2023
DOI: 10.1155/2023/2176891
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IMBoost: A New Weighting Factor for Boosting to Improve the Classification Performance of Imbalanced Data

SeyedEhsan Roshan,
Jafar Tanha,
Farzad Hallaji
et al.

Abstract: Imbalanced datasets pose significant challenges in the field of machine learning, as they consist of samples where one class (majority) dominates over the other class (minority). Although AdaBoost is a popular ensemble method known for its good performance in addressing various problems, it fails when dealing with imbalanced data sets due to its bias towards the majority class samples. In this study, we propose a novel weighting factor to enhance the performance of AdaBoost (called IMBoost). Our approach invol… Show more

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