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NeuroBA: Neuro-Symbolic Bitrate Adaptation for IRS-Aided Mobile Video Streaming

  • Miaojiang Chen
  • , Wenjing Xiao*
  • , Anfeng Liu
  • , Ahmed Farouk
  • , Min Chen
  • , Dusit Niyato
  • , Houbing Herbert Song
  • , Victor C.M. Leung
  • *Corresponding author for this work
  • Guangxi University
  • Central South University
  • Hurghada University
  • South China University of Technology
  • Guangdong Artificial Intelligence and Digital Economy Laboratory - Guangzhou
  • Nanyang Technological University
  • University of Maryland, Baltimore County
  • Shenzhen University
  • University of British Columbia

Research output: Contribution to journalArticlepeer-review

Abstract

Intelligent adaptive bitrate (ABR) schemes have been widely recognized for their excellent learning strategies. However, existing intelligent ABR methods have limitations, i.e., the lack of logical reasoning capability for video-aware symbolic representations leads to low sampling efficiency and fails to achieve the optimal performance of Bitrate Adaptation. We introduce NeuroBA, a learning-based approach to realize ABR using neuro-symbolic deep reinforcement learning. NeuroBA trains a neuro-symbolic deep network model without making any assumptions about the edge video scene and without relying on a predefined model. Instead, it enables bitrate decision-making under uncertainty and partial observability by knowledge-driven video quality perception in symbolic first-order logic. To enhance wireless signals, we have introduced Intelligent Reflecting Surface (IRS) technology to address this issue. By dynamically adjusting the phase shift of IRS, the throughput performance of wireless networks is significantly improved. Based on trace-driven and real-world experiments covering a variety of edge video scenarios, and network performance metrics, NeuroBA is compared with state-of-the-art ABR schemes, and NeuroBA exhibits superior performance, with an average QoE improvement of 16.58% (BOLA)-25.34% (Fugu). In particular, it outperforms existing baseline approaches even without pre-programmed models and network scenarios assumed for the edge network.

Original languageEnglish
Pages (from-to)2558-2572
Number of pages15
JournalIEEE/ACM Transactions on Networking
Volume34
DOIs
Publication statusPublished - 2026
Externally publishedYes

Keywords

  • Mobile edge computing
  • edge video streaming
  • neuro-symbolic
  • reinforcement learning

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