Feb. 8, 2024, 5:47 a.m. | Antonio Fern\'andez-Baldera Jos\'e M. Buenaposada Luis Baumela

cs.CV updates on arXiv.org arxiv.org

We present BAdaCost, a multi-class cost-sensitive classification algorithm. It combines a set of cost-sensitive multi-class weak learners to obtain a strong classification rule within the Boosting framework. To derive the algorithm we introduce CMEL, a Cost-sensitive Multi-class Exponential Loss that generalizes the losses optimized in various classification algorithms such as AdaBoost, SAMME, Cost-sensitive AdaBoost and PIBoost. Hence unifying them under a common theoretical framework. In the experiments performed we prove that BAdaCost achieves significant gains in performance when compared to …

adaboost algorithm algorithms boosting class classification cost costs cs.cv framework loss losses set the algorithm

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