Citizen Data and Trust in Official Statistics

Ruppert, Evelyn; Grommé, Francisca; Ustek, Funda and Cakici, Baki. 2019. Citizen Data and Trust in Official Statistics. Economie et Statistique, 505, pp. 171-184. ISSN ISSN 0336-1454 [Article]

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Abstract or Description

Many, if not most, big data are connected to the lives of citizens: their movements, opinions, and relations. Arguably big data and citizens are inseparable: from smartphones, meters, fridges and cars to internet platforms, the data of digital technologies is the data of citizens. In addition to raising political and ethical issues of privacy, confidentiality and data protection, this calls for rethinking relations to citizens in the production of data for statistics if they are to be trusted by citizens. We outline an approach that involves co-producing data, where citizens are engaged in all stages of statistical production, from the design of a data production platform to the interpretation and analysis of data. While raising issues such as data quality and reliability, we argue co-production can potentially mitigate problems associated with the re-purposing of big data. We argue that in a time of ‘alternative facts’, what constitutes legitimate knowledge and expertise are major political sites of contention and struggle and require going beyond defending existing practices towards inventing new ones. In this context, we argue that the future of official statistics not only depends on inventing new data sources and methods but also mobilising the possibilities of digital technologies to establish new relations with citizens.

Item Type:

Article

Keywords:

citizen science, co-production, experimentalism, privacy-by-design, smart statistics

Departments, Centres and Research Units:

Sociology

Dates:

DateEvent
6 June 2018Accepted
4 April 2019Published

Item ID:

23905

Date Deposited:

27 Jul 2018 12:05

Last Modified:

29 Apr 2020 16:48

Peer Reviewed:

Yes, this version has been peer-reviewed.

URI:

https://research.gold.ac.uk/id/eprint/23905

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