基于优化算法的深度学习信用评分

Paul Diaconescu, V. Neagoe
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引用次数: 1

摘要

信用评分的好坏对金融机构具有重要意义。本文提出了一种信用评分的深度学习方法。我们将信用评分定义为假负误差(FN)和假正误差(FP)的加权和得到的成本。我们的目标是取得尽可能低的分数。最大的权重分配给指标FN(这对应于将不良信用预测为良好信用)。因此,我们的最佳信用评分对应于在给定的总错误和下报警漏报率(MAR)的最小化。提出的成本最小化模型使用了最先进的数学算法和深度学习技术。在我们的工作中,我们使用优化算法来选择深度学习神经网络架构并找到最优超参数。使用德国信用数据集对该方法进行了测试。最好的结果是MAR为3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Credit Scoring Using Deep Learning Driven by Optimization Algorithms
Credit scoring as good or bad has a significant importance for financial institutions. This paper presents a Deep Learning approach for credit scoring. We have defined the credit score as a cost obtained by a weighted sum of the number of false negative errors (FN) and the number of false positive errors (FP). Our objective was to obtain the lowest possible score. The largest weight is allocated to the indicator FN (this corresponds to the prediction of bad credit as good credit). As a consequence, our best credit score corresponds to minimization of Miss Alarm Rate (MAR) for a given sum of total errors. The proposed model of cost minimization uses state of the art mathematical algorithms and deep learning techniques. In our work, we use optimization algorithms for selecting a deep learning neural network architecture and for finding the optimum hyperparameters. The method is tested using the German credit dataset. The best result leads to a MAR of 3%.
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