Censored#
- class pymc_extras.prior.Censored(distribution: InstanceOf[Prior], lower: float | InstanceOf[pt.TensorVariable] = -inf, upper: float | InstanceOf[pt.TensorVariable] = inf)[source]#
Create censored random variable.
Examples
Create a censored Normal distribution:
from pymc_extras.prior import Prior, Censored normal = Prior("Normal") censored_normal = Censored(normal, lower=0)
Create hierarchical censored Normal distribution:
from pymc_extras.prior import Prior, Censored normal = Prior( "Normal", mu=Prior("Normal"), sigma=Prior("HalfNormal"), dims="channel", ) censored_normal = Censored(normal, lower=0) coords = {"channel": range(3)} samples = censored_normal.sample_prior(coords=coords)
- __init__(*args: Any, **kwargs: Any) None#
Methods
__init__(*args, **kwargs)create_likelihood_variable(name, mu, observed)Create observed censored variable.
create_variable(name[, xdist])Create censored random variable.
from_dict(data)Create a censored distribution from a dictionary.
sample_prior([coords, name, xdist])Sample the prior distribution for the variable.
to_dict()Convert the censored distribution to a dictionary.
to_graph()Generate a graph of the variables.
Attributes
dimsThe dims from the distribution to censor.
lowerupperdistribution