银行分控模型

1.神经网络

 1 '''神经网络测试'''
 2 import pandas as pd
 3 from keras.models import Sequential
 4 from keras.layers.core import Dense, Activation
 5 import numpy as np
 6 
 7 # 参数初始化
 8 inputfile = 'data/bankloan.xls'
 9 data = pd.read_excel(inputfile)
10 x_test = data.iloc[:,:8].values
11 y_test = data.iloc[:,8].values
12 
13 model = Sequential()  # 建立模型
14 model.add(Dense(input_dim = 8, units = 8))
15 model.add(Activation('relu'))  # 用relu函数作为激活函数,能够大幅提供准确度
16 model.add(Dense(input_dim = 8, units = 1))
17 model.add(Activation('sigmoid'))  # 由于是0-1输出,用sigmoid函数作为激活函数
18 
19 model.compile(loss = 'mean_squared_error', optimizer = 'adam')
20 # 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
21 # 另外常见的损失函数还有mean_squared_error、categorical_crossentropy等,请阅读帮助文件。
22 # 求解方法我们指定用adam,还有sgd、rmsprop等可选
23 
24 model.fit(x_test, y_test, epochs = 1000, batch_size = 10)
25 
26 predict_x=model.predict(x_test)
27 classes_x=np.argmax(predict_x,axis=1)
28 yp = classes_x.reshape(len(y_test))
29 
30 def cm_plot(y, yp):
31 
32   from sklearn.metrics import confusion_matrix
33 
34   cm = confusion_matrix(y, yp)
35 
36   import matplotlib.pyplot as plt
37   plt.matshow(cm, cmap=plt.cm.Greens)
38   plt.colorbar()
39 
40   for x in range(len(cm)):
41     for y in range(len(cm)):
42       plt.annotate(cm[x,y], xy=(x, y), horizontalalignment='center', verticalalignment='center')
43 
44   plt.ylabel('True label')
45   plt.xlabel('Predicted label')
46   return plt
47 
48 cm_plot(y_test,yp).show()# 显示混淆矩阵可视化结果
49 
50 score  = model.evaluate(x_test,y_test,batch_size=128)  # 模型评估
51 print(score)

测试结果:

 

 2.SVM

 1 from sklearn import svm
 2 from sklearn.metrics import accuracy_score
 3 from sklearn.metrics import confusion_matrix
 4 from matplotlib import pyplot as plt
 5 import pandas as pd
 6 import numpy as np
 7 import seaborn as sns
 8 from sklearn.model_selection import train_test_split
 9 data_load = "data/bankloan.xls"
10 data = pd.read_excel(data_load)
11 data.describe()
12 data.columns
13 data.index
14 ## 转为np 数据切割
15 X = np.array(data.iloc[:,0:-1])
16 y = np.array(data.iloc[:,-1])
17 X_train, X_test, y_train, y_test = train_test_split(X, y, random_state=1, train_size=0.8, test_size=0.2, shuffle=True)
18 svm = svm.SVC()
19 svm.fit(X_test,y_test)
20 y_pred = svm.predict(X_test)
21 accuracy_score(y_test, y_pred)
22 print(accuracy_score(y_test, y_pred))
23 cm = confusion_matrix(y_test, y_pred)
24 heatmap = sns.heatmap(cm, annot=True, fmt='d')
25 heatmap.yaxis.set_ticklabels(heatmap.yaxis.get_ticklabels(), rotation=0, ha='right')
26 heatmap.xaxis.set_ticklabels(heatmap.xaxis.get_ticklabels(), rotation=45, ha='right')
27 plt.ylabel("true label")
28 plt.xlabel("predict label")
29 plt.show()

测试结果:

 

 3.决策树

 1 import pandas as pd
 2 # 参数初始化
 3 filename = 'data/bankloan.xls'
 4 data = pd.read_excel(filename)  # 导入数据
 5 
 6 # 数据是类别标签,要将它转换为数据
 8 
 9 x = data.iloc[:,:8].astype(int)
10 y = data.iloc[:,8].astype(int)
11 
12 
13 from sklearn.tree import DecisionTreeClassifier as DTC
14 dtc = DTC(criterion='entropy')  # 建立决策树模型,基于信息熵
15 dtc.fit(x, y)  # 训练模型
16 
17 # 导入相关函数,可视化决策树。
18 # 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。
19 from sklearn.tree import export_graphviz
20 x = pd.DataFrame(x)
21 
22 """
23 string1 = '''
24 edge [fontname="NSimSun"];
25 node [ fontname="NSimSun" size="15,15"];
26 {
27 '''
28 string2 = '}'
29 """
30 
31 with open("data/tree.dot", 'w') as f:
32     export_graphviz(dtc, feature_names = x.columns, out_file = f)
33     f.close()
34 
35 
36 from IPython.display import Image
37 from sklearn import tree
38 import pydotplus
39 
40 dot_data = tree.export_graphviz(dtc, out_file=None,  #regr_1 是对应分类器
41                          feature_names=data.columns[:8],   #对应特征的名字
42                          class_names=data.columns[8],    #对应类别的名字
43                          filled=True, rounded=True,
44                          special_characters=True)
45 
46 graph = pydotplus.graph_from_dot_data(dot_data)
47 graph.write_png('data/example.png')    #保存图像
48 Image(graph.create_png())

测试结果:

 

 

 

 

 

posted @ 2022-03-30 09:16  酒久  阅读(25)  评论(0编辑  收藏  举报