Predictive privacy: towards an applied ethics of data analytics

Ethics and Information Technology 23 (4):675-690 (2021)
  Copy   BIBTEX

Abstract

Data analytics and data-driven approaches in Machine Learning are now among the most hailed computing technologies in many industrial domains. One major application is predictive analytics, which is used to predict sensitive attributes, future behavior, or cost, risk and utility functions associated with target groups or individuals based on large sets of behavioral and usage data. This paper stresses the severe ethical and data protection implications of predictive analytics if it is used to predict sensitive information about single individuals or treat individuals differently based on the data many unrelated individuals provided. To tackle these concerns in an applied ethics, first, the paper introduces the concept of “predictive privacy” to formulate an ethical principle protecting individuals and groups against differential treatment based on Machine Learning and Big Data analytics. Secondly, it analyses the typical data processing cycle of predictive systems to provide a step-by-step discussion of ethical implications, locating occurrences of predictive privacy violations. Thirdly, the paper sheds light on what is qualitatively new in the way predictive analytics challenges ethical principles such as human dignity and the (liberal) notion of individual privacy. These new challenges arise when predictive systems transform statistical inferences, which provide knowledge about the cohort of training data donors, into individual predictions, thereby crossing what I call the “prediction gap”. Finally, the paper summarizes that data protection in the age of predictive analytics is a collective matter as we face situations where an individual’s (or group’s) privacy is violated using dataotherindividuals provide about themselves, possibly even anonymously.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 91,672

External links

Setup an account with your affiliations in order to access resources via your University's proxy server

Through your library

Similar books and articles

Privacy concerns in educational data mining and learning analytics.Isak Potgieter - 2020 - International Review of Information Ethics 28.
Big Data Privacy and Ethical Challenges.Paulette Lacroix - 2019 - In Mowafa Househ, Andre W. Kushniruk & Elizabeth M. Borycki (eds.), Big Data, Big Challenges: A Healthcare Perspective: Background, Issues, Solutions and Research Directions. Springer Verlag. pp. 101-111.
Navigating the Incoherence of Big Data Reform Proposals.Nicolas Terry - 2015 - Journal of Law, Medicine and Ethics 43 (S1):44-47.
Deleuze’s Postscript on the Societies of Control Updated for Big Data and Predictive Analytics.James Brusseau - 2020 - Theoria: A Journal of Social and Political Theory 67 (164):1-25.
From Individual to Group Privacy in Big Data Analytics.Brent Mittelstadt - 2017 - Philosophy and Technology 30 (4):475-494.
Data Analytics in Higher Education: Key Concerns and Open Questions.Alan Rubel & Kyle M. L. Jones - 2017 - University of St. Thomas Journal of Law and Public Policy 1 (11):25-44.
Robotics, Big Data, Ethics and Data Protection: A Matter of Approach.Nicola Fabiano - 2019 - In Maria Isabel Aldinhas Ferreira, João Silva Sequeira, Gurvinder Singh Virk, Mohammad Osman Tokhi & Endre E. Kadar (eds.), Robotics and Well-Being. Springer Verlag. pp. 79-87.

Analytics

Added to PP
2021-12-06

Downloads
34 (#467,440)

6 months
10 (#261,739)

Historical graph of downloads
How can I increase my downloads?

Author's Profile

Rainer Mühlhoff
Technische Universität Berlin