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Lecture 1

chris wiggins edited this page Feb 5, 2017 · 11 revisions

Jan 17, 2017

excerpts to discuss:

  • Wallach, Hanna. Big data, machine learning, and the social sciences: Fairness, accountability, and transparency. Medium. Retrieved December 20, 2014, from https://medium.com/@hannawallach/big-data-machine-learning-and-the-social-sciences-927a8e20460d

    • "uncomfortable": why?
    • types of analyses:
      • when might we describe vs predict vs explain?
      • who might be more interested in one than the other? (e.g., scientists, social scientists, engineers, social media or advertising companies....)
      • how might these be used?
    • "technology": a technology has several implications, e.g.,
      • design choices
      • additional capabilities
      • original intentended purpose of this capability
      • diversity of unanticipated uses of this technology
  • boyd, danah, and Kate Crawford. 2012. "Critical questions for big data: Provocations for a cultural, technological, and scholarly phenomenon." Information, Communication & Society 15.5: 662-679. http://www.tandfonline.com/doi/abs/10.1080/1369118X.2012.678878

    • why do we strive for "objectivity"? (the answer should not contain the word "truth")
    • think though the sources of subjectivity in the chronology of you relationship with a dataset, e.g.,
      • how the data were generated
      • your mental model of this
      • choices of what to keep and discard (examples, features)
      • choice of model
      • assessment of model
      • development of model into a technology
      • anticipated uses of this technology
      • unanticipated uses of this technology
    • think of a case where data are not "random" or "representative?"

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