A two-stage policy-aware factorial experiment design models outcomes as low-rank tensors, applies tensor completion and sequential halving to identify high-performing policies, and provides regret bounds that scale with tensor degrees of freedom rather than full combinatorial size.
Empowering Patients Using Smart Mobile Health Platforms: Evidence From a Randomized Field Experiment
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Policy-Aware Design of Large-Scale Factorial Experiments
A two-stage policy-aware factorial experiment design models outcomes as low-rank tensors, applies tensor completion and sequential halving to identify high-performing policies, and provides regret bounds that scale with tensor degrees of freedom rather than full combinatorial size.