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Probabilistic Factorial Experimental Design for Combinatorial Interventions

Main:9 Pages
6 Figures
Bibliography:2 Pages
Appendix:8 Pages
Abstract

A combinatorial intervention, consisting of multiple treatments applied to a single unit with potentially interactive effects, has substantial applications in fields such as biomedicine, engineering, and beyond. Given pp possible treatments, conducting all possible 2p2^p combinatorial interventions can be laborious and quickly becomes infeasible as pp increases. Here we introduce probabilistic factorial experimental design, formalized from how scientists perform lab experiments. In this framework, the experimenter selects a dosage for each possible treatment and applies it to a group of units. Each unit independently receives a random combination of treatments, sampled from a product Bernoulli distribution determined by the dosages. Additionally, the experimenter can carry out such experiments over multiple rounds, adapting the design in an active manner. We address the optimal experimental design problem within an intervention model that imposes bounded-degree interactions between treatments. In the passive setting, we provide a closed-form solution for the near-optimal design. Our results prove that a dosage of 12\tfrac{1}{2} for each treatment is optimal up to a factor of 1+O(ln(n)n)1+O(\tfrac{\ln(n)}{n}) for estimating any kk-way interaction model, regardless of kk, and imply that O(kp3kln(p))O\big(kp^{3k}\ln(p)\big) observations are required to accurately estimate this model. For the multi-round setting, we provide a near-optimal acquisition function that can be numerically optimized. We also explore several extensions of the design problem and finally validate our findings through simulations.

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