Score: 2

Can we have it all? Non-asymptotically valid and asymptotically exact confidence intervals for expectations and linear regressions

Published: July 22, 2025 | arXiv ID: 2507.16776v2

By: Alexis Derumigny, Lucas Girard, Yannick Guyonvarch

Potential Business Impact:

Makes math tools more trustworthy for small data.

Business Areas:
A/B Testing Data and Analytics

We contribute to bridging the gap between large- and finite-sample inference by studying confidence sets (CSs) that are both non-asymptotically valid and asymptotically exact uniformly (NAVAE) over semi-parametric statistical models. NAVAE CSs are not easily obtained; for instance, we show they do not exist over the set of Bernoulli distributions. We first derive a generic sufficient condition: NAVAE CSs are available as soon as uniform asymptotically exact CSs are. Second, building on that connection, we construct closed-form NAVAE confidence intervals (CIs) in two standard settings -- scalar expectations and linear combinations of OLS coefficients -- under moment conditions only. For expectations, our sole requirement is a bounded kurtosis. In the OLS case, our moment constraints accommodate heteroskedasticity and weak exogeneity of the regressors. Under those conditions, we enlarge the Central Limit Theorem-based CIs, which are asymptotically exact, to ensure non-asymptotic guarantees. Those modifications vanish asymptotically so that our CIs coincide with the classical ones in the limit. We illustrate the potential and limitations of our approach through a simulation study.

Country of Origin
🇳🇱 🇫🇷 France, Netherlands


Page Count
69 pages

Category
Mathematics:
Statistics Theory