网创优客建站品牌官网
为成都网站建设公司企业提供高品质网站建设
热线:028-86922220
成都专业网站建设公司

定制建站费用3500元

符合中小企业对网站设计、功能常规化式的企业展示型网站建设

成都品牌网站建设

品牌网站建设费用6000元

本套餐主要针对企业品牌型网站、中高端设计、前端互动体验...

成都商城网站建设

商城网站建设费用8000元

商城网站建设因基本功能的需求不同费用上面也有很大的差别...

成都微信网站建设

手机微信网站建站3000元

手机微信网站开发、微信官网、微信商城网站...

建站知识

当前位置:首页 > 建站知识

Python实现k-means算法-创新互联

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

创新互联建站专注于企业网络营销推广、网站重做改版、梨树网站定制设计、自适应品牌网站建设、HTML5电子商务商城网站建设、集团公司官网建设、成都外贸网站建设公司、高端网站制作、响应式网页设计等建站业务,价格优惠性价比高,为梨树等各大城市提供网站开发制作服务。

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()

当前标题:Python实现k-means算法-创新互联
本文网址:http://bjjierui.cn/article/doscic.html

其他资讯