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journals.sagepub.com journals.sagepub.com
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Similarly, the regulatory agencies are criticized for addressing ethics with a one-size-fits-all approach, and then applying those rules inconsistently across similar cases, which creates unfair burdens on researchers and expensive delays to research projects (Abbott and Grady, 2011;
they try fitting all these things into this small bubble of ethics and regulations.
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f Big Data. Big Data research methods exacerbate a long-standing tension between the social sciences and research regulations that are
what are the key ethical challenges ?
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growing divide between
ethical challenges are what identify the growing gap between research ethics and data science practices
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There are growing discontinuities between the research practices of data science and established tools of research ethics regulation. Some of the core commitments of existing research ethics regulations, such as the distinction between research and practice, cannot be cleanly exported from biomedical research to data science research. Such discontinuities have led some data science practitioners and researchers to move toward rejecting ethics regulations outright. These shifts occur at the same time as a proposal for major revisions to the Common Rule—the primary regulation governing human-subjects research in the USA—is under consideration for the first time in decades. We contextualize these revisions in long-running complaints about regulation of social science research and argue data science should be understood as continuous with social sciences in this regard. The proposed regulations are more flexible and scalable to the methods of non-biomedical research, yet problematically largely exclude data science methods from human-subjects regulation, particularly uses of public datasets. The ethical frameworks for Big Data research are highly contested and in flux, and the potential harms of data science research are unpredictable. We examine several contentious cases of research harms in data science, including the 2014 Facebook emotional contagion study and the 2016 use of geographical data techniques to identify the pseudonymous artist Banksy. To address disputes about application of human-subjects research ethics in data science, critical data studies should offer a historically nuanced theory of “data subjectivity” responsive to the epistemic methods, harms and benefits of data science and commerce
how can we ensure that data is used ethically and responsibly ,especially when it involves sensitive personal information?
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We contextualize these revisions in long-running complaints about regulation of social science research and argue data science should be understood as continuous with social sciences in this regard. The proposed regulations are more flexible and scalable to the methods of non-biomedical research, yet problematically largely exclude data science methods from human-subjects regulation,
what specific ethical considerations should be applied to data science research that involves human subjects ?
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Some of the core commitments of existing research ethics regulations, such as the distinction between research and practice, cannot be cleanly exported from biomedical research to data science research.
core commitments highlight the disconnect between traditional research ethics and data science practices.
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