python实现kmeans_Python实现k-means算法

本文实例为大家分享了Python实现k-means算法的具体代码,供大家参考,具体内容如下

这也是周志华《机器学习》的习题9.4。

数据集是西瓜数据集4.0,如下

编号,密度,含糖率

1,0.697,0.46

2,0.774,0.376

3,0.634,0.264

4,0.608,0.318

5,0.556,0.215

6,0.403,0.237

7,0.481,0.149

8,0.437,0.211

9,0.666,0.091

10,0.243,0.267

11,0.245,0.057

12,0.343,0.099

13,0.639,0.161

14,0.657,0.198

15,0.36,0.37

16,0.593,0.042

17,0.719,0.103

18,0.359,0.188

19,0.339,0.241

20,0.282,0.257

21,0.784,0.232

22,0.714,0.346

23,0.483,0.312

24,0.478,0.437

25,0.525,0.369

26,0.751,0.489

27,0.532,0.472

28,0.473,0.376

29,0.725,0.445

30,0.446,0.459

算法很简单,就不解释了,代码也不复杂,直接放上来:

# -*- coding: utf-8 -*-

"""Excercise 9.4"""

import numpy as np

import pandas as pd

import matplotlib.pyplot as plt

import sys

import random

data = pd.read_csv(filepath_or_buffer = '../dataset/watermelon4.0.csv', sep = ',')[["密度","含糖率"]].values

########################################## K-means #######################################

k = int(sys.argv[1])

#Randomly choose k samples from data as mean vectors

mean_vectors = random.sample(data,k)

def dist(p1,p2):

return np.sqrt(sum((p1-p2)*(p1-p2)))

while True:

print mean_vectors

clusters = map ((lambda x:[x]), mean_vectors)

for sample in data:

distances = map((lambda m: dist(sample,m)), mean_vectors)

min_index = distances.index(min(distances))

clusters[min_index].append(sample)

new_mean_vectors = []

for c,v in zip(clusters,mean_vectors):

new_mean_vector = sum(c)/len(c)

#If the difference betweenthe new mean vector and the old mean vector is less than 0.0001

#then do not updata the mean vector

if all(np.divide((new_mean_vector-v),v) < np.array([0.0001,0.0001]) ):

new_mean_vectors.append(v)

else:

new_mean_vectors.append(new_mean_vector)

if np.array_equal(mean_vectors,new_mean_vectors):

break

else:

mean_vectors = new_mean_vectors

#Show the clustering result

total_colors = ['r','y','g','b','c','m','k']

colors = random.sample(total_colors,k)

for cluster,color in zip(clusters,colors):

density = map(lambda arr:arr[0],cluster)

sugar_content = map(lambda arr:arr[1],cluster)

plt.scatter(density,sugar_content,c = color)

plt.show()

运行方式:在命令行输入 python k_means.py 4。其中4就是k。

下面是k分别等于3,4,5的运行结果,因为一开始的均值向量是随机的,所以每次运行结果会有不同。

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持脚本之家。

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