The MixtureSameFamily
distribution implements a (batch of) mixture
distribution where all component are from different parameterizations of
the same distribution type. It is parameterized by a Categorical
selecting distribution" (over k
component) and a component
distribution, i.e., a Distribution
with a rightmost batch shape
(equal to [k]
) which indexes each (batch of) component.
distr_mixture_same_family(
mixture_distribution,
component_distribution,
validate_args = NULL
)
torch_distributions.Categorical
-like
instance. Manages the probability of selecting component.
The number of categories must match the rightmost batch
dimension of the component_distribution
. Must have either
scalar batch_shape
or batch_shape
matching
component_distribution.batch_shape[:-1]
torch_distributions.Distribution
-like
instance. Right-most batch dimension indexes component.
Additional arguments
if (torch_is_installed()) {
# Construct Gaussian Mixture Model in 1D consisting of 5 equally
# weighted normal distributions
mix <- distr_categorical(torch_ones(5))
comp <- distr_normal(torch_randn(5), torch_rand(5))
gmm <- distr_mixture_same_family(mix, comp)
}
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