Weighted SMOTE-Ensemble Algorithms: Evidence from Chinese Imbalance Credit Approval Instances

Mohammad Zoynul Abedin, Guotai Chi, F. Moula
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引用次数: 3

Abstract

The current study proposes a novel ensemble approach rooted in the weighted synthetic minority over-sampling technique (WSMOTE) algorithm being called WSMOTE-ensemble for skewed loan performance data modeling. The proposed ensemble classifier hybridizes WSMOTE and Bagging with sampling composite mixtures (SCMs) to minimize the class skewed constraints linking to the positive and negative small business instances. It increases the multiplicity of executed algorithms as different sampling composite mixtures are applied to form diverse training sets. Based on the fitted evaluation measures, finally this study recommends that the 'WSMOTE-ensemblek-NN' methodology generating from the WSMOTE-decision tree-bagging with k nearest neighbor is the best fusion sampling strategy which is a novel finding in this domain.
加权SMOTE-Ensemble算法:来自中国失衡信贷审批实例的证据
目前的研究提出了一种基于加权合成少数过采样技术(WSMOTE)算法的新型集成方法,称为WSMOTE集成,用于倾斜贷款绩效数据建模。所提出的集成分类器将WSMOTE和Bagging与采样复合混合物(scm)杂交,以最大限度地减少与正面和负面小企业实例相关的类倾斜约束。它增加了执行算法的多样性,因为使用不同的采样复合混合物来形成不同的训练集。在拟合评价测度的基础上,提出了基于k近邻的wsmote决策树bagging生成的“WSMOTE-ensemblek-NN”方法是该领域的新发现,是最佳融合采样策略。
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