# Algorithm to find for all points in set A the nearest neighbor in set B

Suppose we have two sets of points A, B, and we want to find for every point in set A its nearest neighbor in set B.

There are many good algorithms to find the nearest neighbor for one point. Is there some way to use the information we got for a_1, to more efficiently search for the nearest neighbor for a_2 or other points in the set?

I am thinking something like: use triangular inequlity to get a interval for possible distance between every point in B and new point a_2, and sort the max and min of the intervals, and then I can search only the points in B which falls in the first interval.

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What does effort mean in your context? –  EvilTeach Oct 21 '12 at 17:44
calculation of the distance d(x,y). –  gstar2002 Oct 21 '12 at 17:50
are there any restrictions you can put on the points? –  Cam Oct 21 '12 at 17:52
I dont know if this is part of an optimal solution, just that it's something relevant en.wikipedia.org/wiki/K-d_tree –  rambo coder Oct 21 '12 at 18:00

1. Find Voronoi diagram for points of set B.
2. Apply a Sweep line algorithm over points of set A and Voronoi diagram of set B. Wherever sweep line covers some point from set A, look between which edges of Voronoi diagram this point is located. This allows to determine to which face of Voronoi diagram this point belongs. Which gives the closest point from set B.

Details for step 2: Keep all edges of Voronoi diagram, currently intersected by sweep line, in some ordered container. When sweep line covers some vertex of Voronoi diagram, remove/add edges, incident to this vertex, from/to container. To look, between which edges some point is located, get successor/predecessor edges to this point in container.

Time complexity is O((M+N) log M). N = |A|, M = |B|.

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You may benefit from reading bentleys "writing efficient programs" where he deals with a case study of the traveling salesman program. One of the savings that he recognized was that the distince between two points involved taking a square root which was expensive. Taking the square root gives you the actual distance, not taking the square root gives you a number which can be used to compare against other relative values.

I highly recommend reading the book. It will put your brain in the right place.

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Another possibility is to place both points of A and B together into a neighborhood matrix.

First place all your points into a 2D square matrix. Then you can run a full or partial spatial sort, so points will became ordered inside the matrix.

Points with small Y could move to the top rows of the matrix, and likewise, points with large Y would go to the bottom rows. The same will happen with points with small X coordinates, that should move to the columns on the left. And symmetrically, points with large X value will go to the right columns.

After you did the spatial sort (there are many ways to achieve this, both by serial or parallel algorithms) you can lookup the nearest points of a given point P by just visiting the adjacent cells where point P is actually stored in the neighborhood matrix.

You can read more details for this idea in the following paper (you will find PDF copies of it online): Supermassive Crowd Simulation on GPU based on Emergent Behavior.

The sorting step gives you interesting choices. You can use just the even-odd transposition sort described in the paper, which is very simple to implement (even in CUDA). If you run just one pass of this, it will give you a partial sort, which can be already useful if your matrix is near-sorted. That is, if your points move slowly, it will save you a lot of computation.

If you need a full sort, you can run such even-odd transposition pass several times (as described in the following Wikipedia page):

http://en.wikipedia.org/wiki/Odd%E2%80%93even_sort

Another possibility is to implement the spatial sort alternating X and Y passes and using Shell-sort, to achieve a more efficient full sort:

http://en.wikipedia.org/wiki/Shell_sort

Personally I think it is a wonderful solution (have implemented it myself), but still almost unknown.

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