citsr - Controlled Interrupted Time Series Analysis and Visualization
Implements controlled interrupted time series (CITS)
analysis for evaluating interventions in comparative
time-series data. The package provides tools for preparing
panel time-series datasets, fitting models using generalized
least squares (GLS) with optional autoregressive–moving-average
(ARMA) error structures, and computing fitted values and robust
standard errors using cluster-robust variance estimators (CR2).
Visualization functions enable clear presentation of estimated
effects and counterfactual trajectories following
interventions. Background on methods for causal inference in
interrupted time series can be found in Linden and Adams (2011)
<doi:10.1111/j.1365-2753.2010.01504.x> and Lopez Bernal,
Cummins, and Gasparrini (2018) <doi:10.1093/ije/dyy135>.