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EHSBoost: Enhancing ensembles for imbalanced data-sets by evolutionary hybrid-sampling

机译:EHSBOOST:通过进化混合采样增强用于非平数据集的合奏

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To binary problems, class-imbalanced data are defined as datasets in which the instance number of two classes is extremely different. Classifiers based on undersampling and oversampling were proposed to solve the class imbalanced problems. Techniques based on ensemble of classifiers has been successful for class imbalance problems. In this paper, we proposed an ensemble based approach EHSBoost. EHSBoost is based on EUSBoost, which combines the EUS with Boosting algorithm. The goal of our proposed algorithm is to take advantage of undersampling and oversampling. We consider the usage of hybrid sampling in a supervised manner to improve the accuracy of the weak learner. We have conducted experiments on 16 datasets. These datasets are from the KELL data repository. Three evaluation metrics are used to evaluate the proposed method and the state of art counterparts. Experiments show that, the proposed ensembles algorithm based on evolution hybrid sampling method has significant advantage over other methods for classification of class imbalance datasets.
机译:到二进制问题,类 - 不平衡数据被定义为数据集,其中两个类的实例编号非常不同。提出了基于欠采样和过采样的分类器来解决类别的不平衡问题。基于分类器集合的技术已经成功用于类别不平衡问题。在本文中,我们提出了一种基于Ehsboost的基于合奏的方法。 EHSBoost基于Eusboost,它将EUS与升压算法相结合。我们所提出的算法的目标是利用欠采样和过采样。我们考虑以监督方式使用混合采样,以提高弱学习者的准确性。我们在16个数据集进行了实验。这些数据集来自Kell数据存储库。三个评估度量用于评估所提出的方法和艺术同行的状态。实验表明,基于演化混合采样方法的所提出的合奏算法具有与类不平衡数据集分类的其他方法有显着的优势。

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