Letting be or , the condition number of a matrix is defined as
linalg_cond(A, p = NULL)A real-valued tensor, even when A is complex.
(Tensor): tensor of shape (*, m, n) where * is zero or more batch dimensions
for p in (2, -2), and of shape (*, n, n) where every matrix
is invertible for p in ('fro', 'nuc', inf, -inf, 1, -1).
(int, inf, -inf, 'fro', 'nuc', optional):
the type of the matrix norm to use in the computations (see above). Default: NULL
torch:::math_to_rd("\\kappa(A) = \\|A\\|_p\\|A^{-1}\\|_p")
The condition number of A measures the numerical stability of the linear system AX = B
with respect to a matrix norm.
Supports input of float, double, cfloat and cdouble dtypes.
Also supports batches of matrices, and if A is a batch of matrices then
the output has the same batch dimensions.
p defines the matrix norm that is computed. See the table in 'Details' to
find the supported norms.
For p is one of ('fro', 'nuc', inf, -inf, 1, -1), this function uses
linalg_norm() and linalg_inv().
As such, in this case, the matrix (or every matrix in the batch) A has to be square
and invertible.
For p in (2, -2), this function can be computed in terms of the singular values
torch:::math_to_rd("\\kappa_2(A) = \\frac{\\sigma_1}{\\sigma_n}\\qquad \\kappa_{-2}(A) = \\frac{\\sigma_n}{\\sigma_1}")
In these cases, it is computed using linalg_svd(). For these norms, the matrix
(or every matrix in the batch) A may have any shape.
p | matrix norm |
NULL | 2-norm (largest singular value) |
'fro' | Frobenius norm |
'nuc' | nuclear norm |
Inf | max(sum(abs(x), dim=2)) |
-Inf | min(sum(abs(x), dim=2)) |
1 | max(sum(abs(x), dim=1)) |
-1 | min(sum(abs(x), dim=1)) |
2 | largest singular value |
-2 | smallest singular value |
if (torch_is_installed()) {
a <- torch_tensor(rbind(c(1., 0, -1), c(0, 1, 0), c(1, 0, 1)))
linalg_cond(a)
linalg_cond(a, "fro")
}
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