I took a bunch of documents and calculated tf*idf for each token in all documents and created vectors(each of n dimension,n is the no. of unique words in corpus)for each document.I am unable to figure out how to create cluster from vectors using sklearn.cluster.MeanShift
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After calculating tfidf, do you have a matrix (ie: table of data with rows and columns) of numeric values? Is it sparse or dense? What type in-general? Did you use TfidfVectorizer() from sklearn?– JaradSep 12, 2017 at 20:28
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Yes ,I used TfidfVectorizer() ended up with a sparse matrix.I don't understand how to give that as an input to sklearn.clister.MeanShift– Mourya VamsiSep 13, 2017 at 1:22
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1 Answer
TfidfVectorizer converts documents to a "sparse matrix" of numbers. MeanShift requires the data being passed to it to be "dense". Below, I show how to convert it in a pipeline (credit) but, memory permitting, you could just convert a sparse matrix to dense with toarray()
or todense()
.
from sklearn.feature_extraction.text import TfidfVectorizer
from sklearn.cluster import MeanShift
from sklearn.pipeline import Pipeline
from sklearn.preprocessing import FunctionTransformer
documents = ['this is document one',
'this is document two',
'document one is fun',
'document two is mean',
'document is really short',
'how fun is document one?',
'mean shift... what is that']
pipeline = Pipeline(
steps=[
('tfidf', TfidfVectorizer()),
('trans', FunctionTransformer(lambda x: x.todense(), accept_sparse=True)),
('clust', MeanShift())
])
pipeline.fit(documents)
pipeline.named_steps['clust'].labels_
result = [(label,doc) for doc,label in zip(documents, pipeline.named_steps['clust'].labels_)]
for label,doc in sorted(result):
print(label, doc)
Prints:
0 document two is mean
0 this is document one
0 this is document two
1 document one is fun
1 how fun is document one?
2 mean shift... what is that
3 document is really short
You could modify the "hyperparameters" but this gives you a general idea I think.