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Learning the Pareto Front Using Bootstrapped Observation Samples

Machine Learning 2024-05-24 v2 Machine Learning

Abstract

We consider Pareto front identification (PFI) for linear bandits (PFILin), i.e., the goal is to identify a set of arms with undominated mean reward vectors when the mean reward vector is a linear function of the context. PFILin includes the best arm identification problem and multi-objective active learning as special cases. The sample complexity of our proposed algorithm is optimal up to a logarithmic factor. In addition, the regret incurred by our algorithm during the estimation is within a logarithmic factor of the optimal regret among all algorithms that identify the Pareto front. Our key contribution is a new estimator that in every round updates the estimate for the unknown parameter along multiple context directions -- in contrast to the conventional estimator that only updates the parameter estimate along the chosen context. This allows us to use low-regret arms to collect information about Pareto optimal arms. Our key innovation is to reuse the exploration samples multiple times; in contrast to conventional estimators that use each sample only once. Numerical experiments demonstrate that the proposed algorithm successfully identifies the Pareto front while controlling the regret.

Keywords

Cite

@article{arxiv.2306.00096,
  title  = {Learning the Pareto Front Using Bootstrapped Observation Samples},
  author = {Wonyoung Kim and Garud Iyengar and Assaf Zeevi},
  journal= {arXiv preprint arXiv:2306.00096},
  year   = {2024}
}

Comments

37 pages including appendix

R2 v1 2026-06-28T10:52:30.621Z