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A Classification Algorithm Based on Ensemble Feature Selections for Imbalanced-Class Dataset

机译:一种基于Inbalanced类数据集的集合特征选择的分类算法

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Traditional classification algorithms addressing imbalanced-class dataset mostly concentrate on the majority classes' accuracy, such that the minority class's accuracy is usually ignored. Focusing on this issue, we propose a novel classification algorithm using Ensemble Feature Selections (EFS) for imbalanced-class dataset. This algorithm utilizes the superiority of EFS in accuracy, then considers the diversity and imbalance in the designing appropriate feature subset objective function to make it fit for the imbalanced dataset. It chooses the minority class-oriented F measurement for computing accuracy and imports a punishment-reward mechanism into the KW diversity measurement. When the minority class's accuracy goes up, the reward-factor is given. Otherwise, the punishment-factor is given. Comparing with four algorithms, our experimental evaluations have showed that Mostly our algorithm can improve the accuracy of minority class.
机译:传统的分类算法寻址IMBalanced-Class DataSet主要集中在大多数类别的准确性上,使少数类别的准确性通常忽略。专注于此问题,我们提出了一种使用集合特征选择(EFS)的新型分类算法,用于Imbalanced-Class DataSet。该算法利用EFS的优越性精确度,然后考虑设计适当的特征子集目标函数中的多样性和不平衡,使其适合不平衡数据集。它选择少数群体面向级别的F测量,以计算准确性,并将惩罚奖励机制进入KW分集测量。当少数阶级的准确性上升时,给出了奖励因素。否则,给出了惩罚因素。与四种算法相比,我们的实验评估表明,主要是我们的算法可以提高少数群体的准确性。

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