statsmodels.genmod.generalized_linear_model.GLMResults.plot_added_variable

GLMResults.plot_added_variable(focus_exog, resid_type=None, use_glm_weights=True, fit_kwargs=None, ax=None) [source]

Create an added variable plot for a fitted regression model.

Parameters:
  • focus_exog (int or string) – The column index of exog, or a variable name, indicating the variable whose role in the regression is to be assessed.
  • resid_type (string) – The type of residuals to use for the dependent variable. If None, uses resid_deviance for GLM/GEE and resid otherwise.
  • use_glm_weights (bool) – Only used if the model is a GLM or GEE. If True, the residuals for the focus predictor are computed using WLS, with the weights obtained from the IRLS calculations for fitting the GLM. If False, unweighted regression is used.
  • fit_kwargs (dict, optional) – Keyword arguments to be passed to fit when refitting the model.
  • ax (Axes instance) – Matplotlib Axes instance
Returns:

fig – A matplotlib figure instance.

Return type:

matplotlib Figure

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© 2006–2008 Scipy Developers
© 2006 Jonathan E. Taylor
Licensed under the 3-clause BSD License.
http://www.statsmodels.org/stable/generated/statsmodels.genmod.generalized_linear_model.GLMResults.plot_added_variable.html