Data from: Estimating mobile traffic demand using Twitter
In this letter, the authors show that structured social media data can act as an accurate predictor for wireless data demand patterns at a high spatial-temporal resolution. A casestudy is performed on Greater London covering a 5000 km2 area. The data used includes over 0.6 million geo-tagged Twitter...
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Zusammenfassung: | In this letter, the authors show that structured social media data can act
as an accurate predictor for wireless data demand patterns at a high
spatial-temporal resolution. A casestudy is performed on Greater London
covering a 5000 km2 area. The data used includes over 0.6 million
geo-tagged Twitter data, over 1 million mobile phone data demand records,
and U.K. census data. The analysis shows that social media activity
(Tweets/s n) can accurately predict the long-term traffic demand for both
the uplink and downlink channels. The relationship between social media
activity and traffic demand obeys a power law and the model explains for
over 71%-79% of the variance in real traffic demand. This is a significant
improvement over existing methods of long-term traffic prediction such as
census population data (R2 = 0.57). The authors also show that social
media data can also forward predict short-term traffic demand for up to 2
h on the same day and for the same time in the following 2-3 days. |
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DOI: | 10.5061/dryad.35m1f4q |