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Rule-based credit risk assessment model using multi-objective evolutionary algorithms

机译:使用多目标进化算法的基于规则的信用风险评估模型

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Credit risk assessment is considered as one of the vital topics in financial institutions. The existing credit risk evaluation methods are based on black box models or transparent models. The black box models cannot adequately reveal information hidden in the data and the credit risk evaluation remains difficult. In addition, there exist relatively few transparent models that take into consideration interpretability and comprehensibility. To address this problem, we aim to build a reliable credit risk evaluation model which generates a set of classification rules. In fact, we consider the credit risk evaluation as a search-based optimization problem where the goal is to minimize the complexity of the generated solution, to maximize the accuracy, and also to maximize weight which represents rules importance. We conducted a comparative study of four multi-objective evolutionary algorithms in terms of their performance. The obtained results confirm the efficiency of the SMOPSO Algorithm regarding generating classification rules for credit risk assessment. The proposed credit risk evaluation model revealed an attractive trade-off between accuracy and comprehensibility. (C) 2019 Elsevier Ltd. All rights reserved.
机译:信用风险评估被认为是金融机构的重要课题之一。现有的信用风险评估方法基于黑盒模型或透明模型。黑匣子模型无法充分揭示数据中隐藏的信息,因此信用风险评估仍然很困难。此外,考虑到可解释性和可理解性的透明模型相对较少。为了解决这个问题,我们旨在建立一个可靠的信用风险评估模型,该模型可以生成一组分类规则。实际上,我们将信用风险评估视为基于搜索的优化问题,其目标是最小化所生成解决方案的复杂性,最大化准确性以及最大化代表规则重要性的权重。我们对四种多目标进化算法的性能进行了比较研究。获得的结果证实了SMOPSO算法在生成用于信用风险评估的分类规则方面的效率。拟议的信用风险评估模型揭示了准确性和可理解性之间的有吸引力的权衡。 (C)2019 Elsevier Ltd.保留所有权利。

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