Minimizing Queue Length Regret for Arbitrarily Varying Channels
G Krishnakumar, Abhishek Sinha

TL;DR
This paper introduces a novel online scheduling algorithm for arbitrarily varying wireless channels that minimizes queue length regret without stability assumptions, using a weakly adaptive adversarial MAB approach.
Contribution
It develops a weakly adaptive MAB algorithm that bounds queue length regret in non-stationary, potentially unstable queueing environments, extending prior work to more general settings.
Findings
Achieves $ ilde{O}( ext{sqrt}(N) T^{3/4})$ regret bound.
Provides a queue length regret bound that holds even for unstable queues.
Introduces a weakly adaptive adversarial MAB policy with high-probability guarantees.
Abstract
We consider an online channel scheduling problem for a single transmitter-receiver pair equipped with arbitrarily varying wireless channels. The transmission rates of the channels might be non-stationary and could be controlled by an oblivious adversary. At every slot, incoming data arrives at an infinite-capacity data queue located at the transmitter. A scheduler, which is oblivious to the current channel rates, selects one of the channels for transmission. At the end of the slot, the scheduler only gets to know the transmission rate of the selected channel. The objective is to minimize the queue length regret, defined as the difference between the queue length at some time achieved by an online policy and the queue length obtained by always transmitting over the single best channel in hindsight. We propose a weakly adaptive Multi-Armed Bandit (MAB) algorithm for minimizing…
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Taxonomy
TopicsAdvanced Queuing Theory Analysis · Network Time Synchronization Technologies · Advanced Wireless Network Optimization
