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Application of Business Risk Prediction Model Based on the Logistic Regression Model

机译:Logistic回归模型的业务风险预测模型的应用

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Credit risk is one of the three components making up financial risk. Under the New Basel Capital Accord, default risk has been listed as the most important factor for credit risk among all elements that affect risk of credit. Banks in China currently leave large quantities of cash idle due to difficulty in loan recovery. This essay first analyzes the distributional features of variables' cross-section data concerning the default rate. Based on credible data, this research then undertakes the choice of appropriate default prediction model. The Binary Logistic Regression Model is adopted here to build the default rate model of business credit risk and analyze the risk information generated, in hopes of helping banks find the correct loaning strategies.
机译:信用风险是构成金融风险的三个组成部分之一。在《新巴塞尔资本协议》下,违约风险已被列为影响信用风险的所有因素中信用风险的最重要因素。由于难以收回贷款,中国的银行目前使大量现金处于闲置状态。本文首先分析了与默认利率有关的变量横截面数据的分布特征。基于可靠的数据,本研究然后进行适当的默认预测模型的选择。本文采用二元Logistic回归模型建立企业信用风险的违约率模型,并对产生的风险信息进行分析,以期帮助银行找到正确的借贷策略。

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