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使用python实现knn算法

2019-11-25 15:30:44
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本文实例为大家分享了python实现knn算法的具体代码,供大家参考,具体内容如下

knn算法描述

对需要分类的点依次执行以下操作:
1.计算已知类别数据集中每个点与该点之间的距离
2.按照距离递增顺序排序
3.选取与该点距离最近的k个点
4.确定前k个点所在类别出现的频率
5.返回前k个点出现频率最高的类别作为该点的预测分类

knn算法实现

数据处理

#从文件中读取数据,返回的数据和分类均为二维数组def loadDataSet(filename):  dataSet = []  labels = []  fr = open(filename)  for line in fr.readlines():    lineArr = line.strip().split(",")    dataSet.append([float(lineArr[0]),float(lineArr[1])])    labels.append([float(lineArr[2])])  return dataSet , labels

knn算法

#计算两个向量之间的欧氏距离def calDist(X1 , X2):  sum = 0  for x1 , x2 in zip(X1 , X2):    sum += (x1 - x2) ** 2  return sum ** 0.5def knn(data , dataSet , labels , k):  n = shape(dataSet)[0]  for i in range(n):    dist = calDist(data , dataSet[i])    #只记录两点之间的距离和已知点的类别    labels[i].append(dist)  #按照距离递增排序  labels.sort(key=lambda x:x[1])  count = {}  #统计每个类别出现的频率  for i in range(k):    key = labels[i][0]    if count.has_key(key):      count[key] += 1    else : count[key] = 1  #按频率递减排序  sortCount = sorted(count.items(),key=lambda item:item[1],reverse=True)  return sortCount[0][0]#返回频率最高的key,即label

结果测试

已知类别数据(来源于西瓜书+虚构)

0.697,0.460,1
0.774,0.376,1
0.720,0.330,1
0.634,0.264,1
0.608,0.318,1
0.556,0.215,1
0.403,0.237,1
0.481,0.149,1
0.437,0.211,1
0.525,0.186,1
0.666,0.091,0
0.639,0.161,0
0.657,0.198,0
0.593,0.042,0
0.719,0.103,0
0.671,0.196,0
0.703,0.121,0
0.614,0.116,0

绘图方法

def drawPoints(data , dataSet, labels):  xcord1 = [];  ycord1 = [];  xcord2 = [];  ycord2 = [];  for i in range(shape(dataSet)[0]):    if labels[i][0] == 0:      xcord1.append(dataSet[i][0])      ycord1.append(dataSet[i][1])    if labels[i][0] == 1:      xcord2.append(dataSet[i][0])      ycord2.append(dataSet[i][1])  fig = plt.figure()  ax = fig.add_subplot(111)  ax.scatter(xcord1, ycord1, s=30, c='blue', marker='s',label=0)  ax.scatter(xcord2, ycord2, s=30, c='green',label=1)  ax.scatter(data[0], data[1], s=30, c='red',label="testdata")  plt.legend(loc='upper right')  plt.show()

测试代码

dataSet , labels = loadDataSet('dataSet.txt')data = [0.6767,0.2122]drawPoints(data , dataSet, labels)newlabels = knn(data, dataSet , labels , 5)print newlabels

运行结果

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