didgpu(
df,
outcome, group, time, treatment,
effects = 1L,
placebo = 0L,
switchers = "", # "" / "in" / "out"
same_switchers = FALSE,
same_switchers_pl = FALSE,
normalized = FALSE,
only_never_switchers = FALSE,
dont_drop_larger_lower= FALSE,
trends_lin = FALSE,
trends_nonparam = NULL,
controls = NULL,
weight = NULL,
continuous = NULL,
predict_het = NULL,
bootstrap_reps = 0L,
cluster = NULL,
ci_level = 95,
backend = "auto", # "auto"/"r"/"cpu"/"cuda"/"reference"
checkpoint_dir = NULL,
seed = NULL,
n_workers = NULL,
verbose = TRUE
)4 Dynamic DiD — didgpu()
5 Dynamic difference-in-differences — didgpu()
didgpu() implements the heterogeneity-robust event-study DiD estimator of @dechaisemartin2024dynamic. It is the flagship estimator in this package and bit-for-bit numerically equivalent to the reference R package DIDmultiplegtDYN across every commonly-used option.
5.1 What it estimates
For each event-time \(k \in \{1, 2, \dots, \text{effects}\}\), the per-event-time DID is the average causal effect of being exposed to a strictly higher treatment dose for \(k\) periods relative to a clean, not-yet-switched comparison group within the same baseline-treatment cohort. The estimator pools across “switcher-in” (treatment goes up) and “switcher-out” (treatment goes down) directions via Neyman-weighted averaging.
The published Effects matrix has one row per event-time, with:
Estimate,SE,LB.CI,UB.CI— the point estimate and its inference;N(unweighted observations),Switchers(unweighted switcher cells),N.w(weighted observation mass),Switchers.w(weighted switcher mass) — the four sample-size columns the reference reports.
A parallel Placebos matrix reports pre-treatment falsification effects at horizons \(-1, -2, \dots, -\text{placebo}\).
5.2 Function signature
5.3 Common option recipes
5.3.1 Heterogeneity by group covariate
Full chapter content with worked examples is in progress. The options above each correspond to a section of the reference paper @dechaisemartin2024dynamic; this chapter will expand to a worked example per option. In the meantime, the function documentation (?didgpu) is complete and the package README links every option to the relevant section of the paper.
5.4 See also
- @dechaisemartin2024dynamic — the method paper.
DIDmultiplegtDYN— the reference R implementation didgpu targets bit-for-bit.