Data-driven Online Slice Admission Control and Resource Allocation for 5G and Beyond Networks
Muhammad Sulaiman, Bo Sun, Mohammad Ali Salahuddin, Raouf Boutaba,, Aladdin Saleh

TL;DR
This paper presents a data-driven, real-time slice admission control framework for 5G networks that improves revenue and resource utilization by dynamically estimating resource prices and employing machine learning.
Contribution
It introduces a novel online admission control framework with a guaranteed competitive ratio using machine learning and dynamic pricing in 5G networks.
Findings
Achieves up to 42% improvement in competitive ratio.
Utilizes real 5G testbed data for validation.
Employs a primal-dual algorithm for resource allocation.
Abstract
Virtualization in 5G and beyond networks allows the creation of virtual networks, or network slices, tailored to meet the requirements of various applications. However, this flexibility introduces several challenges for infrastructure providers (InPs) in slice admission control (AC) and resource allocation. To maximize revenue, InPs must decide in real-time whether to admit new slice requests (SRs) given slices' revenues, limited infrastructure resources, unknown relationship between resource allocation and Quality of Service (QoS), and the unpredictability of future SRs. To address these challenges, this paper introduces a novel data-driven framework for 5G slice admission control that offers a guaranteed upper bound on the competitive ratio, i.e., the ratio between the revenue obtained by an oracle solution and that of the online solution. The proposed framework leverages a pricing…
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Taxonomy
TopicsAdvanced Wireless Network Optimization
