summary.ddml_plm function

Inference Methods for Partially Linear Estimators.

Inference Methods for Partially Linear Estimators.

Inference methods for partially linear estimators. Simple wrapper for sandwich::vcovHC() and sandwich::vcovCL(). Default standard errors are heteroskedasiticty-robust. If the ddml

estimator was computed using a cluster_variable, the standard errors are also cluster-robust by default.

## S3 method for class 'ddml_fpliv' summary(object, ...) ## S3 method for class 'ddml_pliv' summary(object, ...) ## S3 method for class 'ddml_plm' summary(object, ...)

Arguments

  • object: An object of class ddml_plm, ddml_pliv, or ddml_fpliv as fitted by ddml_plm(), ddml_pliv(), and ddml_fpliv(), respectively.
  • ...: Additional arguments passed to vcovHC and vcovCL. See sandwich::vcovHC() and sandwich::vcovCL() for a complete list of arguments.

Returns

An array with inference results for each ensemble_type.

Examples

# Construct variables from the included Angrist & Evans (1998) data y = AE98[, "worked"] D = AE98[, "morekids"] X = AE98[, c("age","agefst","black","hisp","othrace","educ")] # Estimate the partially linear model using a single base learner, ridge. plm_fit <- ddml_plm(y, D, X, learners = list(what = mdl_glmnet, args = list(alpha = 0)), sample_folds = 2, silent = TRUE) summary(plm_fit)

References

Zeileis A (2004). "Econometric Computing with HC and HAC Covariance Matrix Estimators.” Journal of Statistical Software, 11(10), 1-17.

Zeileis A (2006). “Object-Oriented Computation of Sandwich Estimators.” Journal of Statistical Software, 16(9), 1-16.

Zeileis A, Köll S, Graham N (2020). “Various Versatile Variances: An Object-Oriented Implementation of Clustered Covariances in R.” Journal of Statistical Software, 95(1), 1-36.

See Also

sandwich::vcovHC(), sandwich::vcovCL()