From 4G to 5G: Self-organized Network Management meets Machine Learning
Jessica Moysen, Lorenza Giupponi

TL;DR
This paper analyzes how machine learning can enhance self-organized network management for 4G and 5G networks, focusing on end-to-end automation, standardization, and future research challenges.
Contribution
It provides a comprehensive survey of ML applications in network management, emphasizing 3GPP evolution and identifying research challenges for 4G and 5G networks.
Findings
ML significantly benefits network management automation
3GPP data enables proactive network optimization
Key challenges include data quality and standardization
Abstract
In this paper, we provide an analysis of self-organized network management, with an end-to-end perspective of the network. Self-organization as applied to cellular networks is usually referred to Self-organizing Networks (SONs), and it is a key driver for improving Operations, Administration, and Maintenance (OAM) activities. SON aims at reducing the cost of installation and management of 4G and future 5G networks, by simplifying operational tasks through the capability to configure, optimize and heal itself. To satisfy 5G network management requirements, this autonomous management vision has to be extended to the end to end network. In literature and also in some instances of products available in the market, Machine Learning (ML) has been identified as the key tool to implement autonomous adaptability and take advantage of experience when making decisions. In this paper, we survey how…
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