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Could Decision Trees Improve the Classification Accuracy and Interpretability of Loan Granting Decisions?

机译:决策树可以提高贷款的分类准确性和可解释性吗?

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The paper compares the classification performance rate of eight models: logistic regression (LR), neural network (NN), radial basis function neural network (RBFNN), support vector machine (SVM), case-base reasoning (CBR), and three decision trees (DTs), We build models and test their classification accuracy rates on a historical data set provided by a German financial institution. The data set contains 21 financial attributes of 1000 customers. Though at the time of loan application all individuals deemed to the institution to be qualified to obtain a loan, 300 of them defaulted upon a loan and 700 paid it off. To obtain reliable and unbiased error estimates for each of the eight models we apply 10-fold cross-validation and repeat an experiment 10 times. We found that in the overall classification accuracy rates at 0.5 probability cut-off, two of the three DT models significantly outperformed (at α=0.05) the other remaining models. We then concentrate our attention on DT models and compare their performance at 0.3 and 0.7 cut-off levels which are more likely to be used by financial institutions. The DT models not only classify better than the other models, but the knowledge they learn in the form of if-then rules is easy to interpret, makes sense, and might be of value to financial institutions which may have to explain the reasons for a loan denial.
机译:逻辑回归(LR),神经网络(NN),径向基函数神经网络(RBFNN),支持向量机(SVM),壳体基推理(CBR),和三个决定:纸的八个模型分类性能速率比较树(DTS),我们建立模型和测试他们对德国的金融机构提供的历史数据集的分类准确率。该数据集包含1000个客户的21个金融属性。虽然在贷款申请时认为该机构所有个人有资格获得贷款,其中300在拖欠贷款,并支付700它关闭。要获得每个八款车型的可靠的和公正的误差估计我们采用10倍交叉验证,重复实验10次。我们发现,在整体分类准确率在0.5概率截止时,三个DT模型显著优于(在α= 0.05),其它剩余的车型。然后,我们把注意力集中在DT模型,并在0.3比较它们的性能和0.7切断其更可能水平由金融机构使用。该DT模型不仅分门别类优于其他车型,但他们的if-then规则是容易理解的形式学习专业知识,是有道理的,而且可能是有价值的金融机构可能不得不解释的原因贷款否认。

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