基于fintech支持向量机的消费信贷再评级与分析的神经网络模型

H. F. Duque, C. Posada, G. J. Tobon, Alejandro Peña, H. A. Patiño
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引用次数: 1

摘要

近年来,世界上收入最低的人群大大增加了对小额信贷的需求。然而,提供这种数额的许多金融实体并没有适应该市场具体特点的授予模式。因此,发展以新的体制政策为基础的赠款模式是有意义的,这种模式综合了专门为这部分人口设计的数量和质量资料。本文提出了一种方法,从一个数据库对应于一个金融机构,致力于资源的有效安置信贷的再利率。对于这个重新评级,使用了具有逻辑核的向量支持机,它具有灵活性和高分类能力,允许生成三个授权模型,其结果显示了定义给定金融实体的授权策略的部分关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network model to re-rate and analyze consumer credit for Fintechs support vector machine
In recent years, the lowest income population worldwide has considerably increased the demand for credit of low amounts. However, many of the financial entities that provide such amounts do not have granting models that adapt to the specific characteristics of that market. Therefore, the development of granting models that are based on new institutional policies, which integrate quantitative and qualitative information designed exclusively to serve this sector of the population, is relevant. This article presents a methodology for the re-rate of credits from a database corresponding to a financial institution that is dedicated to the placement of resources effectively. For this re-rate a Vector Support Machine with Logistic Kernel was used, which given its flexibility and high classification capacity, allowed generating three granting models, where its results showed the partial relationships that define the granting policies of a given financial entity.
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