Quantifying the Cost of Learning in Queueing Systems

08/15/2023
by   Daniel Freund, et al.
0

Queueing systems are widely applicable stochastic models with use cases in communication networks, healthcare, service systems, etc. Although their optimal control has been extensively studied, most existing approaches assume perfect knowledge of system parameters. Of course, this assumption rarely holds in practice where there is parameter uncertainty, thus motivating a recent line of work on bandit learning for queueing systems. This nascent stream of research focuses on the asymptotic performance of the proposed algorithms. In this paper, we argue that an asymptotic metric, which focuses on late-stage performance, is insufficient to capture the intrinsic statistical complexity of learning in queueing systems which typically occurs in the early stage. Instead, we propose the Cost of Learning in Queueing (CLQ), a new metric that quantifies the maximum increase in time-averaged queue length caused by parameter uncertainty. We characterize the CLQ of a single-queue multi-server system, and then extend these results to multi-queue multi-server systems and networks of queues. In establishing our results, we propose a unified analysis framework for CLQ that bridges Lyapunov and bandit analysis, which could be of independent interest.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/08/2021

Job Dispatching Policies for Queueing Systems with Unknown Service Rates

In multi-server queueing systems where there is no central queue holding...
research
03/03/2023

Queue Scheduling with Adversarial Bandit Learning

In this paper, we study scheduling of a queueing system with zero knowle...
research
02/14/2020

Upper and Lower Class Functions for Maximum Likelihood Estimator for Single server Queues

Upper and lower class functions for the maximum likelihood estimator of ...
research
09/15/2023

Extreme values for the waiting time in large fork-join queues

We prove that the scaled maximum steady-state waiting time and the scale...
research
07/19/2014

Context Aware Dynamic Traffic Signal Optimization

Conventional urban traffic control systems have been based on historical...
research
05/30/2019

On Multiple-Access Systems with Queue-Length Dependent Service Quality

It is commonly observed that higher workload lowers job performance. We ...
research
08/01/2020

Joint Switch-Controller Association and Control Devolution for SDN Systems: An Integration of Online Control and Online Learning

In software-defined networking (SDN) systems, it is a common practice to...

Please sign up or login with your details

Forgot password? Click here to reset