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Alham et al., 2013 - Google Patents

A MapReduce-based distributed SVM ensemble for scalable image classification and annotation

Alham et al., 2013

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Document ID
11744246949133538013
Author
Alham N
Li M
Liu Y
Qi M
Publication year
Publication venue
Computers & Mathematics with Applications

External Links

Snippet

A combination of classifiers leads to a substantial reduction of classification errors in a wide range of applications. Among them, support vector machine (SVM) ensembles with bagging have shown better performance in classification than a single SVM. However, the training …
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