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Std
torch_std(self, dim, unbiased = TRUE, keepdim = FALSE)
(Tensor) the input tensor.
(int or tuple of ints) the dimension or dimensions to reduce.
(bool) whether to use the unbiased estimation or not
(bool) whether the output tensor has dim
retained or not.
Returns the standard-deviation 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.
Returns the standard-deviation 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.
# NOT RUN {
if (torch_is_installed()) {
a = torch_randn(c(1, 3))
a
torch_std(a)
a = torch_randn(c(4, 4))
a
torch_std(a, dim=1)
}
# }
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