Beyond $log^2(T)$ Regret for Decentralized Bandits in Matching Markets
Abstract
We design decentralized algorithms for regret minimization in the two sided matching market with one-sided bandit feedback that significantly improves upon the prior works (Liu et al.\,2020a, Sankararaman et al.\,2020, Liu et al.\,2020b). First, for general markets, for any $\varepsilon > 0$, we design an algorithm that achieves a $O(\log^{1+\varepsilon}(T))$ regret to the agent-optimal stable matching, with unknown time horizon $T$, improving upon the $O(\log^{2}(T))$ regret achieved in (Liu et al.\,2020b). Second, we provide the optimal $\Theta(\log(T))$ agent-optimal regret for markets satisfying {\em uniqueness consistency} – markets where leaving participants don’t alter the original stable matching. Previously, $\Theta(\log(T))$ regret was achievable (Sankararaman et al.\,2020, Liu et al.\,2020b) in the much restricted {\em serial dictatorship} setting, when all arms have the same preference over the agents. We propose a phase based algorithm, where in each phase, besides deleting the globally communicated dominated arms the agents locally delete arms with which they collide often. This \emph{local deletion} is pivotal in breaking deadlocks arising from rank heterogeneity of agents across arms. We further demonstrate superiority of our algorithm over existing works through simulations.
Cite
Text
Basu et al. "Beyond $log^2(T)$ Regret for Decentralized Bandits in Matching Markets." International Conference on Machine Learning, 2021.Markdown
[Basu et al. "Beyond $log^2(T)$ Regret for Decentralized Bandits in Matching Markets." International Conference on Machine Learning, 2021.](https://mlanthology.org/icml/2021/basu2021icml-beyond/)BibTeX
@inproceedings{basu2021icml-beyond,
title = {{Beyond $log^2(T)$ Regret for Decentralized Bandits in Matching Markets}},
author = {Basu, Soumya and Sankararaman, Karthik Abinav and Sankararaman, Abishek},
booktitle = {International Conference on Machine Learning},
year = {2021},
pages = {705-715},
volume = {139},
url = {https://mlanthology.org/icml/2021/basu2021icml-beyond/}
}