• 银行风控模型


    一、决策树

    代码如下:

    # -*- coding: utf-8 -*-
    """
    Created on Sun Mar 27 00:01:20 2022
    
    @author: dd
    """
    
    import pandas as pd
    # 参数初始化
    filename ='D:/ISS/anaconda/bankloan.xls'
    data = pd.read_excel(filename)  # 导入数据
    
    x = data.iloc[:,:8].astype(int)
    y = data.iloc[:,8].astype(int)
    
    from sklearn.tree import DecisionTreeClassifier as DTC
    dtc = DTC(criterion='entropy')  # 建立决策树模型,基于信息熵
    dtc.fit(x, y)  # 训练模型
    
    # 导入相关函数,可视化决策树。
    # 导出的结果是一个dot文件,需要安装Graphviz才能将它转换为pdf或png等格式。
    from sklearn.tree import export_graphviz
    x = pd.DataFrame(x)
    
    """
    string1 = '''
    edge [fontname="NSimSun"];
    node [ fontname="NSimSun" size="15,15"];
    {
    ''' 
    string2 = '}'
    """
     
    with open("tree.dot", 'w') as f:
        export_graphviz(dtc, feature_names = x.columns, out_file = f)
        f.close()
    
    from IPython.display import Image  
    from sklearn import tree
    import pydotplus 
    
    dot_data = tree.export_graphviz(dtc, out_file=None,  #regr_1 是对应分类器
                             feature_names=data.columns[:8],   #对应特征的名字
                             class_names=data.columns[8],    #对应类别的名字
                             filled=True, rounded=True,  
                             special_characters=True)  
     
    dot_data = dot_data.replace('helvetica 14', 'MicrosoftYaHei 14') #修改字体
    graph = pydotplus.graph_from_dot_data(dot_data)  
    graph.write_png('D:/ISS/anaconda/tmp/banktree.png')    #保存图像
    Image(graph.create_png())
    
    import matplotlib.pyplot as plt
    img = plt.imread('D:/ISS/anaconda/tmp/banktree.png')
    fig = plt.figure('show picture')
    plt.imshow(img)

    结果如下:

     

    二、神经网络

    代码如下:

    # -*- coding: utf-8 -*-
    """
    Created on Sun Mar 27 00:04:18 2022
    
    @author: dd
    """
    
    import pandas as pd
    from tensorflow.python.keras.models import Sequential
    from tensorflow.python.keras.layers.core import Dense, Activation
    
    
    # 参数初始化
    inputfile = 'D:/ISS/anaconda/bankloan.xls'
    data = pd.read_excel(inputfile)
    x_test = data.iloc[:,:8].values
    y_test = data.iloc[:,8].values
    
    model = Sequential()  # 建立模型
    model.add(Dense(input_dim = 8, units = 8))
    model.add(Activation('relu'))  # 用relu函数作为激活函数,能够大幅提供准确度
    model.add(Dense(input_dim = 8, units = 1))
    model.add(Activation('sigmoid'))  # 由于是0-1输出,用sigmoid函数作为激活函数
    
    model.compile(loss = 'mean_squared_error', optimizer = 'adam')
    # 编译模型。由于我们做的是二元分类,所以我们指定损失函数为binary_crossentropy,以及模式为binary
    # 另外常见的损失函数还有mean_squared_error、categorical_crossentropy等,请阅读帮助文件。
    # 求解方法我们指定用adam,还有sgd、rmsprop等可选
    
    model.fit(x_test, y_test, epochs = 1000, batch_size = 10)  # 训练模型,学习一千次
    import numpy as np
    predict_x=model.predict(x_test) 
    classes_x=np.argmax(predict_x,axis=1)
    yp = classes_x.reshape(len(y_test))
    
    score = model.evaluate(x_test, y_test, batch_size=128)  #分类预测精确度
    print(score)
    
    from cm_plot import *  # 导入自行编写的混淆矩阵可视化函数
    cm_plot(y_test,yp).show()

    其中,绘制混淆矩阵的函数cm_plot.py具体代码如下:

    #-*- coding: utf-8 -*-
    def cm_plot(y, yp):
      
      from sklearn.metrics import confusion_matrix 
    
      cm = confusion_matrix(y, yp) 
      
      import matplotlib.pyplot as plt
      plt.matshow(cm, cmap=plt.cm.Greens) 
      plt.colorbar() 
      
      for x in range(len(cm)): 
        for y in range(len(cm)):
          plt.annotate(cm[x,y], xy=(x, y), horizontalalignment='center', verticalalignment='center')
      
      plt.ylabel('True label') 
      plt.xlabel('Predicted label') 
      return plt

    结果如下:

     混淆矩阵如下:

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  • 原文地址:https://www.cnblogs.com/deng11/p/16062653.html
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