Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Okay so I am a little confused. This should be a simple straightforward question however.

After calculating the TF-IDF Matrix of the Document against the entire corpus, I get a result very similar to this:

array([[ 0.85...,  0.  ...,  0.52...],
       [ 1.  ...,  0.  ...,  0.  ...],
       [ 1.  ...,  0.  ...,  0.  ...],
       [ 1.  ...,  0.  ...,  0.  ...],
       [ 0.55...,  0.83...,  0.  ...],
       [ 0.63...,  0.  ...,  0.77...]])

How do I use this result to get the most similar document against the search query? Basically I am trying to re-create a search bar for Wikipedia. Based on a search query I want to return the most relevant articles from Wikipedia. In this scenario, there are 6 articles (rows) and the search query contains 3 words (columns).

Do I add up all the results in the columns or add up all the rows? Is the greater value the most relevant or is the lowest value the most relevant?

share|improve this question
up vote 3 down vote accepted

Are you familiar with cosine similarity? For each article (vector A) compute its similarity to the query (vector B). Then rank in descending order and choose the top result. If you're willing to refactor, the gensim library is excellent.

share|improve this answer
Well I am actually following this tutorial: What doesnt make sense is how to use TF-IDF Vectors between the original articles and the search query. – tabchas Aug 8 '12 at 18:31
If you're using tf-idf as your weighting scheme, you'd still want to just normalize your query. Your matrix contains three terms, all of which are represented in the query; thus the raw frequency vector of the query is (1,1,1). sqrt((1^2)+(1^2)+(1^2)) = 1.73, and 1/1.73 = 0.57. So your query vector is (0.57,0.57,0.57). Now you can treat the query as another document. The cosine similarity of this query vector and some other document vector is its dot product. For the first article: ((.57*.85)+(.57*0)+(.57*.52)) = 0.2964. Repeat this for all articles and the highest score wins. – verbsintransit Aug 8 '12 at 19:51
So I do not have to train a classifier of some sort? – tabchas Aug 8 '12 at 19:53
If I understand your tutorial link correctly, not at this point. I recommend reviewing section 6.2 onwards in link to first understand tf-idf, etc., and then applying it to machine learning topics. I'm not sure if you're learning both information retrieval and machine learning at once. – verbsintransit Aug 8 '12 at 20:31
No code of mine off hand. But seriously, check out that gensim library. Look at the tutorials and the source code; you'll probably find what you're looking for. – verbsintransit Aug 8 '12 at 20:44

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.