I'm conducting dimensional reduction of a square matrix A. My issue now is that I have problem computing eigvalue decomposition of a 13000 x 13000 matrix A, i.e. `[v d]=eigs(A)`

. Because it's a sparse matrix, I get 'out of memory error' using a 4GB RAM. I'm convinced it's not my PC's problem, since the memory is not used up when `eigs`

command is run. The help I saw online had to do with ARPACK. I checked the recommended site, but there were a lot of files there, don't know which to download. Also, I did not understand how to use it with MATLAB. Another help says use numerical methods, but I dont know which specific one to use. Please any solution is welcome.

```
Error in ==> eigs>ishermitian at 1535
tf = isequal(A,A');
Error in ==> eigs>checkInputs at 479
issymA = ishermitian(A);
Error in ==> eigs at 96
[A,Amatrix,isrealprob,issymA,n,B,classAB,k,eigs_sigma,whch, ...
Error in ==> labcomp at 20
[vector lambda] = eigs(A)
```

Please can I get translation of these errors and how to correct it?

`eigs(.)`

returns only 6 largest eigenvalues and associated eigenvectors. This should not be a memory problem. How much memory your`A`

takes, i.e. how sparse it really is? Thanks – eat Jul 11 '11 at 14:35`SVD`

function in MATLAB. – thron of three Jul 11 '11 at 14:53