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Locally Differentially Private (Contextual) Bandits Learning

Machine Learning 2021-01-18 v4 Machine Learning

Abstract

We study locally differentially private (LDP) bandits learning in this paper. First, we propose simple black-box reduction frameworks that can solve a large family of context-free bandits learning problems with LDP guarantee. Based on our frameworks, we can improve previous best results for private bandits learning with one-point feedback, such as private Bandits Convex Optimization, and obtain the first result for Bandits Convex Optimization (BCO) with multi-point feedback under LDP. LDP guarantee and black-box nature make our frameworks more attractive in real applications compared with previous specifically designed and relatively weaker differentially private (DP) context-free bandits algorithms. Further, we extend our (ε,δ)(\varepsilon, \delta)-LDP algorithm to Generalized Linear Bandits, which enjoys a sub-linear regret O~(T3/4/ε)\tilde{O}(T^{3/4}/\varepsilon) and is conjectured to be nearly optimal. Note that given the existing Ω(T)\Omega(T) lower bound for DP contextual linear bandits (Shariff & Sheffe, 2018), our result shows a fundamental difference between LDP and DP contextual bandits learning.

Keywords

Cite

@article{arxiv.2006.00701,
  title  = {Locally Differentially Private (Contextual) Bandits Learning},
  author = {Kai Zheng and Tianle Cai and Weiran Huang and Zhenguo Li and Liwei Wang},
  journal= {arXiv preprint arXiv:2006.00701},
  year   = {2021}
}

Comments

Accepted by NeurIPS 2020

R2 v1 2026-06-23T15:57:04.094Z