bilby.core.prior.analytical.Cosine
- class bilby.core.prior.analytical.Cosine(minimum=-1.5707963267948966, maximum=1.5707963267948966, name=None, latex_label=None, unit=None, boundary=None)[source]
Bases:
Prior
- __init__(minimum=-1.5707963267948966, maximum=1.5707963267948966, name=None, latex_label=None, unit=None, boundary=None)[source]
Cosine prior with bounds
- Parameters:
- minimum: float
See superclass
- maximum: float
See superclass
- name: str
See superclass
- latex_label: str
See superclass
- unit: str
See superclass
- boundary: str
See superclass
- __call__()[source]
Overrides the __call__ special method. Calls the sample method.
- Returns:
- float: The return value of the sample method.
Methods
__init__
([minimum, maximum, name, ...])Cosine prior with bounds
cdf
(val)Generic method to calculate CDF, can be overwritten in subclass
from_json
(dct)from_repr
(string)Generate the prior from its __repr__
get_instantiation_dict
()is_in_prior_range
(val)Returns True if val is in the prior boundaries, zero otherwise
ln_prob
(val)Return the prior ln probability of val, this should be overwritten
prob
(val)Return the prior probability of val.
rescale
(val)'Rescale' a sample from the unit line element to a uniform in cosine prior.
sample
([size])Draw a sample from the prior
to_json
()Attributes
boundary
Returns True if the prior is fixed and should not be used in the sampler.
Latex label that can be used for plots.
If a unit is specified, returns a string of the latex label and unit
maximum
minimum
unit
width
- property is_fixed
Returns True if the prior is fixed and should not be used in the sampler. Does this by checking if this instance is an instance of DeltaFunction.
- Returns:
- bool: Whether it’s fixed or not!
- is_in_prior_range(val)[source]
Returns True if val is in the prior boundaries, zero otherwise
- Parameters:
- val: Union[float, int, array_like]
- Returns:
- np.nan
- property latex_label
Latex label that can be used for plots.
Draws from a set of default labels if no label is given
- Returns:
- str: A latex representation for this prior
- property latex_label_with_unit
If a unit is specified, returns a string of the latex label and unit
- ln_prob(val)[source]
Return the prior ln probability of val, this should be overwritten
- Parameters:
- val: Union[float, int, array_like]
- Returns:
- np.nan
- prob(val)[source]
Return the prior probability of val. Defined over [-pi/2, pi/2].
- Parameters:
- val: Union[float, int, array_like]
- Returns:
- float: Prior probability of val