Exploring Off Policy Evaluation And Learning For Matching Markets
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- https://www.nber.org/conferences/si-2016-methods-lectures-
- RecSys 2021 Debiased
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- RecSys 2021 Evaluating the Robustness of
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The speaker studies Data Fest Online 2020 Reinforcement by Tatsuhiro Shimizu (Independent Researcher) and Koichi Tanaka (Keio Univercity), Ren Kishimoto (Tokyo Institute of ... For slides and more information on the paper, visit https://aisc.ai.science/events/2019-11-18 Discussion lead: Susan Shu Chang.
Topics covered: A/B testing vs offline
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