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Differential evolution trained kernel principal component WNN and kernel binary quantile regression: Application to banking

机译:差分进化训练的核主成分WNN和核二进制分位数回归:在银行业中的应用

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摘要

In this paper, two novel kernel based soft computing techniques viz., Differential Evolution trained Kernel Principal Component Wavelet Neural Network (DE-KPCWNN) and DE trained Kernel Binary Quantile Regression (DE-KBQR) are proposed for classification. While, the former can solve multi-class classification problems, the latter can solve binary classification problems only. In the proposed DE-KPCWNN technique, Kernel Principal Component Analysis (KPCA) is applied to input data to get Kernel Principal Components, on which we will employ WNN. Then, DE is used to train the resulting KPCWNN. In DE-KBQR we applied Kernel technique on the input data to get Kernel Matrix, on which we will employ BQR. Then, DE is used to train the resulting KBQR. Several experiments are conducted on four bankruptcy datasets, three benchmark datasets and two Credit scoring datasets to assess the effectiveness of the proposed classification techniques. The results indicate that the proposed Soft Computing hybrids for classification are efficient than the existing classification techniques. Out of the two, DE-KBQR performed relatively better compared to DE-KPCWNN on a majority of binary classification problems. This is the significant outcome of this study.
机译:本文提出了两种新的基于内核的软计算技术,即差分进化训练的核主成分小波神经网络(DE-KPCWNN)和DE训练的核二进制分位数回归(DE-KBQR)进行分类。前者可以解决多类分类问题,而后者只能解决二元分类问题。在提出的DE-KPCWNN技术中,将内核主成分分析(KPCA)应用于输入数据以获取内核主成分,在此基础上我们将使用WNN。然后,使用DE训练所得的KPCWNN。在DE-KBQR中,我们对输入数据应用了内核技术,以获得内核矩阵,我们将在该矩阵上使用BQR。然后,使用DE训练生成的KBQR。在四个破产数据集,三个基准数据集和两个信用评分数据集上进行了一些实验,以评估所提出分类技术的有效性。结果表明,提出的用于分类的软计算混合算法比现有的分类技术有效。在两种二进制分类问题中,两者相比,DE-KBQR的性能要优于DE-KPCWNN。这是这项研究的重要成果。

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