AI RESEARCH
Choosing Online Experiment Designs under Interference in Ads, Recommendations, and Member-Experience Systems
arXiv CS.LG
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ArXi:2605.25290v1 Announce Type: cross Online experiments in ads, recommendation, and member-experience systems are often planned before the dominant interference mechanism is known. A treatment may propagate through budgets, inventory, producer exposure, graph spillovers, or temporal carryover, making the randomization design itself a statistical decision. We formulate this problem as robust design selection over uncertain exposure mechanisms. Given a finite catalog of six implementable designs, the selector compares each design by worst-case planning risk over an ambiguity set.