Counterfactual Evaluation of Ads Ranking Models through Domain Adaptation
Mohamed A. Radwan
Himaghna Bhattacharjee
Quinn Lanners
Jiasheng Zhang
Serkan Karakulak
Houssam Nassif
Murat Ali Bayir

Abstract
We propose a domain-adapted reward model that works alongside an Offline A/B testing system for evaluating ranking models. This approach effectively measures reward for ranking model changes in large-scale Ads recommender systems, where model-free methods like IPS are not feasible. Our experiments demonstrate that the proposed technique outperforms both the vanilla IPS method and approaches using non-generalized reward models.
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