tfidf_CountVectorizer 与 TfidfTransformer 保存和测试

做nlp的时候,如果用到tf-idf,sklearn中用CountVectorizer与TfidfTransformer两个类,下面对和两个类进行讲解

一、训练以及测试

CountVectorizer与TfidfTransformer在处理训练数据的时候都用fit_transform方法,在测试集用transform方法。fit包含训练的意思,表示训练好了去测试,如果在测试集中也用fit_transform,那显然导致结果错误。

#变量:content_train 训练集,content_test测试集
vectorizer = CountVectorizer()
tfidftransformer = TfidfTransformer()

#训练 用fit_transform
count_train=vectorizer.fit_transform(content_train)
tfidf = tfidftransformer.fit_transform(count_train)

#测试
count_test=vectorizer.transform(content_test)
test_tfidf = tfidftransformer.transform(count_test)

测试集的if-idf
test_weight = test_tfidf.toarray()

二、tf-idf词典的保存

我们总是需要保存tf-idf的词典,然后计算测试集的tfidf,这里要注意sklearn中保存有两种方法:pickle与joblib。我们这里用pickle

 1 train_content = segmentWord(X_train)
 2 test_content = segmentWord(X_test)
 3 # replace 必须加,保存训练集的特征
 4 vectorizer = CountVectorizer(decode_error="replace")
 5 tfidftransformer = TfidfTransformer()
 6 # 注意在训练的时候必须用vectorizer.fit_transform、tfidftransformer.fit_transform
 7 # 在预测的时候必须用vectorizer.transform、tfidftransformer.transform
 8 vec_train = vectorizer.fit_transform(train_content)
 9 tfidf = tfidftransformer.fit_transform(vec_train)
10 
11 # 保存经过fit的vectorizer 与 经过fit的tfidftransformer,预测时使用
12 feature_path = 'models/feature.pkl'
13 with open(feature_path, 'wb') as fw:
14     pickle.dump(vectorizer.vocabulary_, fw)
15 
16 tfidftransformer_path = 'models/tfidftransformer.pkl'
17 with open(tfidftransformer_path, 'wb') as fw:
18     pickle.dump(tfidftransformer, fw)

注意:vectorizer 与tfidftransformer都要保存,而且只能 fit_transform 之后保存,表示vectorizer 与tfidftransformer已经用训练集训练好了。

三、tf-idf加载,测试新数据

1 # 加载特征
2 feature_path = 'models/feature.pkl'
3 loaded_vec = CountVectorizer(decode_error="replace", vocabulary=pickle.load(open(feature_path, "rb")))
4 # 加载TfidfTransformer
5 tfidftransformer_path = 'models/tfidftransformer.pkl'
6 tfidftransformer = pickle.load(open(tfidftransformer_path, "rb"))
7 #测试用transform,表示测试数据,为list
8 test_tfidf = tfidftransformer.transform(loaded_vec.transform(test_content))
原文地址:https://www.cnblogs.com/demo-deng/p/10139233.html