• 转:完整的最简单的谱聚类python代码


    http://blog.csdn.net/waleking/article/details/7584084

    针对karate_club数据集,做了谱聚类。由于是2-way clustering,比较简单,得到了图的新的表示空间之后,没有做k-means,仅仅针对正规化后的拉普拉斯矩阵的第二特征值做了符号判断,这和Spectral Clustering Tutorial 一文中的描述一致。

    引用了numpy scipy matplotlib networkx包

    1.  
      #coding=utf-8
    2.  
      #MSC means Multiple Spectral Clustering
    3.  
      import numpy as np
    4.  
      import scipy as sp
    5.  
      import scipy.linalg as linalg
    6.  
      import networkx as nx
    7.  
      import matplotlib.pyplot as plt
    8.  
       
    9.  
      def getNormLaplacian(W):
    10.  
      """input matrix W=(w_ij)
    11.  
      "compute D=diag(d1,...dn)
    12.  
      "and L=D-W
    13.  
      "and Lbar=D^(-1/2)LD^(-1/2)
    14.  
      "return Lbar
    15.  
      """
    16.  
      d=[np.sum(row) for row in W]
    17.  
      D=np.diag(d)
    18.  
      L=D-W
    19.  
      #Dn=D^(-1/2)
    20.  
      Dn=np.power(np.linalg.matrix_power(D,-1),0.5)
    21.  
      Lbar=np.dot(np.dot(Dn,L),Dn)
    22.  
      return Lbar
    23.  
       
    24.  
      def getKSmallestEigVec(Lbar,k):
    25.  
      """input
    26.  
      "matrix Lbar and k
    27.  
      "return
    28.  
      "k smallest eigen values and their corresponding eigen vectors
    29.  
      """
    30.  
      eigval,eigvec=linalg.eig(Lbar)
    31.  
      dim=len(eigval)
    32.  
       
    33.  
      #查找前k小的eigval
    34.  
      dictEigval=dict(zip(eigval,range(0,dim)))
    35.  
      kEig=np.sort(eigval)[0:k]
    36.  
      ix=[dictEigval[k] for k in kEig]
    37.  
      return eigval[ix],eigvec[:,ix]
    38.  
       
    39.  
      def checkResult(Lbar,eigvec,eigval,k):
    40.  
      """
    41.  
      "input
    42.  
      "matrix Lbar and k eig values and k eig vectors
    43.  
      "print norm(Lbar*eigvec[:,i]-lamda[i]*eigvec[:,i])
    44.  
      """
    45.  
      check=[np.dot(Lbar,eigvec[:,i])-eigval[i]*eigvec[:,i] for i in range(0,k)]
    46.  
      length=[np.linalg.norm(e) for e in check]/np.spacing(1)
    47.  
      print("Lbar*v-lamda*v are %s*%s" % (length,np.spacing(1)))
    48.  
       
    49.  
      g=nx.karate_club_graph()
    50.  
      nodeNum=len(g.nodes())
    51.  
      m=nx.to_numpy_matrix(g)
    52.  
      Lbar=getNormLaplacian(m)
    53.  
      k=2
    54.  
      kEigVal,kEigVec=getKSmallestEigVec(Lbar,k)
    55.  
      print("k eig val are %s" % kEigVal)
    56.  
      print("k eig vec are %s" % kEigVec)
    57.  
      checkResult(Lbar,kEigVec,kEigVal,k)
    58.  
       
    59.  
      #跳过k means,用最简单的符号判别的方法来求点的归属
    60.  
       
    61.  
      clusterA=[i for i in range(0,nodeNum) if kEigVec[i,1]>0]
    62.  
      clusterB=[i for i in range(0,nodeNum) if kEigVec[i,1]<0]
    63.  
       
    64.  
      #draw graph
    65.  
      colList=dict.fromkeys(g.nodes())
    66.  
      for node,score in colList.items():
    67.  
      if node in clusterA:
    68.  
      colList[node]=0
    69.  
      else:
    70.  
      colList[node]=0.6
    71.  
      plt.figure(figsize=(8,8))
    72.  
      pos=nx.spring_layout(g)
    73.  
      nx.draw_networkx_edges(g,pos,alpha=0.4)
    74.  
      nx.draw_networkx_nodes(g,pos,nodelist=colList.keys(),
    75.  
      node_color=colList.values(),
    76.  
      cmap=plt.cm.Reds_r)
    77.  
      nx.draw_networkx_labels(g,pos,font_size=10,font_family='sans-serif')
    78.  
      plt.axis('off')
    79.  
      plt.title("karate_club spectral clustering")
    80.  
      plt.savefig("spectral_clustering_result.png")
    81.  
      plt.show()


    所得聚类结果:

    感谢python社区!

    life is short, use python!

  • 相关阅读:
    在windows安装部署ShardingSphere-Proxy 分库分表中间件
    报错:fatal: unable to access 'https://github.com/xxx/': OpenSSL SSL_connect: SSL_ERROR_SYSCALL in connection to github.com:443
    一台Windows配置多个mysql服务
    解决.net core 部署IIS报错:HTTP Error 500.30
    vs code 不格式化注释
    .net工具类——URL请求数据
    .net工具类——URL处理
    .net工具类——读取写入cookie
    js没有权限
    ueditor图片上传
  • 原文地址:https://www.cnblogs.com/lm3306/p/9337639.html
Copyright © 2020-2023  润新知