Predicting default risk bancassurance using GMDH and dce-GMDH neural network models

IF 2.9 Q2 BUSINESS
Jamil Jaber, Rami S. Alkhawaldeh, Ibrahim N. Khatatbeh
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引用次数: 0

Abstract

Purpose This study aims to develop a novel approach for predicting default risk in bancassurance, which plays a crucial role in the relationship between interest rates in banks and premium rates in insurance companies. The proposed method aims to improve default risk predictions and assist with client segmentation in the banking system. Design/methodology/approach This research introduces the group method of data handling (GMDH) technique and a diversified classifier ensemble based on GMDH (dce-GMDH) for predicting default risk. The data set comprises information from 30,000 credit card clients of a large bank in Taiwan, with the output variable being a dummy variable distinguishing between default risk (0) and non-default risk (1), whereas the input variables comprise 23 distinct features characterizing each customer. Findings The results of this study show promising outcomes, highlighting the usefulness of the proposed technique for bancassurance and client segmentation. Remarkably, the dce-GMDH model consistently outperforms the conventional GMDH model, demonstrating its superiority in predicting default risk based on various error criteria. Originality/value This study presents a unique approach to predicting default risk in bancassurance by using the GMDH and dce-GMDH neural network models. The proposed method offers a valuable contribution to the field by showcasing improved accuracy and enhanced applicability within the banking sector, offering valuable insights and potential avenues for further exploration.
利用GMDH和dce-GMDH神经网络模型预测银行保险违约风险
摘要本研究旨在建立一种预测银行保险违约风险的新方法,该方法在银行利率与保险公司保费之间的关系中起着至关重要的作用。提出的方法旨在提高违约风险预测,并协助银行系统的客户细分。本研究引入数据处理的分组方法(GMDH)技术和基于GMDH的多元化分类器集成(dce-GMDH)来预测违约风险。本数据集包含台湾某大型银行三万名信用卡客户的资料,输出变量为区分违约风险(0)与非违约风险(1)的虚拟变量,而输入变量则包含每位客户的23个不同特征。本研究的结果显示了有希望的结果,突出了所提出的技术对银行保险和客户细分的有用性。值得注意的是,dce-GMDH模型始终优于传统的GMDH模型,显示了其在基于各种误差标准预测违约风险方面的优势。本研究提出一种独特的方法,利用GMDH和dce-GMDH神经网络模型来预测银行保险的违约风险。所提出的方法通过展示在银行业中提高的准确性和增强的适用性,为进一步探索提供了有价值的见解和潜在的途径,为该领域做出了宝贵的贡献。
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来源期刊
CiteScore
6.60
自引率
17.20%
发文量
50
期刊介绍: The following list indicates the key issues in the Competitiveness Review. We invite papers on these and related topics. Special issues of the Review will collect papers on specific topics selected by the editors. Definition/conceptual framework of competitiveness Competitiveness diagnostics and rankings Competitiveness and economic outcomes Specific dimensions of competitiveness Competitiveness and endowments Competitiveness and economic development Location and business strategy International business and the role of MNCs Innovation and innovative capacity Clusters and cluster initiatives Institutions for competitiveness Public policy (e.g., innovation, cluster development, regional development) The Competitiveness Review aims to publish high quality papers directed at scholars, government institutions, businesses and practitioners. It appears in collaboration with key academic and professional groups in the field of competitiveness analysis and policy, including the Microeconomics of Competitiveness (MOC) network and The Competitiveness Institute (TCI) practitioner network for competitiveness, clusters and innovation.
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