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statsmodels.regression.linear_model.RegressionResults.predict

RegressionResults.predict(exog=None, transform=True, *args, **kwargs)

Call self.model.predict with self.params as the first argument.

Parameters:

exog : array-like, optional

The values for which you want to predict.

transform : bool, optional

If the model was fit via a formula, do you want to pass exog through the formula. Default is True. E.g., if you fit a model y ~ log(x1) + log(x2), and transform is True, then you can pass a data structure that contains x1 and x2 in their original form. Otherwise, you’d need to log the data first.

args, kwargs : :

Some models can take additional arguments or keywords, see the predict method of the model for the details.

Returns:

prediction : ndarray or pandas.Series

See self.model.predict

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