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Personal Credit Risk Assessment Based on Stacking Ensemble Model

机译:基于堆叠集成模型的个人信用风险评估

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Nowadays, compared with the traditional artificial risk control audit method, a more sophisticated intelligent risk assessment system is needed to support credit risk assessment. Ensemble learning combines multiple learners that can achieve better generalization performance than a single model. This paper proposes a personal credit risk assessment model based on Stacking ensemble learning. The model uses different training subsets and feature sampling and parameter perturbation methods to train multiple differentiated XGBoost classifiers. According to Xgboost's high accuracy and susceptibility to disturbances, it is used as a base learner to guarantee every learning "Good and different". Logistic regression is then used as a secondary learner to learn the results obtained by Xgboost, thereby constructing an evaluation model. Using the German credit data set published by UCI to verify this model and Compared with the single model and Bagging ensemble model, it is proved that the Stacking learning strategy has better generalization ability.
机译:如今,与传统的人工风险控制审计方法相比,需要一种更加完善的智能风险评估系统来支持信用风险评估。集合学习结合了多个学习器,与单个模型相比,可以实现更好的泛化性能。本文提出了一种基于Stacking集成学习的个人信用风险评估模型。该模型使用不同的训练子集以及特征采样和参数扰动方法来训练多个差异化XGBoost分类器。根据Xgboost的高精确度和易受干扰的影响,它被用作基础学习器,以确保每次学习都“好而不同”。然后将Logistic回归用作中学学习者,以学习Xgboost所获得的结果,从而构建评估模型。利用UCI发布的德国信用数据集对该模型进行了验证,并与单一模型和Bagging集成模型进行了比较,证明了Stacking学习策略具有更好的泛化能力。

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