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首页> 外文期刊>Journal of Emerging Market Finance >Modelling Credit Default in Microfinance-An Indian Case Study
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Modelling Credit Default in Microfinance-An Indian Case Study

机译:小额信贷中的信用违约建模-印度案例研究

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Credit score models have been successfully applied in a traditional credit card industry and by mortgage firms to determine defaulting customer from the non-defaulting customer. In the light of growing competition in the microfinance industry, over-indebtedness and other factors, the industry has come under increased regulatory supervision. Our study provides evidence from a large microfinance institutions (MFI) in India, and we have applied both the credit scoring method and neural network (NN) method and compared the results. In this article, we demonstrate the capability of credit scoring models for an Indian-based microfinance firm in terms of predicting default probability as well the relative importance of each of its associated drivers. A logistic regression model and NN have been used as the predictive analytic tools for sifting the key drivers of default.
机译:信用评分模型已成功应用于传统的信用卡行业,并已被抵押贷款公司成功用于从非违约客户中确定违约客户。鉴于小额信贷行业竞争日益加剧,过度负债和其他因素,该行业已受到越来越多的监管监督。我们的研究提供了来自印度大型小额信贷机构(MFI)的证据,并且我们同时应用了信用评分方法和神经网络(NN)方法并比较了结果。在本文中,我们展示了一家印度小额信贷公司信用评分模型的功能,该模型可以预测违约概率以及每个相关驱动因素的相对重要性。 Logistic回归模型和NN已被用作预测违约的关键驱动因素的预测分析工具。

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