I have a set of N objects, and I'd like to compute a NxN distance matrix. Sometimes my set of N objects is very large, and I'd like to compute an approximation to the NxN distance matrix by only computing a subset of the distance comparisons.
Can anyone point me in the direction of something that calculates approximations to a full distance matrix? I have some ideas in mind, but I'd like to avoid re-inventing the wheel.
Edit: An example of the type of algorithm would take advantage of the fact that if there is a very small distance between object A and object B, and there is a very small distance between object B and object C, there has to be a somewhat short distance between objects A and C.
Honestly, I think it depends how close you want your approximation to be and how big your subset is. If you just want some overall feel of what the matrix will look like, you can do simple linear interpolation on a random subset (including the maximal and minimal nodes) getting pretty accurate (tm) results.
I think the real trick here is figuring out the heuristic (linear, quadratic, etc interpolation) and the subset size. You could also figure out the distance matrices of various subsets and then interpolate those matrices with some method (linear, spherical linear, cubic).
Depending on your initial sample, it's pretty much an heuristic trial and error until you go "oh that's good enough for what I need".