Title of article
The impact of diversity on the accuracy of evidential classifier ensembles Original Research Article
Author/Authors
Yaxin Bi، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
24
From page
584
To page
607
Abstract
Diversity being inherent in classifiers is widely acknowledged as an important issue in constructing successful classifier ensembles. Although many statistics have been employed in measuring diversity among classifiers to ascertain whether it correlates with ensemble performance in the literature, most of these measures are incorporated and explained in a non-evidential context. In this paper, we provide a modelling for formulating classifier outputs as triplet mass functions and a uniform notation for defining diversity measures. We then assess the relationship between diversity obtained by four pairwise and non-pairwise diversity measures and the improvement in accuracy of classifiers combined in different orders by Demspter’s rule of combination, Smets’ conjunctive rule, the Proportion and Yager’s rules in the framework of belief functions. Our experimental results demonstrate that the accuracy of classifiers combined by Dempster’s rule is not strongly correlated with the diversity obtained by the four measures, and the correlation between the diversity and the ensemble accuracy made by Proportion and Yager’s rules is negative, which is not in favor of the claim that increasing diversity could lead to reduction of generalization error of classifier ensembles.
Keywords
Diversity , Ensemble learning , Belief functions , Triplet evidence structure
Journal title
International Journal of Approximate Reasoning
Serial Year
2012
Journal title
International Journal of Approximate Reasoning
Record number
1183132
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