
Yusuke Narita
Assistant Professor @ Yale
off-policy evaluation
causality
recommender systems
reinforcement learning theory
online learning & bandits
business/marketing/advertising/e-commerce
counterfactual learning
2
presentations
SHORT BIO
Yusuke Narita is an Assistant Professor at Yale University. His research centers around the design of decision-making algorithms in policy and business, with a particular interest in education policy. His work uses a variety of methods such as causal inference, machine learning, economic theory, and structural econometric modeling. His work has been published in journals including Econometrica, AAAI (Association for the Advancement of Artificial Intelligence), American Economic Review, Journal of Economic Theory, Management Science, NeurIPS (Neural Information Processing Systems), and PNAS. He obtained a Ph.D. from MIT and was formally a visiting assistant professor at Stanford University.
Presentations

Counterfactual Learning with General Data-generating Policies
Kyohei Okumura and 3 other authors

Policy-Adaptive Estimator Selection for Off-Policy Evaluation
Takuma Udagawa and 4 other authors