Title :
Mining and modelling the dynamic patterns of service providers in cellular data network based on big data analysis
Author :
Liu Jun ; Li Tingting ; Cheng Gang ; Yu Hua ; Lei Zhenming
Author_Institution :
Beijing Key Lab. of Network Syst. Archit. & Convergence, Beijing Univ. of Posts & Telecommun., Beijing, China
Abstract :
Understanding the dynamic traffic and usage characteristics of data services in cellular networks is important for optimising network resources and improving user experience. Recent studies have illustrated traffic characteristics from specific perspectives, such as user behaviour, device type, and applications. In this paper, we present the results of our study from a different perspective, namely service providers, to reveal the traffic characteristics of cellular data networks. Our study is based on traffic data collected over a five-day period from a leading mobile operator´s core network in China. We propose a Zipf-like model to characterise the distributions of the traffic volume, subscribers, and requests among service providers. Nine distinct diurnal traffic patterns of service providers are identified by formulating and solving a time series clustering problem. Our work differs from previous related works in that we perform measurements on a large quantity of data covering 2.2 billion traffic records, and we first explore the traffic patterns of thousands of service providers. Results of our study present mobile Internet participants with a better understanding of the traffic and usage characteristics of service providers, which play a critical role in the mobile Internet era.
Keywords :
Big Data; Internet; cellular radio; data analysis; data mining; pattern clustering; telecommunication traffic; time series; China; Zipf-like model; big data analysis; cellular data network; data services dynamic traffic; data services usage characteristics; mobile Internet participants; service provider dynamic pattern mining; service provider dynamic pattern modelling; time 5 day; time series clustering problem; Analytical models; Cellular networks; Communication systems; Competitive intelligence; Data mining; Data models; Information technology; Internet; Mobile communication; Mobile computing; Time series analysis; Traffic control; MapReduce; mobile Internet; service provider; time series clustering; traffic measurement;
Journal_Title :
Communications, China
DOI :
10.1109/CC.2013.6723876