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      The ethics and politics of data sets in the age of machine learning: deleting traces and encountering remains

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      Media, Culture & Society
      SAGE Publications

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          Abstract

          Individuals and communities increasingly depend on, and fill their lives with, machine cultures, in the form of both interfaces and infrastructures. This global push for machine cultures has given rise to an increasing demand for data and engendered a proliferation of public, private and public-private dataset repositories. While datasets form a foundational element of machine cultures, they rarely come into focus as objects of critical study. But in recent years a critical discursive formation on datasets has begun to emerge, which disturbs the idea of datasets as operational instruments of digital knowledge production and seek to instead ‘bring people back in’. The present article identifies these preliminary explorations as ‘critical dataset studies’ and draws on critical archival studies to articulate the ethico-political surfaced by these studies. Specifically it argues that critical dataset studies shows the need for an expanded ethical and conceptual approach to datasets that not only relies on linear notions of deletion and accountability but also on iterative frameworks of remains and response-ability.

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          80 million tiny images: a large data set for nonparametric object and scene recognition.

          With the advent of the Internet, billions of images are now freely available online and constitute a dense sampling of the visual world. Using a variety of non-parametric methods, we explore this world with the aid of a large dataset of 79,302,017 images collected from the Internet. Motivated by psychophysical results showing the remarkable tolerance of the human visual system to degradations in image resolution, the images in the dataset are stored as 32 x 32 color images. Each image is loosely labeled with one of the 75,062 non-abstract nouns in English, as listed in the Wordnet lexical database. Hence the image database gives a comprehensive coverage of all object categories and scenes. The semantic information from Wordnet can be used in conjunction with nearest-neighbor methods to perform object classification over a range of semantic levels minimizing the effects of labeling noise. For certain classes that are particularly prevalent in the dataset, such as people, we are able to demonstrate a recognition performance comparable to class-specific Viola-Jones style detectors.
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            Dark Matters

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              Data Feminism

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                Author and article information

                Contributors
                (View ORCID Profile)
                Journal
                Media, Culture & Society
                Media, Culture & Society
                SAGE Publications
                0163-4437
                1460-3675
                April 28 2022
                : 016344372110602
                Affiliations
                [1 ]Copenhagen Business School, Denmark
                Article
                10.1177/01634437211060226
                1d73b3de-affb-454e-a5c4-5d8825219ddf
                © 2022

                http://journals.sagepub.com/page/policies/text-and-data-mining-license

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