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Control Variates for Slate Off-Policy Evaluation

Machine Learning 2021-11-04 v3 Methodology

Abstract

We study the problem of off-policy evaluation from batched contextual bandit data with multidimensional actions, often termed slates. The problem is common to recommender systems and user-interface optimization, and it is particularly challenging because of the combinatorially-sized action space. Swaminathan et al. (2017) have proposed the pseudoinverse (PI) estimator under the assumption that the conditional mean rewards are additive in actions. Using control variates, we consider a large class of unbiased estimators that includes as specific cases the PI estimator and (asymptotically) its self-normalized variant. By optimizing over this class, we obtain new estimators with risk improvement guarantees over both the PI and the self-normalized PI estimators. Experiments with real-world recommender data as well as synthetic data validate these improvements in practice.

Keywords

Cite

@article{arxiv.2106.07914,
  title  = {Control Variates for Slate Off-Policy Evaluation},
  author = {Nikos Vlassis and Ashok Chandrashekar and Fernando Amat Gil and Nathan Kallus},
  journal= {arXiv preprint arXiv:2106.07914},
  year   = {2021}
}
R2 v1 2026-06-24T03:12:29.926Z