# Combining TF-IDF (cosine similarity) with pagerank?

Given a query I have a cosine score for a document. I also have the documents pagerank. Is there a standard good way of combining the two?

I was thinking of multiply them

`````` Total_Score = cosine-score * pagerank
``````

Because if you get to low on either pagerank or the cosine-score, the document is not interesting.

Or is it preferable to have a weighted sum?

``````Total_Score = weight1 * cosine-score + weight2 * pagerank
``````

Is this better? Then you might have zero cosine score, but a high pagerank, and the page will show up among the results.

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The weighted sum is on the right track, but would you want to make hat a wlog(PageRank)? or wlog(1+PageRank)? All this would be a linear combination, wouldn't you want to consider a nonlinear combination instead that has a sigmoid signature? –  sAguinaga Apr 29 at 19:53

The weighted sum is probably better as a ranking rule.

It helps to break the problem up into a retrieval/ filtering step and a ranking step. The problem outlined with the weighted sum approach then no longer holds.

The process outlined in this paper by Sergey Brin and Lawrence Page uses a variant of the vector/ cosine model for retrieval and it seems some kind of weighted sum for the ranking where the weights are determined by user activity (see section 4.5.1). Using this approach a document with zero cosine would not get pass the retrieval/ filtering step and thus would not be considered for ranking.

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You could consider using a harmonic mean. With a harmonic mean the the 2 scores will essentially be averaged however, low scores will drag the average down more than they would in a regular average.

You could use:

``````Total_Score = 2*(cosine-score * pagerank) / (cosine-score + pagerank)
``````

Let's say pagerank scored 0.1 and cosine 0.9, the normal average of these two number would be: `(0.1 + 0.9)/2 = 0.5`, the harmonic mean would be: `2*(0.9*0.1)/(0.9 + 0.1) = 0.18`.

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I can't imagine a single case where this would be useful. Pagrank computes how "important" a document is measured as connection to other important documents (I assume that's what you mean. Edges are document to document links based on term co-occurences. If you mean something else, please specify).

Cosine score is a similarity metric between two documents. So your thought is to combine a pairwise metric with a node metric to find only important documents similar to another document? Why not just run pagerank on the ego-network of the other document?

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Cosine score is the cosine similarity between the query and the document. –  user1506145 Jun 11 '13 at 13:46

I understand that you are making a trade-off between the relativity and importance. This is a problem of Multi-objective optimization.

I think your second solution would work. It's the so-called linear scalarization . You must want to know how to optimize the weights. But the methods to do this can be found with different philosophies, and kind of subjective depending on the primacy of each variables case by case. Actually, How to optimize the weights in such a problem is a research area of mathematics. So it's hard to point out which model or method is the fittest one to your case. You might wanna keep going with the wiki links above, and try if you can find some principles on this kind of problems, and then follow them to solve your own case.

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