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Combining Random Subspace Approach with SMOTE Oversampling for Imbalanced Data Classification

机译:结合随机子空间方法与SMOTE过采样进行不平衡数据分类

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Following work tries to utilize a hybrid approach of combining Random Subspace method and smote oversampling to solve a problem of imbalanced data classification. Paper contains a proposition of the ensemble diversified using Random Subspace approach, trained with a set oversampled in the context of each reduced subset of features. Algorithm was evaluated on the basis of the computer experiments carried out on the benchmark datasets and three different base classifiers.
机译:接下来的工作试图利用结合随机子空间方法和污点过采样的混合方法来解决数据分类不平衡的问题。论文包含使用随机子空间方法进行多样化集成的命题,并在每个缩减的特征子集的上下文中对一组过采样进行训练。基于对基准数据集和三个不同的基本分类器进行的计算机实验,对算法进行了评估。

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