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In a project I'm currently working reside about 200,000 users. For each of these users we defined a similarity measure with regard to an other user. This yields a similarity matrix of 200000x200000. A tad large. A naive approach (in Ruby) of calculating each entry would take days.

What strategies can I employ to to make computing the matrix fields feasible? In what data store should I put this beast?

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How long does it take? –  Phpdevpad Aug 24 '12 at 9:07
How full do you expect the result to be ? Will all users have some (meaningful) similarity to all other users, or will your similarity matrix have a lot of 0 entries, or entries which are close enough to 0 to be insignificant ? –  High Performance Mark Aug 24 '12 at 9:09
@Chiyou Many days. I also expect users to update their details which would trigger new calculations. –  harm Aug 24 '12 at 9:13
@HighPerformanceMark I'm not sure yet. I'd suspect a lot of near zeros. –  harm Aug 24 '12 at 9:14
OK, so we're getting some idea of the contents of the data structure (it's sparse, it's symmetric) now what about the operations you want to perform on it. How often will you want to update it ? What volumes of data will need to be trawled through for each update ? What read/enquiry operations do you want to support ? Again, the statistics for those. –  High Performance Mark Aug 24 '12 at 9:21

3 Answers 3

up vote 3 down vote accepted

Here are some bits and pieces of an answer, there are still too many gaps in what you've told us to permit a good answer, but you can fill those in yourself. From everything you've told us I don't think that the major part of your task is to efficiently calculate a large similarity matrix, I think that the major parts are to efficiently retrieve values from such a matrix and to efficiently update the matrix.

As we've already determined the matrix is sparse and symmetric; it would be useful to know how sparse. This reduces the storage requirements considerably, but we don't know by how much.

You've told us a bit about updates to user profiles but does your similarity matrix have to be updated as frequently ? My expectation (another assumption) is that similarity measures do not change quickly or sharply when a user modifies his/her profile. From this I hypothesise that working with a similarity measure which is a few minutes (even a few hours) out of date won't do any serious harm.

I think that all this takes us into the domain of databases, which should support fast access to stored similarity measures of the volumes you indicate. I'd be looking to do batch updates of the measures, and only of the measures for users whose profiles have changed, at an interval to suit your demands and availability of computer power.

As for the initial creation of the first version of the similarity matrix, so what if it takes a week in the background, you're only going to do it once.

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The measure is probably symmetric, so you only need to store half the matrix in the database. But this doesn't help much. You could also avoid storing all pairs with measure zero, if you have lots of them.

Store only the data that will be actually displayed, like the top 10 closest users for each user.

And calculate the similarity measure on the fly for all other user pairs.

Still sounds like a nightmare to keep up to date, maybe even don't store anything.

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The measure is indeed symmetric. Not storing anything would imply calculating everything every time. –  harm Aug 24 '12 at 9:30

You probably don't need all the pairs, so I would go for a sparse matrix representation. As for the calculation itself, you can use something like a K-d tree or a Octree (or anything in that family) or any other type of space partitioning method, depending on the properties of your feature set (upon which you calculate similarity) and your similarity measure.

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Why not a quadtree? –  Phpdevpad Aug 24 '12 at 9:29
@Chiyou Why not an octree? :) I'm giving examples anyway, OP doesn't give any clues about his feature set. –  enobayram Aug 24 '12 at 10:01
Because quadtree is for 2d plane? Octree is for 3d space? –  Phpdevpad Aug 24 '12 at 10:05
@Chiyou Asking how to calculate a similarity matrix efficiently, without giving details about the similarity measure is like asking, "I have a problem, how should I solve it?" All I felt I could do was to provide some links to some random possibilities. –  enobayram Aug 24 '12 at 10:25
@Chiyou - it appears that this is not similarity in a 2-d space, but a higher dimensional space (15 dimensions or so.) A quadtree is not appropriate there, but a k-d tree would be. –  user85109 Aug 24 '12 at 14:14

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