Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I found a python tutorial on the web for calculating tf-idf and cosine similarity. I am trying to play with it and change it a bit.

The problem is that I have weird results and almost without any sense.

For example I am using 3 documents. [doc1,doc2,doc3] doc1 and doc2 are similars and doc3 are totaly different.

The results are here:

[[  0.00000000e+00   2.20351188e-01   9.04357868e-01]
 [  2.20351188e-01  -2.22044605e-16   8.82546765e-01]
 [  9.04357868e-01   8.82546765e-01  -2.22044605e-16]]

First, I thought that the numbers on the main diagonal should be 1 and not 0. After that, the similarity score for doc1 and doc2 is around 0.22 and doc1 with doc3 around 0.90. I expected the opposite results. Could you please check my code and maybe help me understand why I have those results?

Doc1, doc2 and doc3 are tokkenized texts.

articles = [doc1,doc2,doc3]

corpus = []
for article in articles:
    for word in article:

def freq(word, article):
    return article.count(word)

def wordCount(article):
    return len(article)

def numDocsContaining(word,articles):
  count = 0
  for article in articles:
    if word in article:
      count += 1
  return count

def tf(word, article):
    return (freq(word,article) / float(wordCount(article)))

def idf(word, articles):
    return math.log(len(articles) / (1 + numDocsContaining(word,articles)))

def tfidf(word, document, documentList):
    return (tf(word,document) * idf(word,documentList))


for article in articles:
    for word in corpus:
        if word in article:
            vec.append(tfidf(word, article, corpus))


mat = numpy.empty((n, n))
for i in xrange(0,n):
    for j in xrange(0,n):
       mat[i][j] = nltk.cluster.util.cosine_distance(feature_vectors[i],feature_vectors[j])

print mat
share|improve this question

1 Answer 1

if you can try any other package such as sklearn then try it

this code might help

from sklearn.feature_extraction.text import TfidfTransformer
from nltk.corpus import stopwords
from sklearn.metrics.pairwise import cosine_similarity
import numpy as np
import numpy.linalg as LA
from sklearn.feature_extraction.text import TfidfVectorizer

f = open("/root/Myfolder/scoringDocuments/doc1")
doc1 = str.decode(f.read(), "UTF-8", "ignore")
f = open("/root/Myfolder/scoringDocuments/doc2")
doc2 = str.decode(f.read(), "UTF-8", "ignore")
f = open("/root/Myfolder/scoringDocuments/doc3")
doc3 = str.decode(f.read(), "UTF-8", "ignore")

train_set = [doc1, doc2, doc3]

test_set = ["age salman khan wife"] #Query 
stopWords = stopwords.words('english')

tfidf_vectorizer = TfidfVectorizer(stop_words = stopWords)
tfidf_matrix_test =  tfidf_vectorizer.fit_transform(test_set)
print tfidf_vectorizer.vocabulary_
tfidf_matrix_train = tfidf_vectorizer.transform(train_set) #finds the tfidf score with normalization
print 'Fit Vectorizer to train set', tfidf_matrix_train.todense()
print 'Transform Vectorizer to test set', tfidf_matrix_test.todense()

print "\n\ncosine simlarity not separated sets cosine scores ==> ", cosine_similarity(tfidf_matrix_test, tfidf_matrix_train)

refer to this tutorials part-I,part-II,part-III. This can help.

share|improve this answer
I have already tried this library. The problem was that I want to use my own functions to prepare the text (remove stopwords and stemming) –  Tasos Sep 23 '13 at 9:05

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.