Python 西瓜书 使用数据集3.0α线性核和高斯核训练SVM+散点图可视化

西瓜数据集3.0α

# -*- coding: utf-8 -*-
import numpy as np
import matplotlib.pyplot as plt
from sklearn import svm
import pandas as pd
from sklearn.metrics import accuracy_score#返回正确的比例
from sklearn.preprocessing import LabelEncoder

plt.rcParams['font.sans-serif'] = ['SimHei'] #用来正常显示中文标签
plt.rcParams['axes.unicode_minus'] = False #用来正常显示负号
plt.close('all')

def main():
#1.获取x,y
    data = pd.read_table('watermelon30a.txt',delimiter=',')    
    x = pd.DataFrame({'密度':data['密度'],'含糖率':data['含糖率']})
    x = x.values.tolist()    
    encoder = LabelEncoder()#将好瓜坏瓜映射为1/0
    y = encoder.fit_transform(data['好瓜']).tolist()
    x,y = np.array(x),np.array(y)    
#2.1.线性核    
    linear_svm = svm.SVC(C=0.5, #惩罚参数
            kernel='linear')
    linear_svm.fit(x,y)
    y_pred = linear_svm.predict(x)
    print('**linear_svm的准确率**: %s' %(accuracy_score(y_pred=y_pred, y_true=y)))    
##2.2.高斯核
    gauss_svm = svm.SVC(C=0.5,
                        kernel='rbf')
    gauss_svm.fit(x,y)
    y_pred2 = gauss_svm.predict(x)
    print('**gauss_svm的准确率**: %s' %(accuracy_score(y_pred=y_pred2, y_true=y)))   
    class_method = {'线性核':linear_svm,'高斯核':gauss_svm}
    visual(data,class_method)

##数据特征可视化
def visual(data,class_method):
    colormap = dict(zip(data['好瓜'].value_counts().index.tolist(),['blue','green']))#坏瓜好瓜颜色
    die = data.groupby('好瓜')    
    plt.figure()
    for species,klass in die:
        plt.scatter(klass['密度'],klass['含糖率'],
                    color = colormap[species],
                    label = species
                    )
    for name,model in class_method.items():
        sv = model.support_vectors_
        plt.plot(sv[:,0],sv[:,1],label=str(name)+'_supported_vector')    
    plt.legend(frameon=True, title='好瓜',loc="upper left")    
    plt.title('SVC')
    plt.show()
    
if __name__=="__main__":
    main()
    

结果表明,使用线性核和高斯训练核的支持向量实际是一样的(两条线重合):

发布了10 篇原创文章 · 获赞 9 · 访问量 586

猜你喜欢

转载自blog.csdn.net/qq_36937684/article/details/105246275
今日推荐