probabilistic_model.learning.jpt.variables#
Classes#
Class for ordered, discrete random variables. |
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Base class for continuous variables in JPTs. This class does not standardize the data, |
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A continuous variable that is standardized. |
Functions#
Infer the variables from a dataframe. |
Module Contents#
- probabilistic_model.learning.jpt.variables.infer_variables_from_dataframe(data: pandas.DataFrame, scale_continuous_types: bool = False, min_likelihood_improvement: float = 0.1, min_samples_per_quantile: int = 10) typing_extensions.List[random_events.variable.Variable]#
Infer the variables from a dataframe. The variables are inferred by the column names and types of the dataframe.
- Parameters:
data – The dataframe to infer the variables from.
scale_continuous_types – Whether to scale numeric types.
min_likelihood_improvement – The minimum likelihood improvement passed to the Continuous Variables.
min_samples_per_quantile – The minimum number of samples per quantile passed to the Continuous Variables.
- Returns:
The inferred variables.
- class probabilistic_model.learning.jpt.variables.Integer(name: str, mean, std)#
Bases:
random_events.variable.IntegerClass for ordered, discrete random variables.
The domain of an integer variable is the number line.
- mean: float#
Mean of the random variable.
- std: float#
Standard Deviation of the random variable.
- to_json() typing_extensions.Dict[str, typing_extensions.Any]#
- classmethod _from_json(data: typing_extensions.Dict[str, typing_extensions.Any]) typing_extensions.Self#
Create a variable from a json dict. This method is called from the from_json method after the correct subclass is determined and should be overwritten by the respective subclass.
- Parameters:
data – The json dict
- Returns:
The deserialized object
- __eq__(other)#
- __hash__()#
- class probabilistic_model.learning.jpt.variables.Continuous(name: str, mean: float, std: float, minimal_distance: float = 1.0, min_likelihood_improvement: float = 0.1, min_samples_per_quantile: int = 10)#
Bases:
random_events.variable.ContinuousBase class for continuous variables in JPTs. This class does not standardize the data, but needs to know mean and std anyway.
- mean: float#
Mean of the random variable.
- std: float#
Standard Deviation of the random variable.
- minimal_distance: float#
The minimal distance between two values of the variable.
- min_likelihood_improvement: float#
The minimum likelihood improvement passed to the Nyga Distributions.
- min_samples_per_quantile: int#
The minimum number of samples per quantile passed to the Nyga Distributions.
- to_json() typing_extensions.Dict[str, typing_extensions.Any]#
- classmethod _from_json(data: typing_extensions.Dict[str, typing_extensions.Any]) typing_extensions.Self#
Create a variable from a json dict. This method is called from the from_json method after the correct subclass is determined and should be overwritten by the respective subclass.
- Parameters:
data – The json dict
- Returns:
The deserialized object
- class probabilistic_model.learning.jpt.variables.ScaledContinuous(name: str, mean: float, std: float, minimal_distance: float = 1.0, min_likelihood_improvement: float = 0.1, min_samples_per_quantile: int = 10)#
Bases:
ContinuousA continuous variable that is standardized.
- encode(value: typing_extensions.Any)#
- decode(value: float) float#
- __str__()#