Neural networks have frequently been found to give accurate solutions to hard classification problems. However neural networks do not make explained classifications because the class boundaries are implicitly defined by the network weights, and these weights do not lend themselves to simple analysis. Explanation is desirable because it gives problem insight both to the designer and to the user of the classifier. Many methods have been suggested for explaining the classification given by a neural network, but they all suffer from one or more of the following disadvantages:a lack of equivalence between the network and the explanation;the absence of a probability framework required to express the uncertainty present in the data;a restriction t...
Neural networks have been exploited in a wide variety of applications, the majority of which are con...
International audienceThe purpose of this paper is to compare two pattern recognition methods : Neur...
Constructive learning algorithms offer an approach to incremental construction of near-minimal artif...
The majority of current applications of neural networks are concerned with problems in pattern recog...
Abstract: In this paper, we provide a thorough analysis of decision boundaries of neural networks wh...
It seems reasonable to expect that the inclusion of cases on the decision boundaries in a training s...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
Neural networks have become increasingly powerful and commonplace tools for guiding decision-making....
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
Neural networks have been exploited in a wide variety of applications, the majority of which are con...
International audienceThe purpose of this paper is to compare two pattern recognition methods : Neur...
Constructive learning algorithms offer an approach to incremental construction of near-minimal artif...
The majority of current applications of neural networks are concerned with problems in pattern recog...
Abstract: In this paper, we provide a thorough analysis of decision boundaries of neural networks wh...
It seems reasonable to expect that the inclusion of cases on the decision boundaries in a training s...
Freedom from assumptions about the data set used is one attraction of neural network classifiers. Ho...
In this article we describe a feature extraction algorithm for pattern classification based on Bayes...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
In "decomposition/reconstruction" strategy, we can solve a complex problem by 1) decomposing the pro...
Neural networks have become increasingly powerful and commonplace tools for guiding decision-making....
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
We study the task of explaining machine learning classifiers. We explore a symbolic approach to this...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
Of crucial importance to the successful use of artificial neural networks for pattern classification...
Neural networks have been exploited in a wide variety of applications, the majority of which are con...
International audienceThe purpose of this paper is to compare two pattern recognition methods : Neur...
Constructive learning algorithms offer an approach to incremental construction of near-minimal artif...