9781003173427_10.4324_9781003173427-3.pdf

Datasets have come to play a significant role in the technical and political realities of our overdeveloped world. This chapter indicates how invisible data processes pose a threat to the health and safety of the global public and argues for the democratic potential of data practices. This potential...

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Γλώσσα:English
Έκδοση: Taylor & Francis 2022
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spelling oapen-20.500.12657-572772024-03-18T11:20:55Z Chapter 3 From Big to Democratic Data Bunz, Mercedes Vrikki, Photini critical data practice, data as a public good, data solidarity, democratic data, data governance bic Book Industry Communication::J Society & social sciences::JH Sociology & anthropology::JHB Sociology Datasets have come to play a significant role in the technical and political realities of our overdeveloped world. This chapter indicates how invisible data processes pose a threat to the health and safety of the global public and argues for the democratic potential of data practices. This potential is set to become even more influential due to the central role data plays for training contemporary AI and technologies such as machine learning. Our case study explores the role patient datasets have for machine learning research in healthcare and shows that publicly available datasets are central to advancing data analysis research; they can act as a counterbalance to datasets full of absences, biases, and disconnects that often corrupt the quality of data. Given this, we argue for the introduction of ‘data solidarity’ as a principle of data governance and an effective critical data practice that focuses on the democratic (instead of economic) potential of data; a potential that is far too often overlooked. 2022-07-08T13:37:25Z 2022-07-08T13:37:25Z 2022 chapter https://library.oapen.org/handle/20.500.12657/57277 eng application/pdf Attribution 4.0 International 9781003173427_10.4324_9781003173427-3.pdf Taylor & Francis Democratic Frontiers Routledge 10.4324/9781003173427-3 10.4324/9781003173427-3 7b3c7b10-5b1e-40b3-860e-c6dd5197f0bb 5754b3a8-a179-43de-a267-dc63171ec594 d859fbd3-d884-4090-a0ec-baf821c9abfd Wellcome Routledge 17 213552/Z/18/Z Wellcome Trust Wellcome open access
institution OAPEN
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language English
description Datasets have come to play a significant role in the technical and political realities of our overdeveloped world. This chapter indicates how invisible data processes pose a threat to the health and safety of the global public and argues for the democratic potential of data practices. This potential is set to become even more influential due to the central role data plays for training contemporary AI and technologies such as machine learning. Our case study explores the role patient datasets have for machine learning research in healthcare and shows that publicly available datasets are central to advancing data analysis research; they can act as a counterbalance to datasets full of absences, biases, and disconnects that often corrupt the quality of data. Given this, we argue for the introduction of ‘data solidarity’ as a principle of data governance and an effective critical data practice that focuses on the democratic (instead of economic) potential of data; a potential that is far too often overlooked.
title 9781003173427_10.4324_9781003173427-3.pdf
spellingShingle 9781003173427_10.4324_9781003173427-3.pdf
title_short 9781003173427_10.4324_9781003173427-3.pdf
title_full 9781003173427_10.4324_9781003173427-3.pdf
title_fullStr 9781003173427_10.4324_9781003173427-3.pdf
title_full_unstemmed 9781003173427_10.4324_9781003173427-3.pdf
title_sort 9781003173427_10.4324_9781003173427-3.pdf
publisher Taylor & Francis
publishDate 2022
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