Transparent Neural based Expert System for Credit Risk (TNESCR): An Automated Credit Risk Evaluation System

Abhinaba Dattachaudhuri, S. Biswas, Sunita Sarkar, Arpita Nath Boruah, Manomita Chakraborty, B. Purkayastha
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Abstract

Nowadays credit risk evaluation is very crucial in financial domain. Whenever it is processed by an individual, it becomes controversial as the assessment may be prone to human error. Recently, to overcome this issue, some automated systems have been developed for credit risk evaluation. Most of the developed systems focused on the credit decision only and neglected the transparency of the systems; however, many cases require transparency of the credit decision to benefit financial organization as well as the potential customers. Therefore, this paper proposes an expert system named Transparent Neural based Expert System for Credit Risk (TNESCR) evaluation which uses a white box neural model Rule Extraction from Neural Network using Classified and Misclassified data (RxNCM) to generate rules from financial data. The generated rules are so transparent to justify the explanations for why applications are granted/rejected with a significant predictive accuracy. The proposed TNESCR is validated using 10 fold cross validation with 3 credit risk datasets. The experimental results show the proposed TNESCR can perform significantly with great transparency and accuracy.
基于透明神经网络的信用风险专家系统(TNESCR):一种自动化的信用风险评估系统
信用风险评估是当前金融领域的一个重要研究课题。每当它由个人处理时,它就会变得有争议,因为评估可能容易出现人为错误。近年来,为了克服这一问题,人们开发了一些信用风险评估自动化系统。发达的制度大多只关注信用决策,忽视了制度的透明度;然而,许多情况需要信贷决策的透明度,以使金融机构和潜在客户受益。为此,本文提出了一种基于透明神经网络的信用风险评估专家系统(TNESCR),该系统采用基于分类和误分类数据的神经网络规则提取(RxNCM)的白盒神经模型从金融数据中生成规则。生成的规则是如此透明,可以证明为什么申请被批准/拒绝的解释具有显著的预测性准确性。提出的TNESCR使用3个信用风险数据集的10倍交叉验证进行验证。实验结果表明,该方法具有良好的透明性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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