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?
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.
Try a weighted K-means++ clustering algorithm. Create one matrix of the sum of values for all the 100 input matrices at every point to produce one "grey scale" matrix, then adjust the K-means++ algorithm to work with weighted, (wt), values.
In the initialization phase choose one new data point at random as a new center, using a weighted probability distribution where a point x is chosen with probability proportional to D(X)^2 x wt^2 .
The assignment step should be okay, but when computing the centroids in the update step adjust the formula to account for the weights. (Or use the same formula but each point is used wt times).
You may not be able to use a library function to do this but you start with a 100 fold decrease in number of points and matrices to work with.