Ok, so I'm doing the power method in python.
Basically, the equation revolves around multiplying a matrix A by a vector (y) like this:
for i in range(0, 100): y = mult(matrix,y) y = scalarMult(y, 1.0/y)
Then you multiply the vector y by 1/(the first element in y). Now, if the matrix is sparse or has a zero in just the right spot, you will get a zero for the first element in a. None of my googling skills have yielded a modification to the power method to avoid this.
For those interested, I'm trying to solve for the eigenvalues of a matrix; and my code works as long as there aren't too many zeros.