Affiliation:
1. Empirical Education Inc., San Mateo, CA, USA
Abstract
By design, randomized experiments (XPs) rule out bias from confounded selection of participants into conditions. Quasi-experiments (QEs) are often considered second-best because they do not share this benefit. However, when results from XPs are used to generalize causal impacts, the benefit from unconfounded selection into conditions may be offset by confounded selection into locations. This work shows that this tradeoff can lead to situations where estimates from QEs are less-biased from selection than are estimates from uncompromised XPs when drawing causal generalizations. This work establishes the conditions theoretically, demonstrates the idea empirically, and discusses the implications of the results.