欢迎您访问程序员文章站本站旨在为大家提供分享程序员计算机编程知识!
您现在的位置是: 首页  >  IT编程

Python_LDA实现方法详解

程序员文章站 2022-05-26 14:58:39
LDA(Latent Dirichlet allocation)模型是一种常用而用途广泛地概率主题模型。其实现一般通过Variational inference和Gibbs...

LDA(Latent Dirichlet allocation)模型是一种常用而用途广泛地概率主题模型。其实现一般通过Variational inference和Gibbs Samping实现。作者在提出LDA模型时给出了其变分推理的C源码(后续贴出C++改编的类),这里贴出基于Python的第三方模块改写的LDA类及实现。

#coding:utf-8
import numpy as np
import lda
import lda.datasets
import jieba
import codecs
class LDA_v20161130():
  def __init__(self, topics=2):
    self.n_topic = topics
    self.corpus = None
    self.vocab = None
    self.ppCountMatrix = None
    self.stop_words = [u',', u'。', u'、', u'(', u')', u'·', u'!', u' ', u':', u'“', u'”', u'\n']
    self.model = None
  def loadCorpusFromFile(self, fn):
    # 中文分词
    f = open(fn, 'r')
    text = f.readlines()
    text = r' '.join(text)
    seg_generator = jieba.cut(text)
    seg_list = [i for i in seg_generator if i not in self.stop_words]
    seg_list = r' '.join(seg_list)
    # 切割统计所有出现的词纳入词典
    seglist = seg_list.split(" ")
    self.vocab = []
    for word in seglist:
      if (word != u' ' and word not in self.vocab):
        self.vocab.append(word)
    CountMatrix = []
    f.seek(0, 0)
    # 统计每个文档中出现的词频
    for line in f:
      # 置零
      count = np.zeros(len(self.vocab),dtype=np.int)
      text = line.strip()
      # 但还是要先分词
      seg_generator = jieba.cut(text)
      seg_list = [i for i in seg_generator if i not in self.stop_words]
      seg_list = r' '.join(seg_list)
      seglist = seg_list.split(" ")
      # 查询词典中的词出现的词频
      for word in seglist:
        if word in self.vocab:
          count[self.vocab.index(word)] += 1
      CountMatrix.append(count)
    f.close()
    #self.ppCountMatrix = (len(CountMatrix), len(self.vocab))
    self.ppCountMatrix = np.array(CountMatrix)
    print "load corpus from %s success!"%fn
  def setStopWords(self, word_list):
    self.stop_words = word_list
  def fitModel(self, n_iter = 1500, _alpha = 0.1, _eta = 0.01):
    self.model = lda.LDA(n_topics=self.n_topic, n_iter=n_iter, alpha=_alpha, eta= _eta, random_state= 1)
    self.model.fit(self.ppCountMatrix)
  def printTopic_Word(self, n_top_word = 8):
    for i, topic_dist in enumerate(self.model.topic_word_):
      topic_words = np.array(self.vocab)[np.argsort(topic_dist)][:-(n_top_word + 1):-1]
      print "Topic:",i,"\t",
      for word in topic_words:
        print word,
      print
  def printDoc_Topic(self):
    for i in range(len(self.ppCountMatrix)):
      print ("Doc %d:((top topic:%s) topic distribution:%s)"%(i, self.model.doc_topic_[i].argmax(),self.model.doc_topic_[i]))
  def printVocabulary(self):
    print "vocabulary:"
    for word in self.vocab:
      print word,
    print
  def saveVocabulary(self, fn):
    f = codecs.open(fn, 'w', 'utf-8')
    for word in self.vocab:
      f.write("%s\n"%word)
    f.close()
  def saveTopic_Words(self, fn, n_top_word = -1):
    if n_top_word==-1:
      n_top_word = len(self.vocab)
    f = codecs.open(fn, 'w', 'utf-8')
    for i, topic_dist in enumerate(self.model.topic_word_):
      topic_words = np.array(self.vocab)[np.argsort(topic_dist)][:-(n_top_word + 1):-1]
      f.write( "Topic:%d\t"%i)
      for word in topic_words:
        f.write("%s "%word)
      f.write("\n")
    f.close()
  def saveDoc_Topic(self, fn):
    f = codecs.open(fn, 'w', 'utf-8')
    for i in range(len(self.ppCountMatrix)):
      f.write("Doc %d:((top topic:%s) topic distribution:%s)\n" % (i, self.model.doc_topic_[i].argmax(), self.model.doc_topic_[i]))
    f.close()

