This paper presents an empirical comparison of three classification methods: neural networks, decision tree induction and linear discriminant analysis. The comparison is based on seven datasets with different characteristics, four being real, and three artificially created. Analysis of variance was used to detect any significant differences between the performance of the methods. There is also some discussion of the problems involved with using neural networks and, in particular, on overfitting of the training data. A comparison-between two methods to prevent overfitting is presented: finding the most appropriate network size, and the use of an independent validation set to determine when to stop training the network
Neural networks are being used in areas of prediction and classification, the areas where statistica...
Artificial Neural Networks (ANNs) have proved both a pop-ular and powerful technique for pattern rec...
This work deals with the classification methods used in the knowledge discovery from data process an...
SIGLEAvailable from British Library Document Supply Centre- DSC:9261.954(WBS-RP--61) / BLDSC - Briti...
In this paper we present comparative study of two frequently used methods for prediction and classif...
We discuss and test empirically the effects of six dimensions along which existing decision tree ind...
Twenty two decision tree, nine statistical, and two neural network classifiers are compared on thirt...
Machine Learning techniques are widely and effectively being used in most applications of Artificial...
A multiple classifier system can only improve the performance when the members in the system are div...
Approaches combining methods based on decision trees and neural networks are an important examples o...
Abstract. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared...
As of this writing, an large number of AI methods have been developed in the fiel of pattern classif...
As of this writing, a large number of AI methods have been developed in the field of pattern classif...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared on thir...
Neural networks are being used in areas of prediction and classification, the areas where statistica...
Artificial Neural Networks (ANNs) have proved both a pop-ular and powerful technique for pattern rec...
This work deals with the classification methods used in the knowledge discovery from data process an...
SIGLEAvailable from British Library Document Supply Centre- DSC:9261.954(WBS-RP--61) / BLDSC - Briti...
In this paper we present comparative study of two frequently used methods for prediction and classif...
We discuss and test empirically the effects of six dimensions along which existing decision tree ind...
Twenty two decision tree, nine statistical, and two neural network classifiers are compared on thirt...
Machine Learning techniques are widely and effectively being used in most applications of Artificial...
A multiple classifier system can only improve the performance when the members in the system are div...
Approaches combining methods based on decision trees and neural networks are an important examples o...
Abstract. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared...
As of this writing, an large number of AI methods have been developed in the fiel of pattern classif...
As of this writing, a large number of AI methods have been developed in the field of pattern classif...
Abstract – Feed forward, back propagation neural networks are known to be universal approximators in...
. Twenty-two decision tree, nine statistical, and two neural network algorithms are compared on thir...
Neural networks are being used in areas of prediction and classification, the areas where statistica...
Artificial Neural Networks (ANNs) have proved both a pop-ular and powerful technique for pattern rec...
This work deals with the classification methods used in the knowledge discovery from data process an...