applications such as medical diagnosis. It is crucial for the users to understand how the system makes a decision. In this paper, a novel approach for rule-extraction from support vector machines is presented. This approach handles rule-extraction as a learning task, which proceeds in two steps. The first is to use the labeled patterns from ...
In this paper, we propose a novel algorithm for rule extraction from support vector machines ( SVMs)...
Abstract—Knowledge discovery of data is very much necessary in order to deliver a correct decision t...
In recent years, support vector machines (SVMs) were successfully applied to a wide range of applica...
Over the last decade, rule-extraction from neural networks (ANN) techniques have been developed to e...
Over the last three decades, data mining and machine learning techniques have been remarkably succes...
Rule-extraction from artificial neural networks(ANNs) as well as support vector machines (SVMs) prov...
Over the last decade, support vector machine classifiers (SVMs) have demonstrated superior generaliz...
Summary. Innovative storage technology and the rising popularity of the Inter-net have generated an ...
This paper presents a new approach to rule extraction from Support Vector Machines. SVMs have been a...
Support vector machines (SVMs) have shown superior performance compared to other machine learning te...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Despite the success of connectionist systems in prediction and classification problems, critics argu...
Despite the success of connectionist systems in prediction and classi¯cation problems, critics argue...
International audienceArtificial Intelligence (AI) systems that can provide clear explanations of th...
In this paper, we propose a novel algorithm for rule extraction from support vector machines ( SVMs)...
Abstract—Knowledge discovery of data is very much necessary in order to deliver a correct decision t...
In recent years, support vector machines (SVMs) were successfully applied to a wide range of applica...
Over the last decade, rule-extraction from neural networks (ANN) techniques have been developed to e...
Over the last three decades, data mining and machine learning techniques have been remarkably succes...
Rule-extraction from artificial neural networks(ANNs) as well as support vector machines (SVMs) prov...
Over the last decade, support vector machine classifiers (SVMs) have demonstrated superior generaliz...
Summary. Innovative storage technology and the rising popularity of the Inter-net have generated an ...
This paper presents a new approach to rule extraction from Support Vector Machines. SVMs have been a...
Support vector machines (SVMs) have shown superior performance compared to other machine learning te...
Since their introduction more than a decade ago, support vector machines (SVMs) have shown good perf...
Whereas newer machine learning techniques, like artifficial neural net-works and support vector mach...
Despite the success of connectionist systems in prediction and classification problems, critics argu...
Despite the success of connectionist systems in prediction and classi¯cation problems, critics argue...
International audienceArtificial Intelligence (AI) systems that can provide clear explanations of th...
In this paper, we propose a novel algorithm for rule extraction from support vector machines ( SVMs)...
Abstract—Knowledge discovery of data is very much necessary in order to deliver a correct decision t...
In recent years, support vector machines (SVMs) were successfully applied to a wide range of applica...