算法实现demo:

例如,抓取BBC川普当选的新闻作为语料,输入以下代码:

if __name__=="__main__":
  _lda = LDA_v20161130(topics=20)
  stop = [u'!', u'@', u'#', u',',u'.',u'/',u';',u' ',u'[',u']',u'$',u'%',u'^',u'&',u'*',u'(',u')',
      u'"',u':',u'<',u'>',u'?',u'{',u'}',u'=',u'+',u'_',u'-',u'''''']
  _lda.setStopWords(stop)
  _lda.loadCorpusFromFile(u'C:\\Users\Administrator\Desktop\\BBC.txt')
  _lda.fitModel(n_iter=1500)
  _lda.printTopic_Word(n_top_word=10)
  _lda.printDoc_Topic()
  _lda.saveVocabulary(u'C:\\Users\Administrator\Desktop\\vocab.txt')
  _lda.saveTopic_Words(u'C:\\Users\Administrator\Desktop\\topic_word.txt')
  _lda.saveDoc_Topic(u'C:\\Users\Administrator\Desktop\\doc_topic.txt')

因为语料全部为英文,因此这里的stop_words全部设置为英文符号,主题设置20个,迭代1500次。结果显示,文档148篇,词典1347词,总词数4174,在i3的电脑上运行17s。
Topic_words部分输出如下:

Topic: 0
to will and of he be trumps the what policy
Topic: 1 he would in said not no with mr this but
Topic: 2 for or can some whether have change health obamacare insurance
Topic: 3 the to that president as of us also first all
Topic: 4 trump to when with now were republican mr office presidential
Topic: 5 the his trump from uk who president to american house
Topic: 6 a to that was it by issue vote while marriage
Topic: 7 the to of an are they which by could from
Topic: 8 of the states one votes planned won two new clinton
Topic: 9 in us a use for obama law entry new interview
Topic: 10 and on immigration has that there website vetting action given

Doc_Topic部分输出如下:

Doc 0:((top topic:4) topic distribution:[ 0.02972973 0.0027027 0.0027027 0.16486486 0.32702703 0.19189189
0.0027027 0.0027027 0.02972973 0.0027027 0.02972973 0.0027027
0.0027027 0.0027027 0.02972973 0.0027027 0.02972973 0.0027027
0.13783784 0.0027027 ])
Doc 1:((top topic:18) topic distribution:[ 0.21 0.01 0.01 0.01 0.01 0.01 0.01 0.01 0.11 0.01 0.01 0.01
0.01 0.01 0.01 0.01 0.01 0.01 0.31 0.21])
Doc 2:((top topic:18) topic distribution:[ 0.02075472 0.00188679 0.03962264 0.00188679 0.00188679 0.00188679
0.00188679 0.15283019 0.00188679 0.02075472 0.00188679 0.24716981
0.00188679 0.07735849 0.00188679 0.00188679 0.00188679 0.00188679
0.41698113 0.00188679])

当然,对于英文语料,需要排除大部分的虚词以及常用无意义词,例如it, this, there, that...在实际操作中,需要合理地设置参数。

换中文语料尝试,采用习大大就卡斯特罗逝世发表的吊唁文章和朴槿惠辞职的新闻。

Topic: 0
的 同志 和 人民 卡斯特罗 菲德尔 古巴 他 了 我
Topic: 1 在 朴槿惠 向 表示 总统 对 将 的 月 国民
Doc 0:((top topic:0) topic distribution:[ 0.91714123 0.08285877])
Doc 1:((top topic:1) topic distribution:[ 0.09200666 0.90799334])

还是存在一些虚词,例如“的”,“和”,“了”,“对”等词的干扰,但是大致来说,两则新闻的主题分布很明显,效果还不赖。

总结

以上就是本文关于Python_LDA实现方法详解的全部内容,希望对大家有所帮助。感兴趣的朋友可以继续参阅本站:python+mongodb数据抓取详细介绍Python探索之创建二叉树Python探索之修改Python搜索路径等,有什么问题可以随时留言,欢迎大家一起交流讨论。感谢朋友们对本站的支持!