# Java: How to use TF-IDF to compute similarity of two documents?

My goals is to find a similarity value between two documents (collections of words). I have already found several answers like this SO post or this SO post which provide Python libraries that achieve this, but I have trouble understanding the approach and making it work for my use case.

If I understand correctly, TF-IDF of a document is computed with respect to a given term, right? That's how I interpret it from the Wikipedia article on this: "tf-idf...is a numerical statistic that is intended to reflect how important a word is to a document".

In my case, I don't have a specific search term which I want to compare to the document, but I have two different documents. I assume I need to first compute vectors for the documents, and then take the cosine between these vectors. But all the answers I found with respect to constructing these vectors always assume a search term, which I don't have in my case.

Can't wrap my head around this, any conceptual help or links to Java libraries that achieve this would be highly appreciated.

• Run a term extraction before, and once you have the list of terms with their frequencies for both corpora, calculate the cosine similarity. – Wiktor Stribiżew Nov 23 '16 at 14:17
• @Wiktor Stribiżew: Thanks for the suggestion. So I extract the terms of both documents into a list. And then for each of those terms, I compute the tf-idf values for each of the two documents, which gives me two vectors, from which i can compute the cosine similarity. Am I understanding this correctly? – gmazlami Nov 23 '16 at 14:20
• Yes, basically that is how it is done. Based on the term frequency, get the vectors, TF-IDF, and calculate the cosine similarity. Also, make sure you use stemming to normalize word forms you extracted to reduce noise. – Wiktor Stribiżew Nov 23 '16 at 14:25
• Thanks so much for the tip. I will try this. – gmazlami Nov 23 '16 at 14:50

When calculating TF-IDF, mind that `1 + log(N/n)` (N standing for the total number of corpora and `n` standing for the number of corpora that include the term) formula is better since it avoids the issue when TF is not 0 and IDF turns out equal to 0.