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Fast and Scalable Network Slicing by Integrating Deep Learning with Lagrangian Methods (2401.11731v1)

Published 22 Jan 2024 in cs.NI, cs.AI, and cs.LG

Abstract: Network slicing is a key technique in 5G and beyond for efficiently supporting diverse services. Many network slicing solutions rely on deep learning to manage complex and high-dimensional resource allocation problems. However, deep learning models suffer limited generalization and adaptability to dynamic slicing configurations. In this paper, we propose a novel framework that integrates constrained optimization methods and deep learning models, resulting in strong generalization and superior approximation capability. Based on the proposed framework, we design a new neural-assisted algorithm to allocate radio resources to slices to maximize the network utility under inter-slice resource constraints. The algorithm exhibits high scalability, accommodating varying numbers of slices and slice configurations with ease. We implement the proposed solution in a system-level network simulator and evaluate its performance extensively by comparing it to state-of-the-art solutions including deep reinforcement learning approaches. The numerical results show that our solution obtains near-optimal quality-of-service satisfaction and promising generalization performance under different network slicing scenarios.

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References (10)
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Authors (5)
  1. Tianlun Hu (6 papers)
  2. Qi Liao (29 papers)
  3. Qiang Liu (405 papers)
  4. Antonio Massaro (2 papers)
  5. Georg Carle (71 papers)

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