k-近邻算法(kNN)

1.算法工作原理

  存在一个训练样本集,我们知道样本集中的每一个数据与所属分类的对应关系,输入没有标签的新数据后,将新数据的每个特征与样本集中数据对应特征进行比较,然后算法提取样本集中特征最相似的数据(最近邻)的分类标签。一般来说,我们只选择样本数据集中前k个最相似的数据,这就是k-近邻算法中k的出处。通常k是不大于20的整数。

  比如匹配是爱情片,还是动作片,将已知电影和未知电影比较,算出距离

  

  假如k = 3,前三部又是爱情片,所以我们可判定此电影为爱情片。

2.算法流程

  1.准备:使用python导入数据。

    创建kNN.py模块

    这里我们先用自己输入的数据测试。

from numpy import *  #科学计算包
import operator #运算符模块

def createDataSet():
    group = array([[1.0,1.1],[1.0,1.0],[0,0],[0,0.1]]) #创建数据集
    labels = ['A','A','B','B']      #标签
    return group,labels


def classify(inX,dataSet,labels,k):
    dataSetSize = dataSet.shape[0]  #求数组的行数
    diffarray = tile(inX, (dataSetSize, 1))-dataSet   #tile使inx变为和dataSet相同行数的数组
    squarediffarray = diffarray**2  # x^2 , y^2
    sqDistances = squarediffarray.sum(axis=1) #对每一行向量求和
    distances = sqDistances**2 #对每个和开根号
    sortedDistIndexes = distances.argsort()  #将所有值从小到大排序,取原先的索引
    mp = {}
    for i in range(k):
        templabel = labels[sortedDistIndexes[i]]
        mp[templabel] = mp.get(templabel,0)+1 #dict.get(key,default=None),不存在返回0
    sortedmp = sorted(mp.items(),key=operator.itemgetter(1),reverse=True) #[('D', 312), ('I', 100), ('C', 4), ('B', 3), ('A', 1)]
    #将出现次数较多的情况返回
    return sortedmp[0][0]

def main():
    group,labels = createDataSet()
    var = classify([0.8,1.0],group ,labels , 3)
    print(var)
main()
A

首先讨论的数组和矩阵的区别:

#数组和矩阵的区别
from numpy import *
var = array([[1,2],[3,4]])
matr = mat(var)
#print(type(var))
print(var**2)
print(matr**2)
print(var.shape[0])
print(matr.shape[0])
[[ 1  4]
 [ 9 16]]
[[ 7 10]
 [15 22]]
2
2

数组的平方是对数组中的每个元素平方,矩阵的平方是两个矩阵相乘。

shape[0]可以计算数组和矩阵的行数。

关于tile,戳这

kNN中的应该还是数组

from numpy import *  #科学计算包
import operator #运算符模块
b = [1,3,5]
var = tile(b, (2, 3))
print(type(var))
<class 'numpy.ndarray'>

关于sum(axis=1)戳这

关于argsort,戳这

python 3.6下,将iteritems换成了items.

sort排序

from numpy import *  #科学计算包
import operator #运算符模块
mp = {}
mp['A'] = mp.get('A',1)
mp['B'] = mp.get('B',3)
mp['C'] = mp.get('C',4)
mp['D'] = mp.get('D',312)
mp['I'] = mp.get('I',100)
so = sorted(mp.items(),key=operator.itemgetter(1),reverse=False)
print(so)
[('A', 1), ('B', 3), ('C', 4), ('I', 100), ('D', 312)]

items()将dict分解为元组列表.

示例:使用kNN算法改进约会网站

使用Matplotlit创建散点图

此时代码

#该函数的输入为文本名字符串,输出位训练样本矩阵和类标记向量
def filearray(filename):
    fr = open(filename)
    #a = array([1,2,3,4,5])
    arrayOLines = fr.readlines()
    #print(arrayOLines)
    #numberOfLines = len(a)
    numberOfLines = len(arrayOLines)
    #print(numberOfLines)
    #print(type(zeros((numberOfLines,3))))
    returnarray = zeros((numberOfLines,3))
    labels = []
    index = 0
    for line in arrayOLines:
        line = line.strip() #去掉回车
        #print(line)
        listFromLine = line.split('	')
        #print(listFromLine)  #变成列表
        returnarray[index,:] = listFromLine[0:3]
        labels.append(int((listFromLine[-1]))) #应用数据错误
        index += 1
    return returnarray,labels
def main():
    # group,labels = createDataSet()
    # var = classify([0.8,1.0],group ,labels , 3)
    # print(var)
    #datingDataArray,datinglabels = filearray('d3.txt')
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    fig = plt.figure()
    ax = fig.add_subplot(111)
    ax.scatter(datingDataArray[:,1],datingDataArray[:,2]) #第1列和第2列
    plt.show()
    #print(datingDataArray)
    #print(datinglabels)
main()

