Collaborative Linear Bandits with Adversarial Agents: Near-Optimal Regret Bounds

Abstract

We consider a linear stochastic bandit problem involving $M$ agents that can collaborate via a central server to minimize regret. A fraction $\alpha$ of these agents are adversarial and can act arbitrarily, leading to the following tension: while collaboration can potentially reduce regret, it can also disrupt the process of learning due to adversaries. In this work, we provide a fundamental understanding of this tension by designing new algorithms that balance the exploration-exploitation trade-off via carefully constructed robust confidence intervals. We also complement our algorithms with tight analyses. First, we develop a robust collaborative phased elimination algorithm that achieves $\tilde{O}\left(\alpha+ 1/\sqrt{M}\right) \sqrt{dT}$ regret for each good agent; here, $d$ is the model-dimension and $T$ is the horizon. For small $\alpha$, our result thus reveals a clear benefit of collaboration despite adversaries. Using an information-theoretic argument, we then prove a matching lower bound, thereby providing the first set of tight, near-optimal regret bounds for collaborative linear bandits with adversaries. Furthermore, by leveraging recent advances in high-dimensional robust statistics, we significantly extend our algorithmic ideas and results to (i) the generalized linear bandit model that allows for non-linear observation maps; and (ii) the contextual bandit setting that allows for time-varying feature vectors.

Cite

Text

Mitra et al. "Collaborative Linear Bandits with Adversarial Agents: Near-Optimal Regret Bounds." Neural Information Processing Systems, 2022.

Markdown

[Mitra et al. "Collaborative Linear Bandits with Adversarial Agents: Near-Optimal Regret Bounds." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/mitra2022neurips-collaborative/)

BibTeX

@inproceedings{mitra2022neurips-collaborative,
  title     = {{Collaborative Linear Bandits with Adversarial Agents: Near-Optimal Regret Bounds}},
  author    = {Mitra, Aritra and Adibi, Arman and Pappas, George J. and Hassani, Hamed},
  booktitle = {Neural Information Processing Systems},
  year      = {2022},
  url       = {https://mlanthology.org/neurips/2022/mitra2022neurips-collaborative/}
}