• 支持向量机之知识汇总


    1.支持向量机推导

    2.案例

    import numpy as np
    import sklearn.model_selection as ms
    import sklearn.svm as svm
    import sklearn.metrics as sm
    import matplotlib.pyplot as mp
    import matplotlib as mpl
    
    #绘制分类图的过程
    #1.求出所有的格点,并绘出预测结果。 2.画出测试数据的散点图,
    if __name__ == '__main__':
        data=np.loadtxt(open("/home/python/Desktop/test.csv"),dtype=float,delimiter=",",)
        train_x,test_x,train_y,test_y=ms.train_test_split(data[:,:-1],data[:,-1],test_size=0.25)
        svm1=svm.SVC(kernel="linear",C=100,class_weight="balanced")
        svm1.fit(train_x,train_y)
        result=svm1.predict(test_x)
        s=sm.classification_report(test_y,result)#分类准确率相关数据
        #绘制分类图
        x1_min,x1_max=data[:,0].min()-1,data[:,0].max()+1
        x2_min, x2_max = data[:, 1].min()-1, data[:, 1].max() + 1
        x1,x2=np.meshgrid(np.linspace(x1_min,x1_max,num=100),np.linspace(x2_min, x2_max, num=100))
        b=np.column_stack((x1.flatten(),x2.flatten()))
        result=svm1.predict(b)
        mp.pcolormesh(x1,x2,result.reshape(x1.shape),cmap="jet")
        mp.scatter(test_x[:,0],test_x[:,1],s=30,c=test_y,cmap="gray",label="sample")
        mp.show()

    2.松弛因子

    3.低维高维转换内积

    4.核函数

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  • 原文地址:https://www.cnblogs.com/xuehaiwuya0000/p/11663982.html
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