W is a tall and skinny real valued matrix, and diag(S) is a diagonal matrix consists of +1 or -1 on the diagonal. I want the eigen decomposition of A = W * diag(S) * W' where single quote denotes transposition. The main problem is that A is pretty big. Since A is symmetric, rank deficient, and I actually know the maximum rank of A (from W), I think I should be able to do this efficiently. Any idea how to approach this?
My eventual goal is to compute the matrix exponential of A without using MATLAB's expm which is pretty slow for big matrices and does not take advantage of rank deficiency. If A = U * diag(Z) * U' is the eigen decomposition, exp(A) = U * diag(exp(Z)) * U'.
While finding an orthogonal U such that W * diag(S) * W' = U' * diag(Z) * U' looks promising to have an easy algorithm, I need some linear algebra help here.