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Profit-based credit scoring based on robust optimization and feature selection

机译:基于鲁棒优化和特征选择的基于利润的信用评分

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摘要

A novel framework for profit-based credit scoring is proposed in this work. The approach is based on robust optimization, which is designed for dealing with uncertainty in the data, and therefore is effective at classifying new samples that follow a slightly different distribution in relation to the original dataset used to create the model. Instead of minimizing a loss function based on statistical measures, the proposed method maximizes the profit of the credit scoring model, balancing the benefits and losses of granting credit with the variable acquisition costs. The reduction of these is performed using feature selection techniques embedded in the learning process. The robust approach results in four second order cone programming formulations, which can be solved efficiently using interior point algorithms. Experiments on two credit scoring datasets demonstrate the virtues of our approach in terms of its predictive performance, and the managerial insights that can be gained from it. (C) 2019 Elsevier Inc. All rights reserved.
机译:在这项工作中提出了一种基于利润的信用评分的新框架。该方法基于稳健的优化,该优化是为了处理数据中的不确定性而设计,因此在分类与用于创建模型的原始数据集的关系略微不同分布的新样本中是有效的。该提出的方法不能最大限度地减少基于统计措施的损失功能,而是最大限度地提高了信用评分模型的利润,平衡了通过可变采集成本授予授予信贷的益处和损失。使用嵌入在学习过程中的特征选择技术来执行这些。鲁棒方法导致四个二阶锥编程配方,可以使用内点算法有效地解决。两个信用评分数据集的实验在其预测性能方面展示了我们的方法的美德,以及可以从中获得的管理洞察力。 (c)2019 Elsevier Inc.保留所有权利。

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