Source code for popsynth.aux_samplers.trunc_normal_aux_sampler

import scipy.stats as stats
import numpy as np

from popsynth.auxiliary_sampler import AuxiliarySampler, AuxiliaryParameter


[docs]class TruncatedNormalAuxSampler(AuxiliarySampler): _auxiliary_sampler_name = "TruncatedNormalAuxSampler" mu = AuxiliaryParameter(default=0) tau = AuxiliaryParameter(default=1, vmin=0) lower = AuxiliaryParameter() upper = AuxiliaryParameter() sigma = AuxiliaryParameter(default=1, vmin=0)
[docs] def __init__(self, name: str, observed: bool = True): """ A truncated normal sampler, where property ~ N(``mu``, ``sigma``), between ``lower`` and ``upper``. :param name: Name of the property :type name: str :param observed: `True` if the property is observed, `False` if it is latent. Defaults to `True` :type observed: bool :param mu: Mean of the normal :type mu: :class:`AuxiliaryParameter` :param tau: Standard deviation of the normal :type tau: :class:`AuxiliaryParameter` :param lower: Lower bound of the truncation :type lower: :class:`AuxiliaryParameter` :param upper: Upper bound of the truncation :type upper: :class:`AuxiliaryParameter` :param sigma: Standard deviation of normal distribution from which observed values are sampled, if ``observed`` is `True` :type sigma: :class:`AuxiliaryParameter` """ super(TruncatedNormalAuxSampler, self).__init__(name=name, observed=observed)
[docs] def true_sampler(self, size): l = (self.lower - self.mu) / self.tau u = (self.upper - self.mu) / self.tau self._true_values = stats.truncnorm.rvs( l, u, loc=self.mu, scale=self.tau, size=size, ) assert np.alltrue(self._true_values >= self.lower) assert np.alltrue(self._true_values <= self.upper)
[docs] def observation_sampler(self, size): if self._is_observed: self._obs_values = stats.norm.rvs(loc=self._true_values, scale=self.sigma, size=size) else: self._obs_values = self._true_values