Wrap-up and Conclusion

That summarizes our exploration on doubly robust estimator!

If you are interested in more details, this links to a cool paper from Callaway and Sant’Anna (2020) on using methods similar to doubly robust estimator described here to measure dynamic treatment effects in economic DiD experiments (difference-in-difference) studies. The paper discusses the common estimation and interference procedures for measuring treatment effects in varying time periods.

Thank you for reading and having the interest on our project!

Reference:

  1. “Doubly Robust Estimators - Inverse Probability of Treatment Weighting (IPTW).” Coursera, www.coursera.org/lecture/crash-course-in-causality/doubly-robust-estimators-hZjgB. Accessed 28 Apr. 2023.
  2. Hidalgo, Sebastian Jose Teran. “Dr. Sebastian Teran Hidalgo - Doubly Robust Estimation of Causal Effects in R.” Www.youtube.com, 7 Oct. 2020, www.youtube.com/watch?v=5rSTEzp_n48. Accessed 28 Apr. 2023.
  3. Hidalgo, Sebastian Jose Teran. “Seborinos/Doubly_robust_nyr_2020.” GitHub, 16 Aug. 2020, github.com/Seborinos/doubly_robust_nyr_2020. Accessed 28 Apr. 2023.
  4. Rothman, Andrew. “Doubly Robust Estimators for Causal Inference in Statistical Estimation.” Medium, 27 Dec. 2020, towardsdatascience.com/doubly-robust-estimators-for-causal-inference-in-statistical-estimation-3c00847e9db. Accessed 28 Apr. 2023.
  5. Lunceford, Jared K., and Marie Davidian. “Stratification and weighting via the propensity score in estimation of causal treatment effects: a comparative study.” Statistics in medicine 23.19 (2004): 2937-2960.
  6. Zhong, Yongqi, et al. “AIPW: Augmented Inverse Probability Weighting.” R-Packages, 11 June 2021, cran.r-project.org/package=AIPW. Accessed 1 May 2023.