python – 除了用于文本分类的文本外,还可以浏览其他输入

我正在尝试使用“Sci kit”学习一个单词的文本分类器.矢量化成分类器.但是,我想知道如何将除了文本本身之外的另一个变量添加到输入中.假设我想在文本中添加一些单词以及文本(因为我认为它可能会影响结果).我该怎么办呢?

我是否必须在那个分类器之上添加另一个分类器?或者有没有办法将该输入添加到矢量化文本? 最佳答案 Scikit学习分类器适用于numpy数组.

这意味着在对文本进行矢量化后,您可以轻松地将新功能添加到此数组中(我正在回答这个问题,不是很容易,但可行).

问题在于文本分类,您的功能将是稀疏的,因此正常的numpy列添加不起作用.

代码从text mining example from scikit learn scipy 2013 tutorial修改.

from sklearn.datasets import load_files
from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.naive_bayes import MultinomialNB
import numpy as np
import scipy

# Load the text data

twenty_train_subset = load_files('datasets/20news-bydate-train/',
    categories=categories, encoding='latin-1')

# Turn the text documents into vectors of word frequencies
vectorizer = TfidfVectorizer(min_df=2)
X_train_only_text_features = vectorizer.fit_transform(twenty_train_subset.data)


print type(X_train_only_text_features)
print "X_train_only_text_features",X_train_only_text_features.shape

size = X_train_only_text_features.shape[0]
print "size",size

ones_column = np.ones(size).reshape(size,1)
print "ones_column",ones_column.shape


new_column = scipy.sparse.csr.csr_matrix(ones_column )
print type(new_column)
print "new_column",new_column.shape

X_train= scipy.sparse.hstack([new_column,X_train_only_text_features])

print "X_train",X_train.shape

输出如下:

<class 'scipy.sparse.csr.csr_matrix'>
X_train_only_text_features (2034, 17566)
size 2034
ones_column (2034L, 1L)
<class 'scipy.sparse.csr.csr_matrix'>
new_column (2034, 1)
X_train (2034, 17567)
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