The inclusion of counterfactuals often resulted in a substantial increase in precision, indicating that the models were better able to correctly classify relevant instances while reducing false positives. This improvement suggests that the counterfactuals provided essential information that helped refine the models' decision boundaries.
statements that draw general conclusions about humans, computers, and/or human-computer interaction based on the results of the specific experiment done in the paper.