bilby.core.likelihood.StudentTLikelihood
- class bilby.core.likelihood.StudentTLikelihood(x, y, func, nu=None, sigma=1, **kwargs)[source]
Bases:
Analytical1DLikelihood
- __init__(x, y, func, nu=None, sigma=1, **kwargs)[source]
A general Student’s t-likelihood for known or unknown number of degrees of freedom, and known or unknown scale (which tends toward the standard deviation for large numbers of degrees of freedom) - the model parameters are inferred from the arguments of function
https://en.wikipedia.org/wiki/Student%27s_t-distribution#Generalized_Student’s_t-distribution
- Parameters:
- x, y: array_like
The data to analyse
- func:
The python function to fit to the data. Note, this must take the dependent variable as its first argument. The other arguments will require a prior and will be sampled over (unless a fixed value is given).
- nu: None, float
If None, the number of degrees of freedom of the noise is unknown and will be estimated (note: this requires a prior to be given for nu). If not None, this defines the number of degrees of freedom of the data points. As an example a nu of len(x)-2 is equivalent to having marginalised a Gaussian distribution over an unknown standard deviation parameter using a uniform prior.
- sigma: 1.0, float
Set the scale of the distribution. If not given then this defaults to 1, which specifies a standard (central) Student’s t-distribution
- __call__(*args, **kwargs)
Call self as a function.
Methods
__init__
(x, y, func[, nu, sigma])A general Student's t-likelihood for known or unknown number of degrees of freedom, and known or unknown scale (which tends toward the standard deviation for large numbers of degrees of freedom) - the model parameters are inferred from the arguments of function
- Returns:
Difference between log likelihood and noise log likelihood
- Returns:
Attributes
Make func read-only
Makes function_keys read_only
Converts 'scale' to 'precision'
marginalized_parameters
meta_data
This sets up the function only parameters (i.e. not sigma for the GaussianLikelihood) .
The number of data points
This checks if nu or sigma have been set in parameters.
Residual of the function against the data.
The independent variable.
The dependent variable.
- property func
Make func read-only
- property function_keys
Makes function_keys read_only
- property lam
Converts ‘scale’ to ‘precision’
- log_likelihood_ratio()[source]
Difference between log likelihood and noise log likelihood
- Returns:
- float
- property model_parameters
This sets up the function only parameters (i.e. not sigma for the GaussianLikelihood)
- property n
The number of data points
- property nu
This checks if nu or sigma have been set in parameters. If so, those values will be used. Otherwise, the attribute nu is used. The logic is that if nu is not in parameters the attribute is used which was given at init (i.e. the known nu as a float).
- property residual
Residual of the function against the data.
- property x
The independent variable. Setter assures that single numbers will be converted to arrays internally
- property y
The dependent variable. Setter assures that single numbers will be converted to arrays internally