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ML_Logistic_Regression

发布时间:2025/4/16 53 豆豆
生活随笔 收集整理的这篇文章主要介绍了 ML_Logistic_Regression 小编觉得挺不错的,现在分享给大家,帮大家做个参考.

机器学习100天系列学习笔记 机器学习100天(中文翻译版)机器学习100天(英文原版)
代码阅读:

第一步:导包

#Step 1: Importing the Libraries import numpy as np import matplotlib.pyplot as plt import pandas as pd

第二步:导入数据

#Step 2: Importing the dataset dataset = pd.read_csv('D:/daily/机器学习100天/100-Days-Of-ML-Code-中文版本/100-Days-Of-ML-Code-master/datasets/Social_Network_Ads.csv') X = dataset.iloc[:, [2, 3]].values y = dataset.iloc[:, 4].values

第三步:划分训练集、测试集

#Step 3: Splitting the dataset into the Training set and Test set from sklearn.model_selection import train_test_split X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.25, random_state = 0)

第四步:特征缩放

#Step 4: Feature Scaling from sklearn.preprocessing import StandardScaler sc = StandardScaler() X_train = sc.fit_transform(X_train) X_test = sc.transform(X_test)

经过特征缩放后的X_train:

[[ 0.58164944 -0.88670699][-0.60673761 1.46173768][-0.01254409 -0.5677824 ][-0.60673761 1.89663484][ 1.37390747 -1.40858358][ 1.47293972 0.99784738][ 0.08648817 -0.79972756][-0.01254409 -0.24885782][-0.21060859 -0.5677824 ]...]

对于进行特征缩放这一步,个人认为是非常重要的,它可以加快计算速度,在深度学习中间尤为重要(梯度爆炸问题)。

第五步:Logistic Regression

#Step 5: Fitting Logistic Regression to the Training set from sklearn.linear_model import LogisticRegression classifier = LogisticRegression() classifier.fit(X_train, y_train)

第六步:预测

#Step 6: Predicting the Test set results y_pred = classifier.predict(X_test)

第七步:混淆矩阵

#Step 7: Making the Confusion Matrix from sklearn.metrics import confusion_matrix from sklearn.metrics import classification_report cm = confusion_matrix(y_test, y_pred) print(cm) # print confusion_matrix print(classification_report(y_test, y_pred)) # print classification report

混淆:简单理解为一个class被预测成另一个class。
给一个参考链接 混淆矩阵

第八步:可视化

#Step 8: Visualization from matplotlib.colors import ListedColormap X_set,y_set = X_train,y_train X1,X2 = np. meshgrid(np. arange(start=X_set[:,0].min()-1, stop=X_set[:,0].max()+1, step=0.01),np. arange(start=X_set[:,1].min()-1, stop=X_set[:,1].max()+1, step=0.01)) plt.contourf(X1, X2, classifier.predict(np.array([X1.ravel(),X2.ravel()]).T).reshape(X1.shape),alpha = 0.75, cmap = ListedColormap(('red', 'green'))) plt.xlim(X1.min(),X1.max()) plt.ylim(X2.min(),X2.max())for i,j in enumerate(np.unique(y_set)):plt.scatter(X_set[y_set==j,0],X_set[y_set==j,1],c = ListedColormap(('red', 'green'))(i), label=j) plt. title(' LOGISTIC(Training set)') plt. xlabel(' Age') plt. ylabel(' Estimated Salary') plt. legend() plt. show()X_set,y_set=X_test,y_test X1,X2=np. meshgrid(np. arange(start=X_set[:,0].min()-1, stop=X_set[:, 0].max()+1, step=0.01),np. arange(start=X_set[:,1].min()-1, stop=X_set[:,1].max()+1, step=0.01))plt.contourf(X1, X2, classifier.predict(np.array([X1.ravel(),X2.ravel()]).T).reshape(X1.shape),alpha = 0.75, cmap = ListedColormap(('red', 'green'))) plt.xlim(X1.min(),X1.max()) plt.ylim(X2.min(),X2.max()) for i,j in enumerate(np. unique(y_set)):plt.scatter(X_set[y_set==j,0],X_set[y_set==j,1],c = ListedColormap(('red', 'green'))(i), label=j)plt. title(' LOGISTIC(Test set)') plt. xlabel(' Age') plt. ylabel(' Estimated Salary') plt. legend() plt. show()

