• 机器学习之路: python nltk 文本特征提取


    git: https://github.com/linyi0604/MachineLearning


    分别使用词袋法和nltk自然预言处理包提供的文本特征提取
     1 from sklearn.feature_extraction.text import CountVectorizer
     2 import nltk
     3 # nltk.download("punkt")
     4 # nltk.download('averaged_perceptron_tagger')
     5 
     6 '''
     7 分别使用词袋法和nltk自然预言处理包提供的文本特征提取
     8 '''
     9 
    10 sent1 = "The cat is walking in the bedroom."
    11 sent2 = "A dog was running across the kitchen."
    12 # 使用词袋法 将文本转化为特征向量
    13 count_vec = CountVectorizer()
    14 sentences = [sent1, sent2]
    15 # 输出转化后的特征向量
    16 # print(count_vec.fit_transform(sentences).toarray())
    17 '''
    18 [[0 1 1 0 1 1 0 0 2 1 0]
    19  [1 0 0 1 0 0 1 1 1 0 1]]
    20 '''
    21 # 输出转化后特征的含义
    22 # print(count_vec.get_feature_names())
    23 '''
    24 ['across', 'bedroom', 'cat', 'dog', 'in', 'is', 'kitchen', 'running', 'the', 'walking', 'was']
    25 '''
    26 
    27 # 使用nltk对文本进行语言分析
    28 # 对句子词汇分割和正则化 把aren't 分割成 are 和 n't   I'm 分割成 I和'm
    29 tokens1 = nltk.word_tokenize(sent1)
    30 tokens2 = nltk.word_tokenize(sent2)
    31 # print(tokens1)
    32 # print(tokens2)
    33 '''
    34 ['The', 'cat', 'is', 'walking', 'in', 'the', 'bedroom', '.']
    35 ['A', 'dog', 'was', 'running', 'across', 'the', 'kitchen', '.']
    36 '''
    37 # 整理词汇表 按照ASCII的顺序排序
    38 vocab_1 = sorted(set(tokens1))
    39 vocab_2 = sorted(set(tokens2))
    40 # print(vocab_1)
    41 # print(vocab_2)
    42 '''
    43 ['.', 'The', 'bedroom', 'cat', 'in', 'is', 'the', 'walking']
    44 ['.', 'A', 'across', 'dog', 'kitchen', 'running', 'the', 'was']
    45 '''
    46 # 初始化stemer 寻找每个单词最原始的词根
    47 stemmer = nltk.stem.PorterStemmer()
    48 stem_1 = [stemmer.stem(t) for t in tokens1]
    49 stem_2 = [stemmer.stem(t) for t in tokens2]
    50 # print(stem_1)
    51 # print(stem_2)
    52 '''
    53 ['the', 'cat', 'is', 'walk', 'in', 'the', 'bedroom', '.']
    54 ['A', 'dog', 'wa', 'run', 'across', 'the', 'kitchen', '.']
    55 '''
    56 # 利用词性标注器 对词性进行标注
    57 pos_tag_1 = nltk.tag.pos_tag(tokens1)
    58 pos_tag_2 = nltk.tag.pos_tag(tokens2)
    59 # print(pos_tag_1)
    60 # print(pos_tag_2)
    61 '''
    62 [('The', 'DT'), ('cat', 'NN'), ('is', 'VBZ'), ('walking', 'VBG'), ('in', 'IN'), ('the', 'DT'), ('bedroom', 'NN'), ('.', '.')]
    63 [('A', 'DT'), ('dog', 'NN'), ('was', 'VBD'), ('running', 'VBG'), ('across', 'IN'), ('the', 'DT'), ('kitchen', 'NN'), ('.', '.')]
    64 '''
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  • 原文地址:https://www.cnblogs.com/Lin-Yi/p/9006813.html
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