[[abstract]]Classifier ensembles have been shown to outperform single classifier systems. An apparent necessary condition for ensembles to outperform single systems is that the classifier systems exhibit a reasonable degree of "diversity". It has also been demonstrated that diversity is an important predictive factor for the improvement. However, in lack of a universally accepted definition, various diversity measures have been proposed and applied in the literature. A natural question then follows: How can we compare, and hence choose among, various diversity measures? This work exploits analytically the relationships among several well-accepted diversity measures. These different diversity measures are proved to be closely relat...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
The relationship between ensemble classifier perfor-mance and the diversity of the predictions made ...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
[[abstract]]Combining multiple classifier systems (MCS’) has been shown to outperform single classif...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
The relationship between ensemble classifier perfor-mance and the diversity of the predictions made ...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
The concept of `diversity' has been one of the main open issues in the field of multiple classifier ...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
Diversity is deemed a crucial concept in the field of multiple classifier systems, although no exact...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
The test set accuracy for ensembles of classifiers selected based on single measures of accuracy and...
[[abstract]]Combining multiple classifier systems (MCS’) has been shown to outperform single classif...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...
The relationship between ensemble classifier perfor-mance and the diversity of the predictions made ...
We address one of the main open issues about the use of diversity in multiple classifier systems: th...