Queueing Matching Bandits with Preference Feedback
In this study, we consider multi-class multi-server asymmetric queueing systems consisting of $N$ queues on one side and $K$ servers on the other side, where jobs randomly arrive in queues at each time. The service rate of each job-server assignment is unknown and modeled by a feature-based Multi-no...
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Zusammenfassung: | In this study, we consider multi-class multi-server asymmetric queueing
systems consisting of $N$ queues on one side and $K$ servers on the other side,
where jobs randomly arrive in queues at each time. The service rate of each
job-server assignment is unknown and modeled by a feature-based Multi-nomial
Logit (MNL) function. At each time, a scheduler assigns jobs to servers, and
each server stochastically serves at most one job based on its preferences over
the assigned jobs. The primary goal of the algorithm is to stabilize the queues
in the system while learning the service rates of servers. To achieve this
goal, we propose algorithms based on UCB and Thompson Sampling, which achieve
system stability with an average queue length bound of
$O(\min\{N,K\}/\epsilon)$ for a large time horizon $T$, where $\epsilon$ is a
traffic slackness of the system. Furthermore, the algorithms achieve sublinear
regret bounds of $\tilde{O}(\min\{\sqrt{T} Q_{\max},T^{3/4}\})$, where
$Q_{\max}$ represents the maximum queue length over agents and times. Lastly,
we provide experimental results to demonstrate the performance of our
algorithms. |
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DOI: | 10.48550/arxiv.2410.10098 |