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Credit Scoring Kelayakan Debitur Menggunakan Metode Hybrid ANN Backpropagation dan TOPSIS

机译:信用评分可行性债务人使用混合ANN BROWPROMAGAGAGE和TOPSIS方法

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Credit is one of the common practices that provide benefits for financial or non-financial institutions. However on the other hand, aid loans also have higher risks if the institutions give the wrong decision in giving a loan. Credit Scoring is one of techniques that can determine whether it is feasible to given a loan or not. The selection of a credit scoring model greatly determines the value in classifying credit that is feasible or not to giving a loan. Decision Support System (DSS) is one system that can be used to overcome this problem. The advantages of DSS are being able to overcome the problems that have semi-structured and unstructured data. In this study, DSS was supported by using Artificial Neural Network Backpropagation method and TOPSIS method to find the priority for seeking eligibility. Accuracy results obtained in this study reached 98,69% with the number of iteration is 300, the number of training data is 30, neuron hidden 12 and error tolerance is 0.001. TOPSIS method succeeded in ranking 185 data selected as recipients of credit.
机译:信用是为财务或非金融机构提供福利的常见做法之一。然而,另一方面,如果机构在提供贷款方面提供错误的决定,援助贷款也具有更高的风险。信用评分是可以判断贷款是否可行的技术之一。选择信用评分模型的选择大大决定了归类信用的价值,这是可行或不提供贷款的。决策支持系统(DSS)是一个可用于克服此问题的系统。 DSS的优点是能够克服半结构化和非结构化数据的问题。在本研究中,通过使用人工神经网络反向化方法和TopSIS方法来支持DSS,以找到寻求资格的优先权。在本研究中获得的准确性结果达到98,69%,迭代的数量为300,训练数据的数量为30,神经元隐藏12和误差容差为0.001。 Topsis方法成功排名为185个被选为信用收件人的数据。

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