Fuzzy Expert System for Bank Loan Approval

A. Ismail
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Abstract

Background: Bank loan approval is one of the important pillars of the banking system; it is the process of approving or denying a loan to companies or individual customers by the bank. The approval process has a lot of parameters to be taken into consideration, which is ambiguous in nature; hence, bank loan approval required special knowledge to be executed. Aim: Due to the ambiguity of the approval process, we proposed the use of a fuzzy expert system which proved to handle such ambiguous problems to help banks easily and accurately make decisions on bank credit approval. This proposed fuzzy expert system will help banks in making accurate decisions easily even in the absence of the domain expert on credit approval based on the knowledge of an expert in the field. Method: The proposed fuzzy expert system was developed using a fuzzy tool in MATLAB software and it has two stages, where the first stage decides on three output parameters which are repayment, ability manage, and risk. Total asset, credit repayment, 18% earning, business stability, credit missed, asset/debt ratio, bond rating, and dollar to Naira ratio are the input parameters for the first stage of the system. The second stage of the system used the output parameters values of the first stage as its input parameters to make the final decision on whether to approve the credit or not. Results: Using 0.938, 0.583, 0.715, 0.88, 0.104, 0.897, 0.842, and 0.856 membership degree for total asset, credit request (loan amount), 18% earning, business stability, asset/debt ratio, bond rating, and dollar to naira ratio respectively as an input to the first stage of the system, the resultant output were 0.625, 0.367, and 0.25 for repayment, ability manage, and risk respectively, and those were feed to the second stage and result in 0.656 loan membership degree which means the loan can be approve to the customer
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银行贷款审批模糊专家系统
背景:银行贷款审批是银行体系的重要支柱之一;它是银行批准或拒绝向公司或个人客户提供贷款的过程。审批过程中有很多需要考虑的参数,这在本质上是模糊的;因此,银行贷款审批需要特殊知识才能执行。目的:针对审批过程的模糊性,提出利用模糊专家系统来处理这类模糊性问题,帮助银行更方便、准确地进行银行信贷审批决策。本文提出的模糊专家系统可以帮助银行在没有领域专家的情况下,根据该领域专家的知识,轻松地做出准确的信贷审批决策。方法:利用MATLAB软件中的模糊工具开发所提出的模糊专家系统,该系统分为两个阶段,其中第一阶段确定还款、能力管理和风险三个输出参数。总资产、信用偿还、18%的收益、业务稳定性、信用缺失、资产负债率、债券评级和美元对奈拉比率是系统第一阶段的输入参数。系统的第二阶段使用第一阶段的输出参数值作为其输入参数,最终决定是否批准信贷。结果:将总资产、信贷请求(贷款金额)、18%收入、业务稳定性、资产负债率、债券评级、美元对奈拉比率的隶属度分别为0.938、0.583、0.715、0.88、0.104、0.897、0.842、0.856作为系统第一阶段的输入,得到的偿还、管理能力、风险的输出分别为0.625、0.367、0.25。这些被反馈到第二阶段,结果是0.656的贷款成员度,这意味着贷款可以被批准给客户
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