2

I'm interested in performing knn search on large dataset.

There are some libs: ANN and FLANN, but I'm interested in the question: how to organize the search if you have a database that does not fit entirely into memory(RAM)?

2 Answers 2

4

I suppose it depends on how much bigger your index is in comparison to the memory. Here are my first spontaneous ideas:

  1. Supposing it was tens of times the size of the RAM, I would try to cluster my data using, for instance, hierarchical clustering trees (implemented in FLANN). I would modify the implementation of the trees so that they keep the branches in memory and save the leaves (the clusters) on the disk. Therefore, the appropriate cluster would have to be loaded each time. You could then try to optimize this in different ways.

  2. If it was not that bigger (let's say twice the size of the RAM), I would separate the dataset in two parts and create one index for each. I would therefore need to find the nearest neighbor in each dataset and then choose between them.

3
  • You are right, we need to use some hierarchical representation, but maybe there is some ready to use solution?
    – mrgloom
    Apr 17, 2013 at 14:05
  • Maybe there is, but I haven't heard of any. Moreover, I believe that this really is a problem of optimizations that are specific to your situation (e.g. is it more costly to make more computations in order to access the disk less times, or is it cheap to access the disk in comparison to your computation power?). Let us know if you find something... Apr 17, 2013 at 14:11
  • I would try to cluster my data using, for instance, hierarchical clustering trees. Is a kdd or ball tree such a method?
    – Chuck
    Nov 4, 2018 at 12:01
4

It depends if your data is very high-dimensional or not. If it is relatively low-dimensional, you can use an existing on-disk R-Tree implementation, such as Spatialite.

If it is a higher dimensional data, you can use X-Trees, but I don't know of any on-disk implementations off the top of my head.

Alternatively, you can implement locality sensitive hashing with on disk persistence, for example using mmap.

3
  • Why it depends on dimension size?
    – mrgloom
    Apr 18, 2013 at 6:16
  • 2
    It's about the so called curse of dimensionality (en.wikipedia.org/wiki/Curse_of_dimensionality): in higher dimensional spaces, the data becomes very sparse and all your data points start looking equally (dis)similar. So for example methods using similarity measures such as euclidean distance stop working well. Apr 18, 2013 at 7:41
  • I have vector size about 24*32 or 32*32 is it big or small? What metric should I use instead of euclidean distance?
    – mrgloom
    Apr 18, 2013 at 11:37

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.