Computation Offloading in Heterogeneous Vehicular Edge Networks: On-line and Off-policy Bandit Solutions
Arash Bozorgchenani, Setareh Maghsudi, Daniele Tarchi, Ekram Hossain

TL;DR
This paper introduces online and off-policy bandit algorithms for computation offloading in heterogeneous vehicular edge networks, effectively reducing latency and task loss amid dynamic traffic and mobility conditions.
Contribution
It develops novel bandit-based algorithms for network and base station selection in vehicular edge computing, addressing non-stationary environments and mobility challenges.
Findings
Algorithms adapt to traffic changes effectively.
Significant latency reduction demonstrated.
Joint base station and relaying strategies minimize task loss.
Abstract
With the rapid advancement of Intelligent Transportation Systems (ITS) and vehicular communications, Vehicular Edge Computing (VEC) is emerging as a promising technology to support low-latency ITS applications and services. In this paper, we consider the computation offloading problem from mobile vehicles/users in a heterogeneous VEC scenario, and focus on the network- and base station selection problems, where different networks have different traffic loads. In a fast-varying vehicular environment, computation offloading experience of users is strongly affected by the latency due to the congestion at the edge computing servers co-located with the base stations. However, as a result of the non-stationary property of such an environment and also information shortage, predicting this congestion is an involved task. To address this challenge, we propose an on-line learning algorithm and an…
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