可视化这一部分代码可能比较难理解,函数meshgrid是生成一个二维矩阵,大小为X*Y数据个数,这里为(592, 616);函数ravel将矩阵X1(二维)矩阵展开为一维矩阵(364672,);函数reshape将(364672,)转为跟矩阵X1大小一致的二维矩阵;
参数alpha为透明度;函数unique返回参数数组y_set中所有不同的值,并按照从小到大排序,这里返回(0,1);函数enumerate() 用于将一个可遍历的数据对象enumerate;这里循环i,j取0或1,
标签y_setj成立,True=1,标签y_setj不成立,Flase=0,所以0为红色点,1为绿色点。
做出的图为:


全部代码:

#Day 4: Simple Linear Regression 2022/4/7 #Step 1: Importing the Libraries import numpy as np import matplotlib.pyplot as plt import pandas as pd#Step 2: Importing the dataset dataset = pd.read_csv('D:/daily/机器学习100天/100-Days-Of-ML-Code-中文版本/100-Days-Of-ML-Code-master/datasets/Social_Network_Ads.csv') X = dataset.iloc[:, [2, 3]].values y = dataset.iloc[:, 4].values#Step 3: Splitting the dataset into the Training set and Test set from sklearn.model_selection import train_test_split X_train, X_test, y_train, y_test = train_test_split(X, y, test_size = 0.25, random_state = 0)#Step 4: Feature Scaling from sklearn.preprocessing import StandardScaler sc = StandardScaler() X_train = sc.fit_transform(X_train) X_test = sc.transform(X_test) #print(X_train)#Step 5: Fitting Logistic Regression to the Training set from sklearn.linear_model import LogisticRegression classifier = LogisticRegression() classifier.fit(X_train, y_train)#Step 6: Predicting the Test set results y_pred = classifier.predict(X_test)#Step 7: Making the Confusion Matrix from sklearn.metrics import confusion_matrix from sklearn.metrics import classification_report cm = confusion_matrix(y_test, y_pred) print(cm) # print confusion_matrix print(classification_report(y_test, y_pred)) # print classification report#Step 8: Visualization from matplotlib.colors import ListedColormap X_set,y_set = X_train,y_train X1,X2 = np. meshgrid(np. arange(start=X_set[:,0].min()-1, stop=X_set[:,0].max()+1, step=0.01),np. arange(start=X_set[:,1].min()-1, stop=X_set[:,1].max()+1, step=0.01)) plt.contourf(X1, X2, classifier.predict(np.array([X1.ravel(),X2.ravel()]).T).reshape(X1.shape),alpha = 0.75, cmap = ListedColormap(('red', 'green'))) plt.xlim(X1.min(),X1.max()) plt.ylim(X2.min(),X2.max())for i,j in enumerate(np.unique(y_set)):plt.scatter(X_set[y_set==j,0],X_set[y_set==j,1],c = ListedColormap(('red', 'green'))(i), label=j) plt. title(' LOGISTIC(Training set)') plt. xlabel(' Age') plt. ylabel(' Estimated Salary') plt. legend() plt. show()X_set,y_set=X_test,y_test X1,X2=np. meshgrid(np. arange(start=X_set[:,0].min()-1, stop=X_set[:, 0].max()+1, step=0.01),np. arange(start=X_set[:,1].min()-1, stop=X_set[:,1].max()+1, step=0.01))plt.contourf(X1, X2, classifier.predict(np.array([X1.ravel(),X2.ravel()]).T).reshape(X1.shape),alpha = 0.75, cmap = ListedColormap(('red', 'green'))) plt.xlim(X1.min(),X1.max()) plt.ylim(X2.min(),X2.max()) for i,j in enumerate(np. unique(y_set)):plt.scatter(X_set[y_set==j,0],X_set[y_set==j,1],c = ListedColormap(('red', 'green'))(i), label=j)plt. title(' LOGISTIC(Test set)') plt. xlabel(' Age') plt. ylabel(' Estimated Salary') plt. legend() plt. show()

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