| Literature DB >> 24189490 |
Tobias Preis1, Helen Susannah Moat, Steven R Bishop, Philip Treleaven, H Eugene Stanley.
Abstract
Society's increasing interactions with technology are creating extensive "digital traces" of our collective human behavior. These new data sources are fuelling the rapid development of the new field of computational social science. To investigate user attention to the Hurricane Sandy disaster in 2012, we analyze data from Flickr, a popular website for sharing personal photographs. In this case study, we find that the number of photos taken and subsequently uploaded to Flickr with titles, descriptions or tags related to Hurricane Sandy bears a striking correlation to the atmospheric pressure in the US state New Jersey during this period. Appropriate leverage of such information could be useful to policy makers and others charged with emergency crisis management.Entities:
Mesh:
Year: 2013 PMID: 24189490 PMCID: PMC3817451 DOI: 10.1038/srep03141
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Hurricane Sandy related Flickr photos and atmospheric pressure in the US state New Jersey.
(A) We identify all photos taken between 20 October 2012 and 20 November 2012 which were subsequently uploaded to Flickr with any of the three terms Hurricane, Sandy and Hurricane Sandy in their tags, title or description text. Here we show the number of these Hurricane Sandy related Flickr photos normalized by the total number of photos taken and subsequently uploaded to Flickr. The data are analyzed at an hourly granularity. To eliminate daily periodicity in the hourly Flickr data, the data are transformed to represent the average value from a moving window spanning 24 hours (Δt = 24 hours). Date lines denote the beginning of a day in UTC. (B) The atmospheric pressure in New Jersey between 20 October 2012 and 20 November 2012. Atmospheric pressure data is compiled from average measurements from 62 stations in New Jersey that form part of the Automated Surface Observing System (ASOS). Again, the data are analyzed at an hourly granularity.