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: corpus.append(word) 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)) feature_vectors= for article in articles: vec= for word in corpus: if word in article: vec.append(tfidf(word, article, corpus)) else: vec.append(0) feature_vectors.append(vec) n=len(articles) 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