Let's say that I have in a folder in the desktop with different .txt files. They look like this.
File_1:
('this', 'is'), ('a', 'very'),....., ('large', '.txt'), ('file', 'with'), ('lots', 'of'), ('words', 'like'), ('this', 'i'), ('would', 'like'), ('to', 'create'), ('a', 'matrix'),'LABEL_1'
...
File_N:
('this', 'is'), ('a', 'another'),....., ('large', '.txt'), ('file', 'with'), ('lots', 'of'), ('words', 'like'), ('this', 'i'), ('would', 'like'), ('to', 'create'), ('a', 'matrix'),'LABEL_N'
From the documentation, scikit-learn provide load_files
, I can vectorize with the hashing trick as follows:
from sklearn.feature_extraction.text import FeatureHasher
from sklearn.svm import SVC
training_data = [[('string1', 'string2'), ('string3', 'string4'),
('string5', 'string6'), 'POS'],
[('string1', 'string2'), ('string3', 'string4'), 'NEG']]
feature_hasher_vect = FeatureHasher(input_type ='string')
X = feature_hasher_vect.transform(((' '.join(x) for x in sample)
for sample in training_data))
print X.toarray()
output:
[[ 0. 0. 0. ..., 0. 0. 0.]
[ 0. 0. 0. ..., 0. 0. 0.]]
How can I vectorize (apply the same procedure above) to the whole .txt folder with load_files()
or any other method?.