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Logistic and SVM Credit Score Models Based on Lasso Variable Selection

机译:基于套索变量选择的Logistic和SVM信用评分模型

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摘要

There are many factors influencing personal credit. We introduce Lasso technique to personal credit evaluation, and establish Lasso-logistic, Lasso-SVM and Group lasso-logistic models respectively. Variable selection and parameter estimation are also conducted simultaneously. Based on the personal credit data set from a certain lending platform, it can be concluded through experiments that compared with the full-variable Logistic model and the stepwise Logistic model, the variable selection ability of Group lasso-logistic model was the strongest, followed by Lasso-logistic and Lasso-SVM respectively. All three models based on Lasso variable selection have better filtering capability than stepwise selection. In the meantime, the Group lasso-logistic model can eliminate or retain relevant virtual variables as a group to facilitate model interpretation. In terms of prediction accuracy, Lasso-SVM had the highest prediction accuracy for default users in the training set, while in the test set, Group lasso-logistic had the best classification accuracy for default users. Whether in the training set or in the test set, the Lasso-logistic model has the best classification accuracy for non-default users. The model based on Lasso variable selection can also better screen out the key factors influencing personal credit risk.
机译:影响个人信用的因素很多。将套索技术引入个人信用评估中,分别建立套索逻辑模型,套索支持向量机模型和组套索逻辑模型。变量选择和参数估计也同时进行。根据某贷款平台的个人信用数据集,可以通过实验得出结论,与全变量Logistic模型和逐步Logistic模型相比,Group Lasso-Logistic模型的变量选择能力最强,其次是套索物流和套索SVM。这三个基于套索变量选择的模型都具有比逐步选择更好的过滤能力。同时,组套索逻辑模型可以消除或保留相关的虚拟变量作为一个组,以方便模型解释。在预测准确度方面,Lasso-SVM在训练集中对默认用户的预测准确度最高,而在测试集中,Group Lasso-logistic对默认用户的分类准确度最高。无论是在训练集中还是在测试集中,套索逻辑模型对于非默认用户都具有最佳分类精度。基于套索变量选择的模型还可以更好地筛选出影响个人信用风险的关键因素。

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