A New Objective Function for Ensemble Selection in Random Subspaces
2006Vol. 3, pp. 185–188
Citations Over Time
Abstract
Most works based on diversity suggest that there exists only weak correlation between diversity and ensemble accuracy. We show that by combining the diversities with the classification accuracy of each individual classifier, we can achieve a strong correlation between the combined diversities and the ensemble accuracy in random subspaces
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