MonthlyFourier#
- class pymc_marketing.mmm.fourier.MonthlyFourier(**data)[source]#
Monthly fourier seasonality.
(
Source code,png,hires.png,pdf)
- n_orderint
Number of fourier modes to use.
- prefixstr, optional
Alternative prefix for the fourier seasonality, by default None or “fourier”
- priorPrior | VariableFactory, optional
Prior distribution or VariableFactory for the fourier seasonality beta parameters, by default
Prior("Laplace", mu=0, b=1)- namestr, optional
Name of the variable that multiplies the fourier modes, by default None
- variable_namestr, optional
Name of the variable that multiplies the fourier modes, by default None
Methods
MonthlyFourier.__init__(**data)Create a new model by parsing and validating input data from keyword arguments.
MonthlyFourier.apply(dayofperiod[, sum])Apply fourier seasonality to day of year.
MonthlyFourier.construct([_fields_set])MonthlyFourier.copy(*[, include, exclude, ...])Returns a copy of the model.
MonthlyFourier.dict(*[, include, exclude, ...])MonthlyFourier.from_dict(data)Deserialize the Fourier seasonality.
Get the start date for the Fourier curve.
MonthlyFourier.json(*[, include, exclude, ...])Compute the class name for parametrizations of generic classes.
MonthlyFourier.parse_file(path, *[, ...])MonthlyFourier.parse_raw(b, *[, ...])MonthlyFourier.plot_curve(curve[, ...])Plot the seasonality for one full period.
MonthlyFourier.plot_curve_hdi(curve[, ...])Plot full period of the fourier seasonality.
MonthlyFourier.plot_curve_samples(curve[, ...])Plot samples from the curve.
MonthlyFourier.sample_curve(parameters[, ...])Create full period of the Fourier seasonality.
MonthlyFourier.sample_prior([coords])Sample the prior distributions.
MonthlyFourier.schema([by_alias, ref_template])MonthlyFourier.schema_json(*[, by_alias, ...])Serialize the prior distribution.
MonthlyFourier.to_dict([_orig])Serialize the Fourier seasonality.
MonthlyFourier.update_forward_refs(**localns)MonthlyFourier.validate(value)Attributes
model_computed_fieldsmodel_configConfiguration for the model, should be a dictionary conforming to [
ConfigDict][pydantic.config.ConfigDict].model_extraGet extra fields set during validation.
model_fieldsmodel_fields_setReturns the set of fields that have been explicitly set on this model instance.
nodesFourier node names for model coordinates.
days_in_periodn_orderprefixpriorvariable_name