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Understanding the Representativeness of Mobile Phone Location Data in Characterizing Human Mobility Indicators
2017
ISPRS International Journal of Geo-Information
The advent of big data has aided understanding of the driving forces of human mobility, which is beneficial for many fields, such as mobility prediction, urban planning, and traffic management. However, the data sources used in many studies, such as mobile phone location and geo-tagged social media data, are sparsely sampled in the temporal scale. An individual's records can be distributed over a few hours a day, or a week, or over just a few hours a month. Thus, the representativeness of
doi:10.3390/ijgi6010007
fatcat:4wnptqsk5je7tmk6c5i5di33tm