Find correlation in large dataset

I have a huge dataset. We are talking about 100 3D matrices with 121x145x121 cells. Any cell has a value between 0 and 1, and I need a way to cluster these cells according to their correlation. The problem is the dataset is too big for any algorithm I know; even using just half of it (any matrix is a MRI scan of a brain) we have around 400 bilion pairs. Any ideas?

-
FYI, I am programming in MATLAB. –  Annoys Parrot Apr 23 at 17:55
What kind of correlation are you talking about? Can you define what "correlation" means in the context of the data? –  Vivin Paliath Apr 23 at 17:55
I have to ask: how do the cells "correlate"? Is it just a number that matches or something more complicated? –  Frecklefoot Apr 23 at 17:57
Too bad you're using MATLAB. I know MATLAB specializes in matrix math, but you might get better performance out of a compiled app, tailored specifically for your problem –  Frecklefoot Apr 23 at 17:59
@VivinPaliath Any correlation would work; but for love of simplicity we can assume linear correlations. You can think at the problem in this way: I have 100 3D matrices, so any cell (e.g., 70-50-70) can be thought as an array of values (the values of all the cells with that position among the 100 matrices). So what I need is a way to calculate correlation between all these 'arrays', so that I know that cell 60-70-60 is highly correlated with cell 61-70-60. This should clarify my problem (for Frecklefoot as well). –  Annoys Parrot Apr 23 at 18:03

As a first step I would be tempted to try K-means clustering.

This appears in the Matlab statistics toolbox as the function kmeans.

In this algorithm you only end up computing the distances between the K current centres and the data, so the number of pairs is much smaller than comparing all choices.

In Matlab, I've also found that the speed of the operation can be quite dependent on the organisation of your matrix (due to memory caching and optimisation issues). I would recommend transforming your 3d matrices so that the columns (held together in memory) correspond to the 100 values for a particular cell.

This can be done with the permute function.

-
This is a good approach. +1 –  Vivin Paliath Apr 23 at 18:40
Native kmeans function does not support 3D clustering, unfortunately. I can 'scroll' the matrices but this will again takes ages. I am not actually searching for an algorithm: an heuristic would do the job as well, if I could find any. –  Annoys Parrot Apr 23 at 18:47
Do you have enough memory to use reshape to turn it from multiple 3d matrices to a single 2d matrix? (Of size n*m with n=100 and m=121x145x121) –  Peter de Rivaz Apr 23 at 18:50
@PeterdeRivaz I am quite sure I am not. I can give it a shot but we are still talking about an operation that may take months (rearranging 2122945 elements...!). –  Annoys Parrot Apr 23 at 19:53