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Bandwidth Estimation with Conservative Q-Learning

ID: 109 View Protection: Participants Only Updated time: 2024-10-15 23:21:03 Views: 437
Time: 01 Jan 1970, 08:00
Session: [RS1] Regular Session 1 » [RS1-2] Dedicated Technologies for Wireless Networks
Type: Virtual Presentation
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:

Chen Caroline

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