bilby.bilby_mcmc.proposals.GMMProposal
- class bilby.bilby_mcmc.proposals.GMMProposal(priors, weight=1, subset=None, first_fit=1000, fit_multiplier=10, nsamples_for_density=1000, fallback=<class 'bilby.bilby_mcmc.proposals.AdaptiveGaussianProposal'>, scale_fits=1)[source]
Bases:
DensityEstimateProposal
A proposal using draws from a Gaussian Mixture Model fit to the chain
- Parameters:
- priors: bilby.core.prior.PriorDict
The set of priors
- weight: float
Weighting factor
- subset: list
A list of keys for which to restrict the proposal to (other parameters will be kept fixed)
- first_fit: int
The number of steps to take before first fitting the KDE
- fit_multiplier: int
The multiplier for the next fit
- nsamples_for_density: int
The number of samples to use when fitting the KDE
- fallback: bilby.core.sampler.bilby_mcmc.proposal.BaseProposal
A proposal to use before first training
- scale_fits: int
A scaling factor for both the initial and subsequent updates
- __init__(priors, weight=1, subset=None, first_fit=1000, fit_multiplier=10, nsamples_for_density=1000, fallback=<class 'bilby.bilby_mcmc.proposals.AdaptiveGaussianProposal'>, scale_fits=1)[source]
Methods
__init__
(priors[, weight, subset, ...])apply_boundaries
(point)apply_periodic_boundary
(key, val)apply_reflective_boundary
(key, val)check_dependencies
([warn])Check the dependencies required to use the proposal
propose
(chain)Propose a new point
refit
(chain)Attributes
acceptance_ratio
accepted
density_name
n
rejected
- static check_dependencies(warn=True)[source]
Check the dependencies required to use the proposal
- Parameters:
- warn: bool
If true, print a warning
- Returns:
- check: bool
If true, dependencies exist
- propose(chain)[source]
Propose a new point
This method must be overwritten by implemented proposals. The propose method is called by __call__, then boundaries applied, before returning the proposed point.
- Parameters:
- chain: bilby.core.sampler.bilby_mcmc.chain.Chain
The chain to use for the proposal
- Returns:
- proposal: bilby.core.sampler.bilby_mcmc.Sample
The proposed point
- log_factor: float
The natural-log of the additional factor entering the acceptance probability to ensure detailed balance. For symmetric proposals, a value of 0 should be returned.