I'm going through the documentation of the sktime package. One thing I just cannot find is the feature importance (that we'd get with sklearn models) or model summary (like the one we can obtain from statsmodels). Is it something that is just not implemented yet?
It seems that this functionality is implemented for models like AutoETS or AutoARIMA.
from matplotlib import pyplot as plt
from sktime.datasets import load_airline
from sktime.forecasting.model_selection import temporal_train_test_split
from sktime.forecasting.base import ForecastingHorizon
y = load_airline()
y_train,y_test = temporal_train_test_split(y)
fh = ForecastingHorizon(y_test.index, is_relative=False)
from sktime.forecasting.ets import AutoETS
model = AutoETS(trend='add',seasonal='mul',sp=12)
model.fit(y_train,fh=y_test.index)
model.summary()
I wonder if these summaries are accessible from instances like ForecastingPipeline.