projected_differences: Compute the projection of the rescaled difference between the sample covariance
and its separable approximation onto the separable eigenfunctions
Description
Compute the projection of the rescaled difference between the sample covariance
and its separable approximation onto the separable eigenfunctions
a (non-empty) N x d1 x d2 array of data values. The first
direction indices the \(N\) observations, each consisting of a d1 x d2
discretization of the surface, so that Data[i,,] corresponds to the
i-th observed surface.
l1
number of eigenfunctions to be used in the first (row) dimension for the projection
l2
number of eigenfunctions to be used in the second (column) dimension for the projection
with.asymptotic.variances
logical variable; if TRUE, the function outputs the estimate asymptotic variances of the projected differences
Value
A list with
T.N
The projected differences
sigma.left
The row covariances of T.N
sigma.right
The column covariances of T.N
Details
The function computes the projection of the rescaled difference between the sample covariance
and its separable approximation onto the separable eigenfunctions u_i
x v_j : i = 1, …, l1; j = 1, …, l2.