Visible to the public Generative Adversarial Learning for Machine Learning empowered Self Organizing 5G Networks

TitleGenerative Adversarial Learning for Machine Learning empowered Self Organizing 5G Networks
Publication TypeConference Paper
Year of Publication2019
AuthorsHughes, Ben, Bothe, Shruti, Farooq, Hasan, Imran, Ali
Conference Name2019 International Conference on Computing, Networking and Communications (ICNC)
Date PublishedFeb. 2019
PublisherIEEE
ISBN Number978-1-5386-9223-3
Keywords5G, 5G mobile communication, call data records, CDRs, Data analysis, Deep Learning, Generative Adversarial Learning, generative adversarial network, generative adversarial networks, interconnected deep artificial neural networks, learning (artificial intelligence), machine learning, Metrics, ML, neural nets, pubcrawl, realistic synthetic data, resilience, Resiliency, Scalability, self organizing 5G networks, Service requirements, SON, SON algorithm, Synthetic Data
Abstract

In the wake of diversity of service requirements and increasing push for extreme efficiency, adaptability propelled by machine learning (ML) a.k.a self organizing networks (SON) is emerging as an inevitable design feature for future mobile 5G networks. The implementation of SON with ML as a foundation requires significant amounts of real labeled sample data for the networks to train on, with high correlation between the amount of sample data and the effectiveness of the SON algorithm. As generally real labeled data is scarce therefore it can become bottleneck for ML empowered SON for unleashing their true potential. In this work, we propose a method of expanding these sample data sets using Generative Adversarial Networks (GANs), which are based on two interconnected deep artificial neural networks. This method is an alternative to taking more data to expand the sample set, preferred in cases where taking more data is not simple, feasible, or efficient. We demonstrate how the method can generate large amounts of realistic synthetic data, utilizing the GAN's ability of generation and discrimination, able to be easily added to the sample set. This method is, as an example, implemented with Call Data Records (CDRs) containing the start hour of a call and the duration of the call, in minutes taken from a real mobile operator. Results show that the method can be used with a relatively small sample set and little information about the statistics of the true CDRs and still make accurate synthetic ones.

URLhttps://ieeexplore.ieee.org/document/8685527/
DOI10.1109/ICCNC.2019.8685527
Citation Keyhughes_generative_2019