torch_std_mean {torch} | R Documentation |
Std_mean
Description
Std_mean
Usage
torch_std_mean(self, dim, unbiased = TRUE, keepdim = FALSE)
Arguments
self |
(Tensor) the input tensor. |
dim |
(int or tuple of ints) the dimension or dimensions to reduce. |
unbiased |
(bool) whether to use the unbiased estimation or not |
keepdim |
(bool) whether the output tensor has |
std_mean(input, unbiased=TRUE) -> (Tensor, Tensor)
Returns the standard-deviation and mean of all elements in the input
tensor.
If unbiased
is FALSE
, then the standard-deviation will be calculated
via the biased estimator. Otherwise, Bessel's correction will be used.
std_mean(input, dim, unbiased=TRUE, keepdim=False) -> (Tensor, Tensor)
Returns the standard-deviation and mean of each row of the input
tensor in the
dimension dim
. If dim
is a list of dimensions,
reduce over all of them.
If keepdim
is TRUE
, the output tensor is of the same size
as input
except in the dimension(s) dim
where it is of size 1.
Otherwise, dim
is squeezed (see torch_squeeze
), resulting in the
output tensor having 1 (or len(dim)
) fewer dimension(s).
If unbiased
is FALSE
, then the standard-deviation will be calculated
via the biased estimator. Otherwise, Bessel's correction will be used.
Examples
if (torch_is_installed()) {
a = torch_randn(c(1, 3))
a
torch_std_mean(a)
a = torch_randn(c(4, 4))
a
torch_std_mean(a, 1)
}