Time-uniform central limit theory and asymptotic confidence sequences
This work addresses the need for versatile statistical inference tools in sequential data analysis, offering a novel approach that bridges asymptotic and time-uniform methods, though it builds on existing concepts like confidence sequences and strong invariance principles.
The paper tackles the problem of creating confidence intervals that remain valid over time and at arbitrary stopping times, by introducing asymptotic confidence sequences that provide time-uniform guarantees with broad applicability similar to classical central limit theorem intervals. It demonstrates this by deriving asymptotic confidence sequences for average treatment effects in observational studies and randomized experiments, enabling causal inference in sequential settings.
Confidence intervals based on the central limit theorem (CLT) are a cornerstone of classical statistics. Despite being only asymptotically valid, they are ubiquitous because they permit statistical inference under weak assumptions and can often be applied to problems even when nonasymptotic inference is impossible. This paper introduces time-uniform analogues of such asymptotic confidence intervals, adding to the literature on confidence sequences (CS) -- sequences of confidence intervals that are uniformly valid over time -- which provide valid inference at arbitrary stopping times and incur no penalties for "peeking" at the data, unlike classical confidence intervals which require the sample size to be fixed in advance. Existing CSs in the literature are nonasymptotic, enjoying finite-sample guarantees but not the aforementioned broad applicability of asymptotic confidence intervals. This work provides a definition for "asymptotic CSs" and a general recipe for deriving them. Asymptotic CSs forgo nonasymptotic validity for CLT-like versatility and (asymptotic) time-uniform guarantees. While the CLT approximates the distribution of a sample average by that of a Gaussian for a fixed sample size, we use strong invariance principles (stemming from the seminal 1960s work of Strassen) to uniformly approximate the entire sample average process by an implicit Gaussian process. As an illustration, we derive asymptotic CSs for the average treatment effect in observational studies (for which nonasymptotic bounds are essentially impossible to derive even in the fixed-time regime) as well as randomized experiments, enabling causal inference in sequential environments.