机器学习算法的Python实现 (1):logistics回归 与 线性判别分析(LDA)

先收藏。。。。。。。。。。。。

本文为笔者在学习周志华老师的机器学习教材后,写的课后习题的的编程题。之前放在答案的博文中,现在重新进行整理,将需要实现代码的部分单独拿出来,慢慢积累。希望能写一个机器学习算法实现的系列。


本文主要包括:

1、logistics回归

2、python库:

  • numpy
  • matplotlib
  • pandas
使用的数据集:机器学习教材上的西瓜数据集3.0α

Idx density ratio_sugar label
1 0.697 0.46 1
2 0.774 0.376 1
3 0.634 0.264 1
4 0.608 0.318 1
5 0.556 0.215 1
6 0.403 0.237 1
7 0.481 0.149 1
8 0.437 0.211 1
9 0.666 0.091 0
10 0.243 0.0267 0
11 0.245 0.057 0
12 0.343 0.099 0
13 0.639 0.161 0
14 0.657 0.198 0
15 0.36 0.37 0
16 0.593 0.042 0
17 0.719 0.103 0


logistic回归:
参考《机器学习实战》的内容。本题分别写了梯度上升方法以及随机梯度上升方法。对书本上的程序做了一点点改动
 
# -*- coding: cp936 -*-  
from numpy import *  
import pandas as pd  
import matplotlib.pyplot as plt  
  
#读入csv文件数据  
df=pd.read_csv('watermelon_3a.csv')  
m,n=shape(dataMat)  
df['norm']=ones((m,1))  
dataMat=array(df[['norm','density','ratio_sugar']].values[:,:])  
labelMat=mat(df['label'].values[:]).transpose()  
  
#sigmoid函数  
def sigmoid(inX):  
    return 1.0/(1+exp(-inX))  
  
#梯度上升算法  
def gradAscent(dataMat,labelMat):  
    m,n=shape(df.values)  
    alpha=0.1  
    maxCycles=500  
    weights=array(ones((n,1)))  
  
    for k in range(maxCycles):   
        a=dot(dataMat,weights)  
        h=sigmoid(a)  
        error=(labelMat-h)  
        weights=weights+alpha*dot(dataMat.transpose(),error)  
    return weights  
  
#随机梯度上升  
def randomgradAscent(dataMat,label,numIter=50):  
    m,n=shape(dataMat)  
    weights=ones(n)  
    for j in range(numIter):  
        dataIndex=range(m)  
        for i in range(m):  
            alpha=40/(1.0+j+i)+0.2  
  
            randIndex_Index=int(random.uniform(0,len(dataIndex)))  
            randIndex=dataIndex[randIndex_Index]  
            h=sigmoid(sum(dot(dataMat[randIndex],weights)))  
            error=(label[randIndex]-h)  
            weights=weights+alpha*error[0,0]*(dataMat[randIndex].transpose())  
            del(dataIndex[randIndex_Index])  
    return weights  
  
#画图  
def plotBestFit(weights):  
    m=shape(dataMat)[0]  
    xcord1=[]  
    ycord1=[]  
    xcord2=[]  
    ycord2=[]  
    for i in range(m):  
        if labelMat[i]==1:  
            xcord1.append(dataMat[i,1])  
            ycord1.append(dataMat[i,2])  
        else:  
            xcord2.append(dataMat[i,1])  
            ycord2.append(dataMat[i,2])  
    plt.figure(1)  
    ax=plt.subplot(111)  
    ax.scatter(xcord1,ycord1,s=30,c='red',marker='s')  
    ax.scatter(xcord2,ycord2,s=30,c='green')  
    x=arange(0.2,0.8,0.1)  
    y=array((-weights[0]-weights[1]*x)/weights[2])  
    print shape(x)  
    print shape(y)  
    plt.sca(ax)  
    plt.plot(x,y)      #ramdomgradAscent  
    #plt.plot(x,y[0])   #gradAscent  
    plt.xlabel('density')  
    plt.ylabel('ratio_sugar')  
    #plt.title('gradAscent logistic regression')  
    plt.title('ramdom gradAscent logistic regression')  
    plt.show()  
  
