statsmodels.stats.outliers_influence.MLEInfluence¶
-
class
statsmodels.stats.outliers_influence.MLEInfluence(results, resid=None, endog=None, exog=None, hat_matrix_diag=None, cov_params=None, scale=None)[source]¶ Local Influence and outlier measures (experimental)
This currently subclasses GLMInfluence instead of the other way. No common superclass yet. This is another version before checking what is common
- Parameters
- results
instanceofresultsclass This only works for model and results classes that have the necessary helper methods.
- other arguments are only to override default behavior and are used instead
- of the corresponding attribute of the results class.
- By default resid_pearson is used as resid.
- results
Notes
MLEInfluence produces the same results as GLMInfluence (verified for GLM Binomial and Gaussian). There will be some differences for non-canonical links or if a robust cov_type is used.
Warning: This does currently not work for constrained or penalized models, e.g. models estimated with fit_constrained or fit_regularized.
This has not yet been tested for correctness when offset or exposure are used, although they should be supported by the code.
status: experimental, This class will need changes to support different kinds of models, e.g. extra parameters in discrete.NegativeBinomial or two-part models like ZeroInflatedPoisson.
- Attributes
- hat_matrix_diag (hii)
Thisisthegeneralizedleveragecomputedasthe local derivative of fittedvalues (predicted mean) with respect to the observed response for each observation.
- d_params
ChangeinparameterscomputedwithoneNewtonstepusingthe full Hessian corrected by division by (1 - hii).
- dbetas
changeinparametersdividedbythestandarderrorofparameters from the full model results,
bse.- cooks_distance
quadraticformforchangeinparametersweightedby cov_paramsfrom the full model divided by the number of variables. It includes p-values based on the F-distribution which are only approximate outside of linear Gaussian models.- resid_studentized
InthegeneralMLEcaseresid_studentizedare computed from the score residuals scaled by hessian factor and leverage. This does not use
cov_params.- d_fittedvalues
localchangeofexpectedmeangiventhechangeinthe parameters as computed in
d_params.d_fittedvalues_scaledsameasd_fittedvaluesbutscaledbythestandardChange in fittedvalues scaled by standard errors
- params_one
istheonestepparameterestimatecomputedasparams from the full sample minus
d_params.
- hat_matrix_diag (hii)
Methods
plot_index([y_var, threshold, title, ax, idx])index plot for influence attributes
plot_influence([external, alpha, criterion, …])Plot of influence in regression.
Creates a DataFrame with influence results.
Properties
Cook’s distance and p-values
Change in expected response, fittedvalues
Change in fittedvalues scaled by standard errors
Change in parameter estimates
Scaled change in parameter estimates
Diagonal of the generalized leverage
Parameter estimate based on one-step approximation
Score residual divided by sqrt of hessian factor