LGNISPDec 16, 2023

Fractional Deep Reinforcement Learning for Age-Minimal Mobile Edge Computing

arXiv:2312.10418v210 citationsh-index: 5AAAI
Originality Highly original
AI Analysis

This addresses timeliness issues for real-time applications like autonomous driving in mobile edge computing, representing an incremental improvement with a novel method for a known bottleneck.

The paper tackled the problem of minimizing Age-of-Information (AoI) in mobile edge computing by jointly optimizing task updating and offloading policies, achieving a reduction in average AoI by up to 57.6% compared to benchmarks.

Mobile edge computing (MEC) is a promising paradigm for real-time applications with intensive computational needs (e.g., autonomous driving), as it can reduce the processing delay. In this work, we focus on the timeliness of computational-intensive updates, measured by Age-ofInformation (AoI), and study how to jointly optimize the task updating and offloading policies for AoI with fractional form. Specifically, we consider edge load dynamics and formulate a task scheduling problem to minimize the expected time-average AoI. The uncertain edge load dynamics, the nature of the fractional objective, and hybrid continuous-discrete action space (due to the joint optimization) make this problem challenging and existing approaches not directly applicable. To this end, we propose a fractional reinforcement learning(RL) framework and prove its convergence. We further design a model-free fractional deep RL (DRL) algorithm, where each device makes scheduling decisions with the hybrid action space without knowing the system dynamics and decisions of other devices. Experimental results show that our proposed algorithms reduce the average AoI by up to 57.6% compared with several non-fractional benchmarks.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes