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Estimating Treatment Effects under Recommender Interference: A Structured Neural Networks Approach

17 Mar
2026
10:30 am - 11:45 am
Jouy-en-Josas
English

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2026-03-17T10:30:00 2026-03-17T11:45:00 Estimating Treatment Effects under Recommender Interference: A Structured Neural Networks Approach Information Systems and Operations ManagementSpeaker: Ruohan Zhan  from UCL Room Bernard Ramanantsoa  Jouy-en-Josas

Information Systems and Operations Management

Speaker: Ruohan Zhan  from UCL 

Room Bernard Ramanantsoa

 

Abstract
Recommender systems are essential for content-sharing platforms by curating personalized content. To improve recommender systems, platforms frequently rely on creator-side randomized experiments to evaluate algorithm updates. We show that commonly adopted difference-in-means estimators can lead to severely biased estimates due to recommender interference, where treated and control creators compete for exposure. This bias can result in incorrect business decisions. To address this, we propose a “recommender choice model” that explicitly represents the interference pathway. The approach combines a structural choice framework with neural networks to account for rich viewer-content heterogeneity. Building on this foundation, we develop a debiased estimator using the double machine learning (DML) framework to adjust for errors from nuisance component estimation. We show that the estimator is root-n-consistent and asymptotically normal, and we extend the DML theory to handle correlated data, which arise in our context due to overlapped items. We validate our method with a large-scale field experiment on Weixin short-video platform, using a costly double-sided randomization design to obtain an interference-free ground truth. Our results show that the proposed estimator successfully recovers this ground truth, whereas benchmark estimators exhibit substantial bias, and in some cases, yield reversed signs.


 

Participate

Add to calendar
2026-03-17T10:30:00 2026-03-17T11:45:00 Estimating Treatment Effects under Recommender Interference: A Structured Neural Networks Approach Information Systems and Operations ManagementSpeaker: Ruohan Zhan  from UCL Room Bernard Ramanantsoa  Jouy-en-Josas