Selective randomization inference for adaptive experiments
Authors
Research Topics
Paper Information
-
Journal:
Journal of the Royal Statistical Society Series B -
DOI:
10.1093/jrsssb/qkag081 -
Published:
June 08, 2026 -
Added to Tracker:
Jun 09, 2026
Abstract
Abstract Adaptive experiments use preliminary analyses of the data to inform further course of action and are commonly used in many disciplines including medical and social sciences. Because the null hypothesis and experimental design are data-dependent, it has long been recognized that statistical inference for adaptive experiments is not straightforward. Most existing methods only apply to specific adaptive designs and rely on strong assumptions. In this work, we propose selective randomization inference as a general framework for analysing adaptive experiments. In a nutshell, our approach applies conditional postselection inference to randomization tests. By using directed acyclic graphs to describe the data generating process, we derive a selective randomization p-value that controls the selective type-I error. As inference only relies on the randomness in the treatment assignment, no modelling assumptions or independent and identically distributed data are needed. We elaborate on conditions that render the proposed p-value computable and provide rejection sampling and MCMC algorithms to find a Monte Carlo approximation. Moreover, this article shows how to estimate and construct confidence intervals for a homogeneous treatment effect. Lastly, we demonstrate our method and compare it with other randomization tests using synthetic and real-world data.
Author Details
Qingyuan Zhao
AuthorTobias Freidling
AuthorZijun Gao
AuthorResearch Topics & Keywords
Experimental Design
Research AreaCitation Information
APA Format
Qingyuan Zhao
,
Tobias Freidling
&
Zijun Gao
(2026)
.
Selective randomization inference for adaptive experiments.
Journal of the Royal Statistical Society Series B
, 10.1093/jrsssb/qkag081.
BibTeX Format
@article{paper1214,
title = { Selective randomization inference for adaptive experiments },
author = {
Qingyuan Zhao
and Tobias Freidling
and Zijun Gao
},
journal = { Journal of the Royal Statistical Society Series B },
year = { 2026 },
doi = { 10.1093/jrsssb/qkag081 },
url = { https://doi.org/10.1093/jrsssb/qkag081 }
}