Intersecting intelligence : Exploring big data disruptions

Kerasidou, Xaroula Charalampia and Petersen, Katrina and Büscher, Monika (2017) Intersecting intelligence : Exploring big data disruptions. In: Big Data, Surveillance and Crisis Management :. Routledge, pp. 160-178. ISBN 9781138195431

Full text not available from this repository.

Abstract

In September 2015, Rana Novack, a Syrian American advocate for refugees and civilians in conflict and founder of the Refugee Admissions Network Alliance, wrote an article in Wired magazine entitled ‘We should have seen this refugee crisis coming’. There, Novack berates the reactive approach taken to the escalating refugee crisis that first captured public attention when between January and March 2015 479 refugees drowned or went missing in the Mediterranean Sea (UNHCR 2015). Novack calls upon the IT community to ‘step up - big time’ and use its ability to analyse ‘incredible amounts of data’ and build ‘predictive models’: we should be able to know when and where the next migration will occur. We should be able to predict how many people it will affect and the impact on surrounding areas. We have the technology - right here, right now - to create a new, agile, insightful model that will predict mass migrations and help us better serve displaced families even before they are displaced. We can do all this now. And we must. (Novack 2015) Such hopes that IT experts can construct machine or algorithmic ‘intelligence’ to analyse patterns, trends, anomalies within the vast amounts of data or ‘intelligence about’ people’s and objects’ everyday life, are widespread. They index complex intersections of different forms of intelligence and motivations for using them.

Item Type:
Contribution in Book/Report/Proceedings
Additional Information:
Publisher Copyright: © 2018 selection and editorial matter, Kees Boersma and Chiara Fonio; individual chapters, the contributors.
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/3300/3300
Subjects:
?? general social sciences ??
ID Code:
217833
Deposited By:
Deposited On:
16 Apr 2024 13:05
Refereed?:
No
Published?:
Published
Last Modified:
16 Jul 2024 05:27