对应散点图

绘制不同色彩,三类人

ax.scatter(datingDataArray[:,1],datingDataArray[:,2],
    15.0*array(datinglabels),15.0*array(datinglabels)) #第1列和第2列

对后面还15.0乘还不太理解

使用第一列和第二列更容易得出结论。

 

#数值归一化
#(oldValue - minVal)/(maxVal-minVal)
def autoNorm(dataSet):
    minVals = dataSet.min(0)  #获取每一列的最小值和最大值
    maxVals = dataSet.max(0)
    # print(minVals)
    # print(maxVals)
    ranges = maxVals-minVals
    #print(shape(dataSet)) (9, 3)
    normDataSet = zeros(shape(dataSet)) #shape()返回矩阵规模
    m = dataSet.shape[0]
    normDataSet = dataSet - tile(minVals, (m, 1))
    normDataSet = normDataSet/tile(ranges, (m, 1))
    #print(normDataSet)
    return normDataSet,ranges,minVals
#计算错误率
def datingCalcError():
    Radio = 0.1
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    normArray,ranges,minVals = autoNorm(datingDataArray)
    m = normArray.shape[0]
    numOfTestData = int(m*Radio) #10%
    errorNumber = 0.0  #浮点数
    for i in range(numOfTestData): #90%
        classifierResult = classify(normArray[i,:],normArray[numOfTestData:m,:],
            datinglabels[numOfTestData:m],3)
        print("the test result:%d, the real result:%d"%(classifierResult,datinglabels[i]))
        if(classifierResult!=datinglabels[i]): errorNumber += 1.0
    print("the error rate is %f"%(errorNumber/(float(numOfTestData))))
# main()
datingCalcError()

约会网站预测

from numpy import *  #科学计算包
import operator #运算符模块
import matplotlib
import matplotlib.pyplot as plt
def createDataSet():
    group = array([[1.0,1.1],[1.0,1.0],[0,0],[0,0.1]]) #创建数据集
    labels = ['A','A','B','B']      #标签
    return group,labels


