# What are some fast approximations of Nearest Neighbor?

Say I have a huge (a few million) list of n vectors, given a new vector, I need to find a pretty close one from the set but it doesn't need to be the closest. (Nearest Neighbor finds the closest and runs in n time)

What algorithms are there that can approximate nearest neighbor very quickly at the cost of accuracy?

EDIT: Since it will probably help, I should mention the data are pretty smooth most of the time, with a small chance of spikiness in a random dimension.

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What is the dimension of the vectors? What distance function are you using? – Aryabhatta Feb 17 '11 at 22:24
5 dimensional. I'm just using a generalization of the Pythagorean theorem. – Nathan Feb 17 '11 at 22:54
This survey might be useful: almaden.ibm.com/u/kclarkson/nn_survey/p.pdf – Aryabhatta Feb 17 '11 at 23:48

There are exist faster algoritms then O(n) to search closest element by arbitary distance. Check http://en.wikipedia.org/wiki/Kd-tree for details.

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+1 I was going to suggest kd-tree. Finds nearest neighbor and can also find the k nearest as well in time O(log(n)+k). – phkahler Feb 18 '11 at 21:05
KD Trees are much faster if you quit early, after looking at say 1000 of 1m points. See the runtimes for cutoff 1000, 5000 under nearest-neighbors-in-high-dimensional-data, also good links on LSH there. – denis Apr 29 '11 at 9:36

If you are using high-dimension vector, like SIFT or SURF or any descriptor used in multi-media sector, I suggest your consider LSH.

A PhD dissertation from Wei Dong (http://www.cs.princeton.edu/cass/papers/cikm08.pdf) might help you find the updated algorithm of KNN search, i.e, LSH. Different from more traditional LSH, like E2LSH (http://www.mit.edu/~andoni/LSH/) published earlier by MIT researchers, his algorithm uses multi-probing to better balance the trade-off between recall rate and cost.

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A web search on "nearest neighbor" lsh library finds http://www.mit.edu/~andoni/LSH/ http://www.cs.umd.edu/~mount/ANN/ http://msl.cs.uiuc.edu/~yershova/MPNN/MPNN.htm

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