When machine learning meets big data: A wireless communication perspective
When machine learning meets big data: A wireless communication perspective
We have witnessed an exponential growth in commercial data services, which has lead to the ’big data era’. Machine learning, as one of the most promising artificial intelligence tools of analyzing the deluge of data, has been invoked in many research areas both in academia and industry. The aim of this article is twin-fold. Firstly, we briefly review big data analysis and machine learning, along with their potential applications in next-generation wireless networks. The second goal is to invoke big data analysis to predict the requirements of mobile users and to exploit it for improving the performance of “social network-aware wireless”. More particularly, a unified big data aided machine learning framework is proposed, which consists of feature extraction, data modeling and prediction/online refinement. The main benefits of the proposed framework are that by relying on big data which reflects both the spectral and other challenging requirements of the users, we can refine the motivation, problem formulations and methodology of powerful machine learning algorithms in the context of wireless networks. In order to characterize the efficiency of the proposed framework, a pair of intelligent practical applications are provided as case studies: 1) To predict the positioning of drone-mounted areal base stations (BSs) according to the specific tele-traffic requirements by gleaning valuable data from social networks. 2) To predict the content caching requirements of BSs according to the users’ preferences by mining data from social networks. Finally, open research opportunities are identified for motivating future investigations.
Liu, Yuanwei
edcf36fa-2653-46c0-8e36-e8144010498e
Bi, Suzhi
aa124181-7499-4f61-8b7e-9fbb40e5e363
Shi, Zhiyuan
fd02f8b0-5a94-4839-b4e1-a77e9fd15dc7
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1
Liu, Yuanwei
edcf36fa-2653-46c0-8e36-e8144010498e
Bi, Suzhi
aa124181-7499-4f61-8b7e-9fbb40e5e363
Shi, Zhiyuan
fd02f8b0-5a94-4839-b4e1-a77e9fd15dc7
Hanzo, Lajos
66e7266f-3066-4fc0-8391-e000acce71a1
Liu, Yuanwei, Bi, Suzhi, Shi, Zhiyuan and Hanzo, Lajos
(2019)
When machine learning meets big data: A wireless communication perspective.
IEEE VechicularTechnology Magazine.
(doi:10.1109/MVT.2019.2953857).
Abstract
We have witnessed an exponential growth in commercial data services, which has lead to the ’big data era’. Machine learning, as one of the most promising artificial intelligence tools of analyzing the deluge of data, has been invoked in many research areas both in academia and industry. The aim of this article is twin-fold. Firstly, we briefly review big data analysis and machine learning, along with their potential applications in next-generation wireless networks. The second goal is to invoke big data analysis to predict the requirements of mobile users and to exploit it for improving the performance of “social network-aware wireless”. More particularly, a unified big data aided machine learning framework is proposed, which consists of feature extraction, data modeling and prediction/online refinement. The main benefits of the proposed framework are that by relying on big data which reflects both the spectral and other challenging requirements of the users, we can refine the motivation, problem formulations and methodology of powerful machine learning algorithms in the context of wireless networks. In order to characterize the efficiency of the proposed framework, a pair of intelligent practical applications are provided as case studies: 1) To predict the positioning of drone-mounted areal base stations (BSs) according to the specific tele-traffic requirements by gleaning valuable data from social networks. 2) To predict the content caching requirements of BSs according to the users’ preferences by mining data from social networks. Finally, open research opportunities are identified for motivating future investigations.
Text
Machine_learning_big_data_mag_v8
- Accepted Manuscript
More information
Accepted/In Press date: 11 November 2019
e-pub ahead of print date: 24 December 2019
Identifiers
Local EPrints ID: 435897
URI: http://eprints.soton.ac.uk/id/eprint/435897
PURE UUID: ea368fe1-743e-4bae-832e-a3eb9bf8fb47
Catalogue record
Date deposited: 22 Nov 2019 17:30
Last modified: 18 Mar 2024 05:12
Export record
Altmetrics
Contributors
Author:
Yuanwei Liu
Author:
Suzhi Bi
Author:
Zhiyuan Shi
Author:
Lajos Hanzo
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics