Estimating Total Effects in Bipartite Experiments with Spillovers and Partial Eligibility
- URL: http://arxiv.org/abs/2511.11564v1
- Date: Fri, 14 Nov 2025 18:55:51 GMT
- Title: Estimating Total Effects in Bipartite Experiments with Spillovers and Partial Eligibility
- Authors: Albert Tan, Mohsen Bayati, James Nordlund, Roman Istomin,
- Abstract summary: We study randomized experiments in bipartite systems where only a subset of treatment-side units are eligible for assignment while all units continue to interact.<n>We formalize eligibility-constrained bipartite experiments and define estimands aligned with full deployment.<n>We develop interference-aware ensemble estimators that combine exposure mappings, generalized propensity scores, and flexible machine learning.
- Score: 5.914780964919124
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study randomized experiments in bipartite systems where only a subset of treatment-side units are eligible for assignment while all units continue to interact, generating interference. We formalize eligibility-constrained bipartite experiments and define estimands aligned with full deployment: the Primary Total Treatment Effect (PTTE) on eligible units and the Secondary Total Treatment Effect (STTE) on ineligible units. Under randomization within the eligible set, we give identification conditions and develop interference-aware ensemble estimators that combine exposure mappings, generalized propensity scores, and flexible machine learning. We further introduce a projection that links treatment- and outcome-level estimands; this mapping is exact under a Linear Additive Edges condition and enables estimation on the (typically much smaller) treatment side with deterministic aggregation to outcomes. In simulations with known ground truth across realistic exposure regimes, the proposed estimators recover PTTE and STTE with low bias and variance and reduce the bias that could arise when interference is ignored. Two field experiments illustrate practical relevance: our method corrects the direction of expected interference bias for a pre-specified metric in both studies and reverses the sign and significance of the primary decision metric in one case.
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