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      Critique and Contribute: A Practice-Based Framework for Improving Critical Data Studies and Data Science

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          Abstract

          What would data science look like if its key critics were engaged to help improve it, and how might critiques of data science improve with an approach that considers the day-to-day practices of data science? This article argues for scholars to bridge the conversations that seek to critique data science and those that seek to advance data science practice to identify and create the social and organizational arrangements necessary for a more ethical data science. We summarize four critiques that are commonly made in critical data studies: data are inherently interpretive, data are inextricable from context, data are mediated through the sociomaterial arrangements that produce them, and data serve as a medium for the negotiation and communication of values. We present qualitative research with academic data scientists, “data for good” projects, and specialized cross-disciplinary engineering teams to show evidence of these critiques in the day-to-day experience of data scientists as they acknowledge and grapple with the complexities of their work. Using ethnographic vignettes from two large multiresearcher field sites, we develop a set of concepts for analyzing and advancing the practice of data science and improving critical data studies, including (1) communication is central to the data science endeavor; (2) making sense of data is a collective process; (3) data are starting, not end points, and (4) data are sets of stories. We conclude with two calls to action for researchers and practitioners in data science and critical data studies alike. First, creating opportunities for bringing social scientific and humanistic expertise into data science practice simultaneously will advance both data science and critical data studies. Second, practitioners should leverage the insights from critical data studies to build new kinds of organizational arrangements, which we argue will help advance a more ethical data science. Engaging the insights of critical data studies will improve data science. Careful attention to the practices of data science will improve scholarly critiques. Genuine collaborative conversations between these different communities will help push for more ethical, and better, ways of knowing in increasingly datum-saturated societies.

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          Most cited references32

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          Layers of Silence, Arenas of Voice: The Ecology of Visible and Invisible Work

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            • Article: not found

            What we talk about when we talk about context

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              • Record: found
              • Abstract: not found
              • Article: not found

              Critical data studies: An introduction

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                Author and article information

                Journal
                Big Data
                Big Data
                big
                Big Data
                Mary Ann Liebert, Inc. (140 Huguenot Street, 3rd FloorNew Rochelle, NY 10801USA )
                2167-6461
                2167-647X
                01 June 2017
                01 June 2017
                01 June 2017
                : 5
                : 2
                : 85-97
                Affiliations
                [ 1 ]Oxford Internet Institute, University of Oxford , Oxford, United Kingdom.
                [ 2 ]Department of Communication, University of Washington , Seattle, Washington.
                [ 3 ]e-Science Institute, University of Washington , Seattle, Washington.
                [ 4 ]Department of Construction Management, University of Washington , Seattle, Washington.
                Author notes
                [*] [ * ]Address correspondence to: Gina Neff, Oxford Internet Institute, University of Oxford, 1 Street Giles, Oxford OX1 3JS, United Kingdom , E-mail: gina.neff@ 123456oii.ox.ac.uk
                Article
                10.1089/big.2016.0050
                10.1089/big.2016.0050
                5515123
                28632445
                34551d78-918c-41d3-8f22-047f8c4f2eb9
                © Gina Neff et al., 2017; Published by Mary Ann Liebert, Inc.

                This article is available under the Creative Commons License CC-BY-NC ( http://creativecommons.org/licenses/by-nc/4.0). This license permits non-commercial use, distribution and reproduction in any medium, provided the original work is properly cited. Permission only needs to be obtained for commercial use and can be done via RightsLink.

                History
                Page count
                References: 52, Pages: 13
                Categories
                Original Articles

                critical data studies,data for good,data science,ethics,qualitative methods,theory

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