def classify(inX,dataSet,labels,k):
    dataSetSize = dataSet.shape[0]  #求数组的行数
    diffarray = tile(inX, (dataSetSize, 1))-dataSet   #tile使inx变为和dataSet相同行数的数组
    squarediffarray = diffarray**2  # x^2 , y^2
    sqDistances = squarediffarray.sum(axis=1) #对每一行向量求和
    distances = sqDistances**2 #对每个和开根号
    sortedDistIndexes = distances.argsort()  #将所有值从小到大排序,取原先的索引
    mp = {}
    for i in range(k):
        templabel = labels[sortedDistIndexes[i]]
        mp[templabel] = mp.get(templabel,0)+1 #dict.get(key,default=None),不存在返回0
    sortedmp = sorted(mp.items(),key=operator.itemgetter(1),reverse=True) #[('D', 312), ('I', 100), ('C', 4), ('B', 3), ('A', 1)]
    #将出现次数较多的情况返回
    return sortedmp[0][0]
#该函数的输入为文本名字符串,输出位训练样本矩阵和类标记向量
def filearray(filename):
    fr = open(filename)
    #a = array([1,2,3,4,5])
    arrayOLines = fr.readlines()
    #print(arrayOLines)
    #numberOfLines = len(a)
    numberOfLines = len(arrayOLines)
    #print(numberOfLines)
    #print(type(zeros((numberOfLines,3))))
    returnarray = zeros((numberOfLines,3))
    labels = []
    index = 0
    for line in arrayOLines:
        line = line.strip() #去掉回车
        #print(line)
        listFromLine = line.split('	')
        #print(listFromLine)  #变成列表
        returnarray[index,:] = listFromLine[0:3]
        labels.append(int((listFromLine[-1]))) #应用数据错误
        index += 1
    return returnarray,labels
def main():
    # group,labels = createDataSet()
    # var = classify([0.8,1.0],group ,labels , 3)
    # print(var)
    datingDataArray,datinglabels = filearray('d3.txt')
    #datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    # fig = plt.figure()
    # ax = fig.add_subplot(111)
    # ax.scatter(datingDataArray[:,0],datingDataArray[:,1
    #     ],
    # 15.0*array(datinglabels),15.0*array(datinglabels)) #第1列和第2列
    # plt.show()
    #print(datingDataArray)
    #print(datinglabels)
    autoNorm(datingDataArray)
#数值归一化
#(oldValue - minVal)/(maxVal-minVal)
def autoNorm(dataSet):
    minVals = dataSet.min(0)  #获取每一列的最小值和最大值
    maxVals = dataSet.max(0)
    # print(minVals)
    # print(maxVals)
    ranges = maxVals-minVals
    #print(shape(dataSet)) (9, 3)
    normDataSet = zeros(shape(dataSet)) #shape()返回矩阵规模
    m = dataSet.shape[0]
    normDataSet = dataSet - tile(minVals, (m, 1))
    normDataSet = normDataSet/tile(ranges, (m, 1))
    #print(normDataSet)
    return normDataSet,ranges,minVals
#计算错误率
def datingCalcError():
    Radio = 0.1
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    normArray,ranges,minVals = autoNorm(datingDataArray)
    m = normArray.shape[0]
    numOfTestData = int(m*Radio) #10%
    errorNumber = 0.0  #浮点数
    for i in range(numOfTestData): #90%
        classifierResult = classify(normArray[i,:],normArray[numOfTestData:m,:],
            datinglabels[numOfTestData:m],3)
        print("the test result:%d, the real result:%d"%(classifierResult,datinglabels[i]))
        if(classifierResult!=datinglabels[i]): errorNumber += 1.0
    print("the error rate is %f"%(errorNumber/(float(numOfTestData))))
#约会网站测试函数
def classifyPerson():
    resultList = ['not at all','in small doses','in large doses']
    ffMiles = float(input('flier miles'))
    percentTats = float(input('playing game')) #不再有raw_input函数
    iceCream = float(input('ice cream'))
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    normArray,ranges,minVals = autoNorm(datingDataArray)
    inArr = array([ffMiles,percentTats,iceCream])
    #print(inArr)
    classifierResult = classify(((inArr - minVals)/ranges),normArray, datinglabels, 3)
    print(resultList[classifierResult-1])
# main()
classifyPerson()
Code

使用kNN算法识别手写数字

from numpy import *  #科学计算包
import operator #运算符模块
import matplotlib
import matplotlib.pyplot as plt
from os import listdir #返回一个目录下文件名的列表
def createDataSet():
    group = array([[1.0,1.1],[1.0,1.0],[0,0],[0,0.1]]) #创建数据集
    labels = ['A','A','B','B']      #标签
    return group,labels


