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| Perbezaan dalam Perbezaan Dipertingkat Pembelajaran Mesin (ML-DiD)× | Perbezaan-dalam-Perbezaan Dinamik× | |
|---|---|---|
| Bidang | Inferens Kausal | Inferens Kausal |
| Keluarga | Regression model | Regression model |
| Tahun asal≠ | 2018-2020 | 2021 |
| Pengasas≠ | Chernozhukov et al. (double/debiased ML framework); Sant'Anna & Zhao (2020) for DR-DiD | Callaway & Sant'Anna; Sun & Abraham |
| Jenis≠ | Causal inference / semiparametric | Causal inference / quasi-experimental |
| Sumber perintis≠ | Chernozhukov, V., Chetverikov, D., Demirer, M., Duflo, E., Hansen, C., Newey, W., & Robins, J. (2018). Double/debiased machine learning for treatment and structural parameters. The Econometrics Journal, 21(1), C1-C68. DOI ↗ | Callaway, B., & Sant'Anna, P. H. C. (2021). Difference-in-differences with multiple time periods. Journal of Econometrics, 225(2), 200-230. DOI ↗ |
| Alias | ML-DiD, double/debiased ML DiD, DML difference-in-differences, augmented DiD | Dynamic DiD, Staggered DiD, Event-time DiD, Heterogeneous-timing DiD |
| Berkaitan≠ | 6 | 4 |
| Ringkasan≠ | Machine learning-augmented DiD combines the classic difference-in-differences identification strategy with flexible ML estimators for nuisance functions — the propensity score and the outcome regression — to obtain valid causal estimates even when treatment selection and outcome dynamics are complex, high-dimensional, or nonlinear. The approach, rooted in double/debiased machine learning (Chernozhukov et al., 2018) and doubly-robust DiD (Sant'Anna & Zhao, 2020), guards against misspecification bias while preserving the core DiD logic of before-after, treated-versus-control comparisons. | Dynamic Difference-in-Differences extends the classic DiD framework to settings where units adopt treatment at different times. Rather than collapsing all variation into a single 2x2 comparison, it estimates group-time average treatment effects for each adoption cohort at each calendar period, then aggregates them into interpretable summaries of the causal effect over event time. |
| ScholarGateSet data ↗ |
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