Randomization Tests in Switchback Experiments
Jizhou Liu, Liang Zhong

TL;DR
This paper introduces a finite-sample valid, distribution-free randomization-test framework for switchback experiments, addressing challenges like serial dependence, seasonality, and heavy tails, without relying on parametric outcome models.
Contribution
It develops a novel conditional randomization test approach that ensures valid p-values in complex time-dependent settings, with diagnostics and power analysis tools.
Findings
Provides finite-sample valid p-values for null hypotheses
Demonstrates favorable size and power in simulations
Offers diagnostics for carryover and non-anticipation
Abstract
Switchback experiments--alternating treatment and control over time--are widely used when unit-level randomization is infeasible, outcomes are aggregated, or user interference is unavoidable. In practice, experimentation must support fast product cycles, so teams often run studies for limited durations and make decisions with modest samples. At the same time, outcomes in these time-indexed settings exhibit serial dependence, seasonality, and occasional heavy-tailed shocks, and temporal interference (carryover or anticipation) can render standard asymptotics and naive randomization tests unreliable. In this paper, we develop a randomization-test framework that delivers finite-sample valid, distribution-free p-values for several null hypotheses of interest using only the known assignment mechanism, without parametric assumptions on the outcome process. For causal effects of interests, we…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Advanced Causal Inference Techniques · Optimal Experimental Design Methods