#weights=gradAscent(dataMat,labelMat)  
weights=randomgradAscent(dataMat,labelMat)  
plotBestFit(weights)  

梯度上升法得到的结果如下:

随机梯度上升法得到的结果如下:

可以看出,两种方法的效果基本差不多。但是随机梯度上升方法所需要的迭代次数要少很多


LDA的编程主要参考书上P62的3.39 以及P61的3.33这两个式子。由于用公式可以直接算出,因此比较简单
公式如下:


代码如下:
# -*- coding: cp936 -*-  
from numpy import *  
import numpy as np  
import pandas as pd  
import matplotlib.pyplot as plt  
  
df=pd.read_csv('watermelon_3a.csv')  
  
def calulate_w():  
    df1=df[df.label==1]  
    df2=df[df.label==0]  
    X1=df1.values[:,1:3]  
    X0=df2.values[:,1:3]  
    mean1=array([mean(X1[:,0]),mean(X1[:,1])])  
    mean0=array([mean(X0[:,0]),mean(X0[:,1])])  
    m1=shape(X1)[0]  
    sw=zeros(shape=(2,2))  
    for i in range(m1):  
        xsmean=mat(X1[i,:]-mean1)  
        sw+=xsmean.transpose()*xsmean  
    m0=shape(X0)[0]  
    for i in range(m0):  
        xsmean=mat(X0[i,:]-mean0)  
        sw+=xsmean.transpose()*xsmean  
    w=(mean0-mean1)*(mat(sw).I)  
    return w  
  
def plot(w):  
    dataMat=array(df[['density','ratio_sugar']].values[:,:])  
    labelMat=mat(df['label'].values[:]).transpose()  
    m=shape(dataMat)[0]  
    xcord1=[]  
    ycord1=[]  
    xcord2=[]  
    ycord2=[]  
    for i in range(m):  
        if labelMat[i]==1:  
            xcord1.append(dataMat[i,0])  
            ycord1.append(dataMat[i,1])  
        else:  
            xcord2.append(dataMat[i,0])  
            ycord2.append(dataMat[i,1])  
    plt.figure(1)  
    ax=plt.subplot(111)  
    ax.scatter(xcord1,ycord1,s=30,c='red',marker='s')  
    ax.scatter(xcord2,ycord2,s=30,c='green')  
    x=arange(-0.2,0.8,0.1)  
    y=array((-w[0,0]*x)/w[0,1])  
    print shape(x)  
    print shape(y)  
    plt.sca(ax)  
    #plt.plot(x,y)      #ramdomgradAscent  
    plt.plot(x,y)   #gradAscent  
    plt.xlabel('density')  
    plt.ylabel('ratio_sugar')  
    plt.title('LDA')  
    plt.show()  
  
w=calulate_w()  
plot(w)  

结果如下:

对应的w值为:

[ -6.62487509e-04,  -9.36728168e-01]

由于数据分布的关系,所以LDA的效果不太明显。所以我改了几个label=0的样例的数值,重新运行程序得到结果如下:


效果比较明显,对应的w值为:

[-0.60311161, -0.67601433]


转自:http://cache.baiducontent.com/c?m=9d78d513d9d430db4f9be0697b14c0101f4381132ba6d70209d6843890732f43506793ac57270772d7d20d1016db4d4bea81743971597deb8f8fc814d2e1d46e6d9f26476d01d61f4f860eafbc1764977c875a9ef34ea1a7b57accef8c959a49008a155e2bdea7960c57529934ae552ce4a59b49105a10bd&p=ce6fc64ad4d807f449bd9b7d0d1796&newp=c26ada15d9c041ae17a6c7710f0a88231610db2151dcd101298ffe0cc4241a1a1a3aecbf21261b01d4c67a6606a94c5de1f53373310434f1f689df08d2ecce7e60c3&user=baidu&fm=sc&query=%CF%DF%D0%D4%C5%D0%B1%F0%B7%D6%CE%F6+python&qid=ccbe92e80000a2cb&p1=1
原文地址:https://www.cnblogs.com/wyuzl/p/7654433.html