I need to do run a simple two-stage least squares regression on large data matrices. This just requires some
solve() commands, but the matrices have dimensions 100,000 by 5000 matrix. My understanding is that holding a matrix like this in memory would take up a bit less than 4GB of memory. Unfortunately, my 64-bit Win7 machine only has 8GB of RAM. When I try to manipulate the matrices in question, I get the usual 'can't allocate vector of size' message.
I have considered a number of options such as the
bigmemory packages. However, the base R functions for the matrix operations I need only support the usual matrix object type, not the
It seems like it may be possible to extend the code from
biglm(), but I'm on a tight schedule for this project, so I wanted to check-in with you all to see if there existed a ready-made solution for problems like this. Apologies if this was addressed before (I couldn't find it) or if the question is too generic.