Пример #1
0
    def fit(self, series: TimeSeries):
        super().fit(series)
        series._assert_univariate()
        series = self.training_series

        if self.version == "tsb":
            self.forecast_val = self.method(
                series.values(copy=False),
                h=1,
                future_xreg=None,
                alpha_d=self.alpha_d,
                alpha_p=self.alpha_p,
            )
        elif self.version == "sba":
            try:
                self.forecast_val = self.method(series.values(copy=False),
                                                h=1,
                                                future_xreg=None)
            except errors.TypingError:
                raise_if(
                    True,
                    '"sba" version is not supported with this version of statsforecast.',
                )

        else:
            self.forecast_val = self.method(series.values(copy=False),
                                            h=1,
                                            future_xreg=None)
        return self
Пример #2
0
    def residuals(self,
                  series: TimeSeries,
                  forecast_horizon: int = 1,
                  verbose: bool = False) -> TimeSeries:
        """ A function for computing the residuals produced by the current model on a univariate time series.

        This function computes the difference between the actual observations from `series`
        and the fitted values vector `p` obtained by training the model on `series`.
        For every index `i` in `series`, `p[i]` is computed by training the model on
        `series[:(i - forecast_horizon)]` and forecasting `forecast_horizon` into the future.
        (`p[i]` will be set to the last value of the predicted series.)
        The vector of residuals will be shorter than `series` due to the minimum
        training series length required by the model and the gap introduced by `forecast_horizon`.
        Most commonly, unless otherwise specified, the term "residuals" implies a value for `forecast_horizon` of 1.

        This method works only on univariate series and does not currently support covariates.

        Parameters
        ----------
        series
            The univariate TimeSeries instance which the residuals will be computed for.
        forecast_horizon
            The forecasting horizon used to predict each fitted value.
        verbose
            Whether to print progress.
        Returns
        -------
        TimeSeries
            The vector of residuals.
        """
        series._assert_univariate()

        # get first index not contained in the first training set
        first_index = series.time_index()[self.min_train_series_length]

        # compute fitted values
        p = self.historical_forecasts(series=series,
                                      start=first_index,
                                      forecast_horizon=forecast_horizon,
                                      stride=1,
                                      retrain=True,
                                      last_points_only=True,
                                      verbose=verbose)

        # compute residuals
        series_trimmed = series.slice_intersect(p)
        residuals = series_trimmed - p

        return residuals