Leniency Designs: An Operator's Manual
Abstract
We develop a step-by-step guide to leniency (a.k.a. judge or examiner instrument) designs, drawing on recent econometric literatures. The unbiased jackknife instrumental variables estimator (UJIVE) is purpose-built for leveraging exogenous leniency variation, avoiding subtle biases even in the presence of many decision-makers or controls. We show how UJIVE can also be used to assess key assumptions underlying leniency designs, including quasi-random assignment and average first-stage monotonicity, and to probe the external validity of treatment effect estimates. We further discuss statistical inference, arguing that non-clustered standard errors are often appropriate. A reanalysis of Farre-Mensa et al. (2020), using quasi-random examiner assignment to estimate the value of patents to startups, illustrates our checklist.
Cite
@article{arxiv.2511.03572,
title = {Leniency Designs: An Operator's Manual},
author = {Paul Goldsmith-Pinkham and Peter Hull and Michal Kolesár},
journal= {arXiv preprint arXiv:2511.03572},
year = {2025}
}
Comments
32 pages, including all appendices