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

There are a lot of sites out there that use 'tags' to categorize items in their system. For example, YouTube uses keywords to categorize videos, Stack Overflow uses tags to categorize questions, etc.

What formulas do these sites use (especially SO) to build a list of items related to another item based on the tags it has? I'm building a system much like the one on SO and I'd like to find a way to generate a list of 20 items or so based on the tags of one item, but also make it spread enough so that each photo generates a vastly different list, and so that clicking an item in any given related list could eventually lead you to almost every item in the database.

share|improve this question

The technical term for an organization based on user tags is a folksonomy. A google search for that term brings up a huge amount of material on how these systems are put together. A good place to start is the Wikipedia article.

share|improve this answer

I had to solve this exact problem for a contract a few years back, and the company was nice enough to let me blog about how I did it at

You'll note that if you get a decent volume of data then you'll really, really want to do this out of the database.

share|improve this answer

Similarity between items is often represented as dot products between the vectors representing the items. So if you have a tag based system, each tag will define one dimension. The vector then for an item becomes 1 in dimension i if tag i is set for this item (or higher numbers if you allow multiple tagging). If you calculate the dot product of the vectors of two items you will get the similarity for those items (N.b. the vectors have to be normalized so that the absolute value is 1).

Note that the dimensionality will get very large (several tens of thousands of tags are common). This sounds like a show stopper for this kind of thing. But you will also not that the vectors are really sparse and multiple dot product become one big matrix multiplication of a sparse matrix with it's own transposition. Using efficient algorithms for sparse matrix multiplication, this can be done relatively fast.

Also note, that most systems do not only rely on tags, but rather on "user behavior" (whatever that means). I.e. for Youtube user behavior would be "Watching a video", "Subscribing to a channel", "looking for similar videos as video X" or "tagging video x with tag y".

share|improve this answer
up vote 0 down vote accepted

I ended up using the following code (with different names), which finds all other items with at least one tag in common, and orders the results by number of common tags, descending, and subsorts by other criteria specific to my problem:

SELECT PT.WidgetID, COUNT(*) AS CommonTags, PS.OtherOrderingCriteria1, PS.OtherOrderingCriteria2, PS.OtherOrderingCriteria3, PS.Date FROM WidgetTags PT INNER JOIN WidgetStatistics PS ON PT.WidgetID = PS.WidgetID
    WHERE PT.TagID IN (SELECT PTInner.TagID FROM WidgetTags PTInner WHERE PTInner.WidgetID = @WidgetID)
    AND PT.WidgetID != @WidgetID
GROUP BY PT.WidgetID, PS.OtherOrderingCriteria1, PS.OtherOrderingCriteria2, PS.OtherOrderingCriteria3, PS.Date
ORDER BY CommonTags DESC, PS.OtherOrderingCriteria1 DESC, PS.OtherOrderingCriteria2 DESC, PS.OtherOrderingCriteria3 DESC, PS.Date DESC, PT.WidgetID DESC
share|improve this answer

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.