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  1. Politics of data reuse in machine learning systems: Theorizing reuse entanglements.Louise Amoore, Mikkel Flyverbom, Kristian Bondo Hansen & Nanna Bonde Thylstrup - 2022 - Big Data and Society 9 (2).
    Policy discussions and corporate strategies on machine learning are increasingly championing data reuse as a key element in digital transformations. These aspirations are often coupled with a focus on responsibility, ethics and transparency, as well as emergent forms of regulation that seek to set demands for corporate conduct and the protection of civic rights. And the Protective measures include methods of traceability and assessments of ‘good’ and ‘bad’ datasets and algorithms that are considered to be traceable, stable and contained. However, (...)
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  • Data Cleaners for Pristine Datasets: Visibility and Invisibility of Data Processors in Social Science.Jean-Christophe Plantin - 2019 - Science, Technology, and Human Values 44 (1):52-73.
    This article investigates the work of processors who curate and “clean” the data sets that researchers submit to data archives for archiving and further dissemination. Based on ethnographic fieldwork conducted at the data processing unit of a major US social science data archive, I investigate how these data processors work, under which status, and how they contribute to data sharing. This article presents two main results. First, it contributes to the study of invisible technicians in science by showing that the (...)
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