_AutoARIMAAdapter¶
- class _AutoARIMAAdapter(d: Optional[int] = None, D: Optional[int] = None, max_p: int = 5, max_q: int = 5, max_P: int = 2, max_Q: int = 2, max_order: int = 5, max_d: int = 2, max_D: int = 1, start_p: int = 2, start_q: int = 2, start_P: int = 1, start_Q: int = 1, season_length: int = 1, **kwargs)[source]¶
Bases:
etna.models.statsforecast._StatsForecastBaseAdapter
Adapter for
statsforecast.models.AutoARIMA
.Init model with given params.
- Parameters
d (Optional[int]) – Order of first-differencing.
D (Optional[int]) – Order of seasonal-differencing.
max_p (int) – Max autorregresives p.
max_q (int) – Max moving averages q.
max_P (int) – Max seasonal autorregresives P.
max_Q (int) – Max seasonal moving averages Q.
max_order (int) – Max p+q+P+Q value if not stepwise selection.
max_d (int) – Max non-seasonal differences.
max_D (int) – Max seasonal differences.
start_p (int) – Starting value of p in stepwise procedure.
start_q (int) – Starting value of q in stepwise procedure.
start_P (int) – Starting value of P in stepwise procedure.
start_Q (int) – Starting value of Q in stepwise procedure.
season_length (int) – Number of observations per unit of time. Ex: 24 Hourly data.
**kwargs – Additional parameters for
statsforecast.models.AutoARIMA
.
- Inherited-members
Methods
fit
(df, regressors)Fit statsforecast adapter.
forecast
(df[, prediction_interval, quantiles])Compute predictions on future data from a statsforecast model.
forecast_components
(df)Estimate forecast components.
get_model
()Get statsforecast model that is used inside etna class.
predict
(df[, prediction_interval, quantiles])Compute in-sample predictions from a statsforecast model.
predict_components
(df)Estimate prediction components.