Preview

Voprosy statistiki

Advanced search

New Digital Source of Statistical Information about Population

Abstract

The article presents the authors’ views on using «Big Data» to gain new information on population and to study various social and economic phenomena and processes on its basis. As the foreign  experience clearly demonstrates, with the development of  information industry and the ubiquitous mobile communications  penetration, one of the most promising sources of «Big Data» in  terms of population coverage (using population as an object of  statistical observation) and efficiency in obtaining information on it,  is data from mobile operators. The paper also notes Russian  experience in this field, especially since 2014, when Russia managed to implement the «Geoanalysis» project on using data from mobile  operators in managerial activities of the Moscow Government. The  authors outline the history and development of the new digital data  source for population statistics, which is based on technical data of cellular networks. The paper covers baselines to Russian innovation methodological developments and algorithms for converting radio frequency events from base stations of mobile operators into  statistical indicators of number, density and dynamics of population  movements with full coverage of study area and high level of space- time specification. This article pays particular attention to issues  concerning protection of subscribers’ personal data, legality of collecting and processing the information received from mobile operators in accordance with the legislation of the Russian  Federation. The authors thoroughly examined directions for applying  statistical indicators, based on data from mobile operators, in the  field of economy, trade, culture, transport modeling, urban planning and management.

About the Authors

Maria V. Polunina
InfoNet Mobil LLC
Russian Federation

Head of the Analytics Department, InfoNet Mobil LLC

17/2, Neglinnaya st., Moscow, Russia, 127051



Elena A. Elnikova
InfoNet Mobil LLC
Russian Federation

Chief Operating Officer, InfoNet Mobil LLC

17/2, Neglinnaya st., Moscow, Russia, 127051



Sergey T. Avetisyan
InfoNet Mobil LLC
Russian Federation

Chief Executive Officer, InfoNet Mobil LLC

17/2, Neglinnaya st., Moscow, Russia, 127051



References

1. Calabrese F., Colonna M., Lovisolo P., Parata D., Ratti C. Real-Time Urban Monitoring Using Cell Phones: A Case Study in Rome. IEEE Transactions on Intelligent Transportation Systems. 2011;12(1):141-151.

2. Diao M., Zhu Y., Ferreira J., Ratti C. Inferring Individual Daily Activities from Mobile Phone Traces: A Boston Example. IRES Working Paper Series. 2015. IRES2015-012.

3. Gonzalez M.C., Hidalgo C.A., Barabasi A.L. Understanding Individual Human Mobility Patterns. Nature. 2008;453:479-482.

4. Reades J., Calabrese F., Sevtsuk A., Ratti C. Cellular Census: Explorations in Urban Data Collection. IEEE Pervasive Computing. 2007;6(3):30-38.

5. Sevtsuk A., Ratti C. Does Urban Mobility Have a Daily Routine? Learning from the Aggregate Data of Mobile Networks. Journal of Urban Technology. 2010;17(1):41-60.

6. Ahas R., Silm S., Jarv O., Saluveer E., Tiru M. Using Mobile Positioning Data to Model Locations Meaningful to Users of Mobile Phones. Journal of Urban Technology. 2010;17(1):3-27.

7. Calabrese F., Ferrari L., Blondel V.D. Urban Sensing Using Mobile Phone Network Data: A Survey of Research. ACM Computing Surveys. 2014; 47(2):1-23.

8. Girardin F., Vaccari A., Gerber A., Biderman A., Ratti C. Quantifying Urban Attractiveness from the Distribution and Density of Digital Footprints. International Journal of Spatial Data Infrastructures Research. 2009;4:175-200.

9. Tao S., Vasileios M., Rodriguez S., Rusu A. Real-Time Urban Traffic State Estimation with A-GPS Mobile Phones as Probes. Journal of Transportation Technologies. 2012;(2):22-31.

10. Terada M., Nagata T., Kobayashi M. Population Estimation Technology for Mobile Spatial Statistics. NTT DOCOMO Technical Journal. 2013;14(3):10-15.

11. Toole J.L., Ulm M., Bauer D., Gonzalez M.C. Inferring Land Use from Mobile Phone Activity. Proceedings of the ACM SIGKDD International Workshop on Urban Computing. 2012. P. 1-8.

12. Traag V.A., Browet A., Calabrese F., Morlot F. Social Event Detection in Massive Mobile Phone Data Using Probabilistic Location Inference. IEEE Third Inernational Conference on Social Computing. Boston: MA, USA, 2011.

13. Zuo X., Zhang Y. Detection and Analysis of Urban Area Hotspots Based on Cell Phone Traffic. Journal of Computers. 2012;7(7):1753-1760.


Review

For citations:


Polunina M.V., Elnikova E.A., Avetisyan S.T. New Digital Source of Statistical Information about Population. Voprosy statistiki. 2018;25(1):74-85. (In Russ.)

Views: 925


Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2313-6383 (Print)
ISSN 2658-5499 (Online)