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Cited 158 time in webofscience Cited 196 time in scopus
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Big Data Driven Mobile Traffic Understanding and Forecasting: A Time Series Approach

Authors
Xu, FengliLin, YuyunHuang, JiaxinWu, DiShi, HongzhiSong, JeungeunLi, Yong
Issue Date
Sep-2016
Publisher
IEEE COMPUTER SOC
Keywords
Mobile big data; mobile traffic; time series analysis; traffic forecasting
Citation
IEEE TRANSACTIONS ON SERVICES COMPUTING, v.9, no.5, pp 796 - 805
Pages
10
Journal Title
IEEE TRANSACTIONS ON SERVICES COMPUTING
Volume
9
Number
5
Start Page
796
End Page
805
URI
https://scholarworks.sookmyung.ac.kr/handle/2020.sw.sookmyung/9454
DOI
10.1109/TSC.2016.2599878
ISSN
1939-1374
Abstract
Understanding and forecasting mobile traffic of large scale cellular networks is extremely valuable for service providers to control and manage the explosive mobile data, such as network planning, load balancing, and data pricing mechanisms. This paper targets at extracting and modeling traffic patterns of 9,000 cellular towers deployed in a metropolitan city. To achieve this goal, we design, implement, and evaluate a time series analysis approach that is able to decompose large scale mobile traffic into regularity and randomness components. Then, we use time series prediction to forecast the traffic patterns based on the regularity components. Our study verifies the effectiveness of our utilized time series decomposition method, and shows the geographical distribution of the regularity and randomness component. Moreover, we reveal that high predictability of the regularity component can be achieved, and demonstrate that the prediction of randomness component of mobile traffic data is impossible.
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