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A DBN-based resampling SVM ensemble learning paradigm for credit classification with imbalanced data

机译:基于DBN的重采样SVM集合学习范式,用于信用分类,具有不平衡数据

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摘要

Credit risk assessment is often accompanied with sampling data imbalance. For this reason, this paper tries to propose a deep belief network (DBN) based resampling support vector machine (SVM) ensemble learning paradigm to solve imbalanced data problem in credit classification. In this paradigm, a bagging algorithm is first used to generate variable training subsets to make the subsets rebalanced and suitable in size. Then the SVM model is used as individual base classifier to formulate diverse ensemble input members. Finally, the DBN model is applied as an ensemble method to fuse the input members to aggregate the classification results. In addition, the weights of different classes are changed by introducing a revenue matrix in terms of revenue-sensitive technique, which helps to make the results more reasonable. The experimental results indicate that the classification performance are improved effectively when the DBN-based ensemble strategy is integrated with re-sampling techniques, especially in imbalanced-data problem, implying that the proposed DBN-based resampling SVM ensemble learning paradigm can be used as a promising tool for credit risk classification with inbalanced data. (C) 2018 Elsevier B.V. All rights reserved.
机译:信用风险评估通常伴随着抽样数据不平衡。因此,本文试图提出基于深度信仰网络(DBN)的重采样支持向量机(SVM)集合学习范例,以解决信用分类中的不平衡数据问题。在该范例中,首先使用堆垛机算法来生成可变训练子集,以使子集重新平衡和适当的大小。然后,SVM模型用作单独的基本分类器,以制定不同的集合输入构件。最后,DBN模型被应用为集合方法,以使输入构件融合以聚合分类结果。此外,通过在收入敏感技术方面引入收入矩阵来改变不同类别的权重,这有助于使结果更合理。实验结果表明,当基于DBN的集合策略与重新采样技术集成时,特别是在不平衡数据问题中,有效地提高了分类性能,尤其是在不平衡数据问题中,这意味着所提出的基于DBN的重采样SVM集合学习范式可以用作具有流入数据的信用风险分类的有前途的工具。 (c)2018 Elsevier B.v.保留所有权利。

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