Big Data, data integrity, and the fracturing of the control zone

Big Data and Society 1 (2) (2014)
  Copy   BIBTEX

Abstract

Despite all the attention to Big Data and the claims that it represents a “paradigm shift” in science, we lack understanding about what are the qualities of Big Data that may contribute to this revolutionary impact. In this paper, we look beyond the quantitative aspects of Big Data and examine it from a sociotechnical perspective. We argue that a key factor that distinguishes “Big Data” from “lots of data” lies in changes to the traditional, well-established “control zones” that facilitated clear provenance of scientific data, thereby ensuring data integrity and providing the foundation for credible science. The breakdown of these control zones is a consequence of the manner in which our network technology and culture enable and encourage open, anonymous sharing of information, participation regardless of expertise, and collaboration across geographic, disciplinary, and institutional barriers. We are left with the conundrum—how to reap the benefits of Big Data while re-creating a trust fabric and an accountable chain of responsibility that make credible science possible.

Links

PhilArchive



    Upload a copy of this work     Papers currently archived: 91,219

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

Openness in the social sciences: Sharing data.Joan E. Sieber - 1991 - Ethics and Behavior 1 (2):69 – 86.
Data models and the acquisition and manipulation of data.Todd Harris - 2003 - Philosophy of Science 70 (5):1508-1517.
Openness and trust in data-intensive science: the case of biocuration.Ane Møller Gabrielsen - 2020 - Medicine, Health Care and Philosophy 23 (3):497-504.
The ethics of uncertainty for data subjects.Philip Nickel - 2019 - In Peter Dabrock, Matthias Braun & Patrik Hummel (eds.), The Ethics of Medical Data Donation. Springer Verlag. pp. 55-74.
Towards a Taxonomy of the Model-Ladenness of Data.Alisa Bokulich - forthcoming - PSA: Proceedings of the Biennial Meeting of the Philosophy of Science Association.
Data Collection from the Web for Informetric Purposes.Judit Bar-Ilan - 2019 - In Wolfgang Glänzel, Henk F. Moed, Ulrich Schmoch & Mike Thelwall (eds.), Springer Handbook of Science and Technology Indicators. Springer Verlag. pp. 781-800.

Analytics

Added to PP
2020-11-24

Downloads
13 (#978,482)

6 months
11 (#196,102)

Historical graph of downloads
How can I increase my downloads?