A cross-border community for researchers with openness, equality and inclusion
Bandwidth Estimation with Conservative Q-Learning
ID:109 View protection:Participant Only Updated time:2024-10-15 23:21:03 Views:527 Virtual Presentation

Start Time:2024-10-26 09:00

Duration:15min

Session:[RS1] Regular Session 1 [RS1-2] Dedicated Technologies for Wireless Networks

Abstract
This research attempts to tackle the prevailing challenges in bandwidth estimation (BWE) for real-time communication systems, with a special emphasis on applying offline reinforcement learning to craft a more accurate neural network for bandwidth estimation than those built using traditional heuristics. The cultivated model, "CQLBWE", represents a data-driven approach to BWE, operating offline. The model exploits heuristic-based techniques of the past to formulate a proficient BWE policy. Furthermore, the successful usage of CQLBWE underscores the practicability of deploying offline reinforcement learning algorithms in the field of bandwidth estimation.
Keywords
reinforcement learning,bandwidth estimation,network
Speaker
Caroline Chen
None

Post comments
Verification Code Change Another
All comments
Important Dates
  • Conference date

    10-24

    2024

    -

    10-27

    2024

  • 10-14 2024

    Draft paper submission deadline

  • 10-29 2024

    Registration deadline

  • 10-31 2024

    Presentation submission deadline

Sponsored By

United Societies of Science
King Mongkut's University of Technology North Bangkok (KMUTNB)
IEEE Thailand Section
IEEE Thailand Section C Chapter

Contact info