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A novel heterogeneous ensemble credit scoring model based on bstacking approach

机译:基于bstacking方法的新型异类集成信用评分模型

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摘要

In recent years, credit scoring has become an efficient tool that allows financial institutions to differentiate their potential default borrowers. Accordingly, researchers have developed a myriad of approaches, including statistical and artificial intelligence techniques, to fulfill the task of credit scoring. Recent studies have shown that ensemble methods, which combine multiple algorithms that process different hypotheses to form a new hypothesis, generally outperform the other credit scoring approaches. In this paper, we propose a novel heterogeneous ensemble credit model that integrates the bagging algorithm with the stacking method. The proposed model differs from the extant ensemble credit models in three aspects, namely, pool generation, selection of base learners, and trainable fuser. Four popular evaluation metrics, including accuracy, area under the curve (AUC), AUC-H measure, and Brier score, are employed to measure the performance of alternative models. To confirm the efficiency of the proposed bstacking approach, a wide range of models, including individual classifiers, homogeneous ensemble model, and heterogeneous ensemble model, are introduced as benchmarks. We also provided a discussion on the accurate yet complex credit scoring model (e.g., bstacking) from a regulatory perspective. (C) 2017 Elsevier Ltd. All rights reserved.
机译:近年来,信用评分已成为一种有效的工具,使金融机构能够区分其潜在的违约借款人。因此,研究人员已经开发出无数种方法,包括统计和人工智能技术,来完成信用评分的任务。最近的研究表明,结合了多种方法以处理不同假设以形成新假设的集成方法通常优于其他信用评分方法。在本文中,我们提出了一种新颖的异构集合信用模型,该模型将套袋算法与堆叠方法相结合。所提出的模型在三个方面与现存的集成学分模型不同,即池生成,基础学习者的选择和可训练的融合器。四个流行的评估指标,包括准确性,曲线下面积(AUC),AUC-H指标和Brier得分,被用来衡量替代模型的性能。为了确认所提出的bstacking方法的效率,引入了多种模型作为基准,其中包括个体分类器,齐次集合模型和异构集合模型。我们还从监管角度讨论了准确而复杂的信用评分模型(例如,bstacking)。 (C)2017 Elsevier Ltd.保留所有权利。

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