def classify(inX,dataSet,labels,k):
    dataSetSize = dataSet.shape[0]  #求数组的行数
    diffarray = tile(inX, (dataSetSize, 1))-dataSet   #tile使inx变为和dataSet相同行数的数组
    squarediffarray = diffarray**2  # x^2 , y^2
    sqDistances = squarediffarray.sum(axis=1) #对每一行向量求和
    distances = sqDistances**2 #对每个和开根号
    sortedDistIndexes = distances.argsort()  #将所有值从小到大排序,取原先的索引
    mp = {}
    #print(sortedDistIndexes[0:1024])
    for i in range(k):
        templabel = labels[sortedDistIndexes[i]]
        mp[templabel] = mp.get(templabel,0)+1 #dict.get(key,default=None),不存在返回0
    sortedmp = sorted(mp.items(),key=operator.itemgetter(1),reverse=True) #[('D', 312), ('I', 100), ('C', 4), ('B', 3), ('A', 1)]
    #将出现次数较多的情况返回
    return sortedmp[0][0]
#该函数的输入为文本名字符串,输出位训练样本矩阵和类标记向量
def filearray(filename):
    fr = open(filename)
    #a = array([1,2,3,4,5])
    arrayOLines = fr.readlines()
    #print(arrayOLines)
    #numberOfLines = len(a)
    numberOfLines = len(arrayOLines)
    #print(numberOfLines)
    #print(type(zeros((numberOfLines,3))))
    returnarray = zeros((numberOfLines,3))
    labels = []
    index = 0
    for line in arrayOLines:
        line = line.strip() #去掉回车
        #print(line)
        listFromLine = line.split('	')
        #print(listFromLine)  #变成列表
        returnarray[index,:] = listFromLine[0:3]
        labels.append(int((listFromLine[-1]))) #应用数据错误
        index += 1
    return returnarray,labels
def main():
    # group,labels = createDataSet()
    # var = classify([0.8,1.0],group ,labels , 3)
    # print(var)
    datingDataArray,datinglabels = filearray('d3.txt')
    #datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    # fig = plt.figure()
    # ax = fig.add_subplot(111)
    # ax.scatter(datingDataArray[:,0],datingDataArray[:,1
    #     ],
    # 15.0*array(datinglabels),15.0*array(datinglabels)) #第1列和第2列
    # plt.show()
    #print(datingDataArray)
    #print(datinglabels)
    autoNorm(datingDataArray)
#数值归一化
#(oldValue - minVal)/(maxVal-minVal)
def autoNorm(dataSet):
    minVals = dataSet.min(0)  #获取每一列的最小值和最大值
    maxVals = dataSet.max(0)
    # print(minVals)
    # print(maxVals)
    ranges = maxVals-minVals
    #print(shape(dataSet)) (9, 3)
    normDataSet = zeros(shape(dataSet)) #shape()返回矩阵规模
    m = dataSet.shape[0]
    normDataSet = dataSet - tile(minVals, (m, 1))
    normDataSet = normDataSet/tile(ranges, (m, 1))
    #print(normDataSet)
    return normDataSet,ranges,minVals
#计算错误率
def datingCalcError():
    Radio = 0.1
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    normArray,ranges,minVals = autoNorm(datingDataArray)
    m = normArray.shape[0]
    numOfTestData = int(m*Radio) #10%
    errorNumber = 0.0  #浮点数
    for i in range(numOfTestData): #90%
        classifierResult = classify(normArray[i,:],normArray[numOfTestData:m,:],
            datinglabels[numOfTestData:m],3)
        print("the test result:%d, the real result:%d"%(classifierResult,datinglabels[i]))
        if(classifierResult!=datinglabels[i]): errorNumber += 1.0
    print("the error rate is %f"%(errorNumber/(float(numOfTestData))))
#约会网站测试函数
def classifyPerson():
    resultList = ['not at all','in small doses','in large doses']
    ffMiles = float(input('flier miles'))
    percentTats = float(input('playing game')) #不再有raw_input函数
    iceCream = float(input('ice cream'))
    datingDataArray,datinglabels = filearray('datingTestSet2.txt')
    normArray,ranges,minVals = autoNorm(datingDataArray)
    inArr = array([ffMiles,percentTats,iceCream])
    #print(inArr)
    classifierResult = classify(((inArr - minVals)/ranges),normArray, datinglabels, 3)
    print(resultList[classifierResult-1])
def imgVector(filename):
    returnVector = zeros((1,1024))
    fr = open(filename)
    for i in range(32):
        lineStr = fr.readline()
        for j in range(32):
            returnVector[0,32*i+j] = int(lineStr[j])
    #print(returnVector[0,0:32])
    return returnVector
def handwritingClassTest():
    hwlabels = []
    trainingFileList = listdir('trainingDigits')
    m = len(trainingFileList) #list用len,array用shape[0]
    trainingArray = zeros((m,1024))    #储存训练矩阵
    for i in range(m):
        fileNameStr = trainingFileList[i] 
        fileStr = fileNameStr.split('.')[0] #['0_100', 'txt']
        print(fileStr) #0_102
        classNum = int(fileStr.split('_')[0])
        hwlabels.append(classNum)
        #hwlabels[i] = classNum
        trainingArray[i,:] = imgVector('trainingDigits/%s'%fileNameStr)
    testFileList = listdir('testDigits')
    errorNumber = 0.0
    mTest = len(testFileList)
    for i in range(mTest):
        fileNameStr = testFileList[i]
        fileStr = fileNameStr.split('.')[0] #['0_100', 'txt']
        print(fileStr) #0_102
        classNum = int(fileStr.split('_')[0])
        testVector = imgVector('testDigits/%s'%fileNameStr)
        classifierResult = classify(testVector,trainingArray,hwlabels,3)
        print("the test result:%d, the real result:%d"%(classifierResult,classNum))
        if(classifierResult!=classNum): errorNumber += 1.0
    print("the error rate is %f"%(errorNumber/(float(mTest))))
    # for i in range(len(hwlabels)):
    #     print(hwlabels[i])
#main()
#classifyPerson()
#imgVector('testDigits/0_12.txt')
handwritingClassTest()
Code

原文地址:https://www.cnblogs.com/littlepear/p/8269653.html