信用评分对伊斯兰金融有用吗?神经网络方法

Hussein A. Abdou, Shaair T. Alam, James Mulkeen
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引用次数: 10

摘要

目的——本文旨在区分英国伊斯兰金融机构的决策过程是否可以通过使用信用评分建模技术来改进,而不是目前使用的判断方法。辅助目标是确定评分模型如何重新分类被录取的申请人,后来被认为是信用不良的,有多少被拒绝的申请人后来被认为是信用良好的,并突出在接受和拒绝申请人方面至关重要的重要变量,这可以进一步帮助决策过程。设计/方法/方法——使用了487个申请人的真实数据集,包括336个接受的信贷申请和151个拒绝的信贷申请,这些申请是向英国的一家伊斯兰金融公司提出的。为了构建所提出的评分模型,将数据集分为训练子集和保留子集。训练子集用于构建评分模型,保留子集用于测试评分模型的预测能力。全部申请人的70%将用于培训子集,30%将用于测试子集。三种统计建模技术,即判别分析,逻辑回归(LR)和多层感知器(MP)神经网络,用于建立所提出的评分模型。研究结果——研究结果表明,LR模型在训练子集中具有最高的正确分类(CC)率,而MP模型优于其他技术,在保留子集中具有最高的CC率。MP在预测被拒绝的信用申请方面也优于其他技术,并且比其他技术具有最低的错误分类成本。此外,MP模型的结果表明,月支出、年龄和婚姻状况是影响决策过程的关键因素。原创性/价值——这是首次将信用评分建模技术应用于伊斯兰金融。同样,在构建评分模型时,作者的应用程序采用了一种不同的方法,即使用接受和拒绝的信用申请,而不是使用良好和不良的信用历史。这识别了将信用申请错误分类为拒绝的机会成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Would Credit Scoring Work for Islamic Finance? A Neural Network Approach
Purpose - – This paper aims to distinguish whether the decision-making process of the Islamic financial houses in the UK can be improved through the use of credit scoring modeling techniques as opposed to the currently used judgmental approaches. Subsidiary aims are to identify how scoring models can reclassify accepted applicants who later are considered as having bad credit and how many of the rejected applicants are later considered as having good credit, and highlight significant variables that are crucial in terms of accepting and rejecting applicants, which can further aid the decision-making process. Design/methodology/approach - – A real data set of 487 applicants is used consisting of 336 accepted credit applications and 151 rejected credit applications made to an Islamic finance house in the UK. To build the proposed scoring models, the data set is divided into training and hold-out subsets. The training subset is used to build the scoring models, and the hold-out subset is used to test the predictive capabilities of the scoring models. Seventy per cent of the overall applicants will be used for the training subset, and 30 per cent will be used for the testing subset. Three statistical modeling techniques, namely, discriminant analysis, logistic regression (LR) and multilayer perceptron (MP) neural network, are used to build the proposed scoring models. Findings - – The findings reveal that the LR model has the highest correct classification (CC) rate in the training subset, whereas MP outperforms other techniques and has the highest CC rate in the hold-out subset. MP also outperforms other techniques in terms of predicting the rejected credit applications and has the lowest misclassification cost above other techniques. In addition, results from MP models show that monthly expenses, age and marital status are identified as the key factors affecting the decision-making process. Originality/value - – This contribution is the first to apply credit scoring modeling techniques in Islamic finance. Also in building a scoring model, the authors' application applies a different approach by using accepted and rejected credit applications instead of good and bad credit histories. This identifies opportunity costs of misclassifying credit applications as rejected.
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