# tf idf similarity problem

i am using TF/IDF to calculate similarity. For example if i have following two doc.

Doc A => cat dog Doc B => dog sparrow

It is normal it's similarity would be 50% but when I calculate its TF/IDF. It is as follow

Tf values for Doc A dog tf = 0.5 cat tf = 0.5

Tf values for Doc B

dog tf = 0.5 sparrow tf = 0.5

IDF values for Doc A dog idf = -0.4055 cat idf = 0

IDF values for Doc B dog idf = -0.4055 ( without +1 formula 0.6931) sparrow idf = 0

TF/IDF value for Doc A 0.5x-0.4055 + 0.5x0 = -0.20275

TF/IDF values for Doc B 0.5x-0.4055 + 0.5x0 = -0.20275

Now it looks like there is -0.20275 similarity. Is it? Or am i missing something ? Or is any kind of next step too? Please tell me so i can calculate that too.

I used tf/idf formula which wikipedia mentioned

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Are you using Apache Mahout to calculate it? If yes can you please let me know the steps that need to be taken. I have to develop a Prototype to Calculate TF IDF using Apache Mahout. junaid_surqyahoo.co.in –  user1129683 Jan 4 '12 at 10:16

Let's see if I get your question: You want to calculate the TF/IDF similarity between the two documents:

``````Doc A: cat dog
``````

and

``````Doc B: dog sparrow
``````

I take it that this is your whole corpus. Therefore `|D| = 2` Tfs are indeed 0.5 for all words. To calculate the IDF of 'dog', take `log(|D|/|d:dog in d| = log(2/2) = 0` Similarly, the IDFs of 'cat' and 'sparrow' are `log(2/1) = log(2) =1` (I use 2 as the log base to make this easier).

Therefore, the TF/IDF values for 'dog' will be 0.5*0 = 0 the TF/IDF value for 'cat' and 'sparrow' will be 0.5*1 = 0.5

To measure the similarity between the two documents, you should calculate the cosine between the vectors in the (cat, sparrow, dog) space: (0.5, 0 , 0) and (0, 0.5, 0) and get the result 0.

To sum it up:

1. You have an error in the IDF calculations.
2. This error creates wrong TF/IDF values.
3. The Wikipedia article does not explain the use of TF/IDF for similarity well enough. I like Manning, Raghavan & Schütze's explanation much better.
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Thanks Yuval ! ! ! You made my life easy :) There are two problems 1 that i was using natural log. I couldn't find any log2 function in java but i will figure it out. The 2nd problem is more important. I couldn't understand how are you meassuring similarity with cosine? When tf/idf said 50% similarity then why cosine is saying 0% ??? –  user238384 Dec 31 '09 at 21:39
You're welcome. I believe using natural log is better, it was just easier to explain using base 2. Let's clarify the cosine similarity: TF/IDF is purely a representation: You convert a vector of word counts to a vector of TF/IDF values. The cosine similarity is the scalar multiplication between two normalized vectors; The vectors can be the original counts or transformed by TF/IDF. In the case as you stated it, the scalar multiplication will be zero because we either have words appearing in only one vector, or a common word with a zero score ('dog'). HTH. –  Yuval F Jan 1 '10 at 10:53
Thanks Yuval, If I use natural log then my Tf/Idf values are different then yours. If i use log2 then i think i get correct results. Can you please tell me what is the difference between LSI and vector space? Sorry it sounds dumb question. If you can send me a good tutorial how to implement LSI. it would be great help –  user238384 Jan 1 '10 at 23:31
This is by no means a dumb question. Informally, LSI is a way to weight term frequency vectors that uses more information from the term-document matrix than TF/IDF does, via a singular value decomposition (SVD). I suggest you read this: sujitpal.blogspot.com/2008/09/… for a theoretical explanation and an implementation guide. –  Yuval F Jan 3 '10 at 10:02
Thanks for introducing me to Manning, Raghavan & Schütze's book - it is a great resource! –  Tomáš Kafka Oct 14 '10 at 12:20