Score contribution per author:
α: calibrated so average coauthorship-adjusted count equals average raw count
This paper introduces the difference‐in‐difference causal forest (DiDCF) method, which extends the causal‐forest technique for estimating heterogeneous treatment effects to settings with dynamic treatment effects. Regular causal forests require independence between treatment assignment and the outcome variable (after conditioning out observables). In contrast, DiDCFs provide consistent estimates with a parallel trend assumption. DiDCFs can be used to create event‐study plots. The method is applied to estimate payroll tax incidence on wages. We find that heterogeneity in incidence is explained by firm‐ and workforce‐level variables. Firms with a large and heterogeneous workforce are most effective in passing on the incidence of the payroll tax to workers.