Minimizing Live Experiments in Recommender Systems: User Simulation to Evaluate Preference Elicitation Policies
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ID: 283550
2024
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Abstract
Evaluation of policies in recommender systems typically involves A/B testing
using live experiments on real users to assess a new policy's impact on
relevant metrics. This ``gold standard'' comes at a high cost, however, in
terms of cycle time, user cost, and potential user retention. In developing
policies for ``onboarding'' new users, these costs can be especially
problematic, since on-boarding occurs only once. In this work, we describe a
simulation methodology used to augment (and reduce) the use of live
experiments. We illustrate its deployment for the evaluation of ``preference
elicitation'' algorithms used to onboard new users of the YouTube Music
platform. By developing counterfactually robust user behavior models, and a
simulation service that couples such models with production infrastructure, we
are able to test new algorithms in a way that reliably predicts their
performance on key metrics when deployed live. We describe our domain, our
simulation models and platform, results of experiments and deployment, and
suggest future steps needed to further realistic simulation as a powerful
complement to live experiments.
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| Authors | Chih-Wei Hsu; Martin Mladenov; Ofer Meshi; James Pine; Hubert Pham; Shane Li; Xujian Liang; Anton Polishko; Li Yang; Ben Scheetz; Craig Boutilier |
| Journal | arXiv |
| Year | 2024 |
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