Can the CountVectorizer be used to identify if a set of words appear in the corpus regardless of order?
It can do ordered phrases: How can I use sklearn CountVectorizer with mutliple strings?
Yet for my case the set of words do not happen to fall next to each over so tokenizing the whole phrase and then trying to find in some text document will result in zero finds
What I dream is for the following to happen:
import numpy as np
from sklearn import feature_extraction
sentences = [ "The only cool Washington is DC",
"A cool city in Washington is Seattle",
"Moses Lake is the dirtiest water in Washington" ]
listOfStrings = ["Washington DC",
"Washington Seattle",
"Washington cool"]
vectorizer = CountVectorizer(vocabulary=listOfStrings)
bagowords = np.matrix(vectorizer.fit_transform(sentences).todense())
bagowords
matrix([[1, 0, 1],
[0, 1, 1],
[0, 0, 0],])
The actual problem entails more words in between and thus removing stop words here would not be a valid solution. Any advice would be awesome!