Title of article :
Multi-class boosting with asymmetric binary weak-learners
Author/Authors :
Fernلndez-Baldera، نويسنده , , Antonio and Baumela، نويسنده , , Luis، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
We introduce a multi-class generalization of AdaBoost with binary weak-learners. We use a vectorial codification to represent class labels and a multi-class exponential loss function to evaluate classifier responses. This representation produces a set of margin values that provide a range of punishments for failures and rewards for successes. Moreover, the stage-wise optimization of this model introduces an asymmetric boosting procedure whose costs depend on the number of classes separated by each weak-learner. In this way the boosting algorithm takes into account class imbalances when building the ensemble. The experiments performed compare this new approach favorably to AdaBoost.MH, GentleBoost and the SAMME algorithms.
Keywords :
AdaBoost , Multi-class classification , Asymmetric binary weak-learners , Class imbalance
Journal title :
PATTERN RECOGNITION
Journal title :
PATTERN RECOGNITION