Consensus-based combining method for classifier ensembles

this paper, a new method for combining an ensemble of classifiers, called Consensus-based Combining Method (CCM) is proposed and evaluated. As in most other combination methods, the outputs of multiple classifiers are weighted and summed together into a single final classification decision. However,...

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Veröffentlicht in:International arab journal of information technology 2018, Vol.15 (1)
Hauptverfasser: Tedmori, Sara, Rashidah, Hasan, al-Mumani, Umar, al-Zubi, Jafar, al-Zubi, Umar
Format: Artikel
Sprache:eng
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Zusammenfassung:this paper, a new method for combining an ensemble of classifiers, called Consensus-based Combining Method (CCM) is proposed and evaluated. As in most other combination methods, the outputs of multiple classifiers are weighted and summed together into a single final classification decision. However, unlike the other methods, CCM adjusts the weights iteratively after comparing all of the classifiers’ outputs. Ultimately, all the weights converge to a final set of weights, and the combined output reaches a consensus. The effectiveness of CCM is evaluated by comparing it with popular linear combination methods (majority voting, product, and average method). Experiments are conducted on 14 public data sets, and on a blog spam data set created by the authors. Experimental results show that CCM provides a significant improvement in classification accuracy over the product and average methods. Moreover, results show that the CCM’s classification accuracy is better than or comparable to that of majority voting.
ISSN:1683-3198
1683-3198