From individual to group privacy in big data analytics

Mature information societies are characterised by mass production of data that provide insight into human behaviour. Analytics (as in big data analytics) has arisen as a practice to make sense of the data trails generated through interactions with networked devices, platforms and organisations. Pers...

Full description

Bibliographic Details
Main Author: Mittelstadt, B
Format: Journal article
Published: Springer Netherlands 2017
_version_ 1797093740846776320
author Mittelstadt, B
author_facet Mittelstadt, B
author_sort Mittelstadt, B
collection OXFORD
description Mature information societies are characterised by mass production of data that provide insight into human behaviour. Analytics (as in big data analytics) has arisen as a practice to make sense of the data trails generated through interactions with networked devices, platforms and organisations. Persistent knowledge describing the behaviours and characteristics of people can be constructed over time, linking individuals into groups or classes of interest to the platform. Analytics allows for a new type of algorithmically assembled group to be formed that does not necessarily align with classes or attributes already protected by privacy and anti-discrimination law or addressed in fairness- and discrimination-aware analytics. Individuals are linked according to offline identifiers (e.g. age, ethnicity, geographical location) and shared behavioural identity tokens, allowing for predictions and decisions to be taken at a group rather than individual level. This article examines the ethical significance of such ad hoc groups in analytics and argues that the privacy interests of algorithmically assembled groups in inviolate personality must be recognised alongside individual privacy rights. Algorithmically grouped individuals have a collective interest in the creation of information about the group, and actions taken on its behalf. Group privacy is proposed as a third interest to balance alongside individual privacy and social, commercial and epistemic benefits when assessing the ethical acceptability of analytics platforms.
first_indexed 2024-03-07T04:04:36Z
format Journal article
id oxford-uuid:c5b9bfff-c534-4c3a-b267-c1fec40964c2
institution University of Oxford
last_indexed 2024-03-07T04:04:36Z
publishDate 2017
publisher Springer Netherlands
record_format dspace
spelling oxford-uuid:c5b9bfff-c534-4c3a-b267-c1fec40964c22022-03-27T06:33:03ZFrom individual to group privacy in big data analyticsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:c5b9bfff-c534-4c3a-b267-c1fec40964c2Symplectic Elements at OxfordSpringer Netherlands2017Mittelstadt, BMature information societies are characterised by mass production of data that provide insight into human behaviour. Analytics (as in big data analytics) has arisen as a practice to make sense of the data trails generated through interactions with networked devices, platforms and organisations. Persistent knowledge describing the behaviours and characteristics of people can be constructed over time, linking individuals into groups or classes of interest to the platform. Analytics allows for a new type of algorithmically assembled group to be formed that does not necessarily align with classes or attributes already protected by privacy and anti-discrimination law or addressed in fairness- and discrimination-aware analytics. Individuals are linked according to offline identifiers (e.g. age, ethnicity, geographical location) and shared behavioural identity tokens, allowing for predictions and decisions to be taken at a group rather than individual level. This article examines the ethical significance of such ad hoc groups in analytics and argues that the privacy interests of algorithmically assembled groups in inviolate personality must be recognised alongside individual privacy rights. Algorithmically grouped individuals have a collective interest in the creation of information about the group, and actions taken on its behalf. Group privacy is proposed as a third interest to balance alongside individual privacy and social, commercial and epistemic benefits when assessing the ethical acceptability of analytics platforms.
spellingShingle Mittelstadt, B
From individual to group privacy in big data analytics
title From individual to group privacy in big data analytics
title_full From individual to group privacy in big data analytics
title_fullStr From individual to group privacy in big data analytics
title_full_unstemmed From individual to group privacy in big data analytics
title_short From individual to group privacy in big data analytics
title_sort from individual to group privacy in big data analytics
work_keys_str_mv AT mittelstadtb fromindividualtogroupprivacyinbigdataanalytics