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A Synthetic Penalized Logitboost to Model Mortgage Lending with Imbalanced Data

机译:综合惩罚LogitBoost以模拟数据的模拟抵押贷款

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摘要

Most classical econometric methods and tree boosting based algorithms tend to increase the prediction error with binary imbalanced data. We propose a synthetic penalized logitboost based on weighting corrections. The procedure (i) improves the prediction performance under the phenomenon in question, (ii) allows interpretability since coefficients can get stabilized in the recursive procedure, and (iii) reduces the risk of overfitting. We consider a mortgage lending case study using publicly available data to illustrate our method. Results show that errors are smaller in many extreme prediction scores, outperforming a number of existing methods. Our interpretations are consistent with results obtained using a classic econometric model.
机译:基于大多数经济学的经济学方法和树增强的算法往往会增加二进制不平衡数据的预测误差。我们提出了一种基于加权校正的综合惩罚的Logitboost。程序(i)提高了所讨论的现象下的预测性能,(ii)允许解释性,因为系数可以在递归程序中稳定稳定,并且(iii)降低过度装箱的风险。我们考虑使用公开可用的数据来说明我们的方法的抵押贷款案例研究。结果表明,在许多极端预测分数中,错误较小,优于许多现有方法。我们的解释与使用经济学计量模型获得的结果一致。

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