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Learning-based Optimal Admission Control in a Single Server Queuing System

21 December 2022
A. Cohen
V. Subramanian
Yili Zhang
ArXiv (abs)PDFHTML
Abstract

We consider a long-term average profit maximizing admission control problem in an M/M/1 queuing system with a known arrival rate but an unknown service rate. With a fixed reward collected upon service completion and a cost per unit of time enforced on customers waiting in the queue, a dispatcher decides upon arrivals whether to admit the arriving customer or not based on the full history of observations of the queue-length of the system. \cite[Econometrica]{Naor} showed that if all the parameters of the model are known, then it is optimal to use a static threshold policy - admit if the queue-length is less than a predetermined threshold and otherwise not. We propose a learning-based dispatching algorithm and characterize its regret with respect to optimal dispatch policies for the full information model of \cite{Naor}. We show that the algorithm achieves an O(1)O(1)O(1) regret when all optimal thresholds with full information are non-zero, and achieves an O(ln⁡3+ϵ(N))O(\ln^{3+\epsilon}(N))O(ln3+ϵ(N)) regret in the case that an optimal threshold with full information is 000 (i.e., an optimal policy is to reject all arrivals), where NNN is the number of arrivals and ϵ>0\epsilon>0ϵ>0.

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