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  1. Dark data
    why what you don't know matters
    Autor*in: Hand, D. J.
    Erschienen: [2020]
    Verlag:  Princeton University Press, Princeton

    "Data describe and represent the world. However, no matter how big they may be, data sets don't - indeed cannot - capture everything. Data are measurements - and, as such, they represent only what has been measured. They don't necessarily capture all... mehr

    Universitätsbibliothek Erfurt / Forschungsbibliothek Gotha, Universitätsbibliothek Erfurt
    QH 710 H236
    uneingeschränkte Fernleihe, Kopie und Ausleihe
    Technische Informationsbibliothek (TIB) / Leibniz-Informationszentrum Technik und Naturwissenschaften und Universitätsbibliothek
    bestellt
    keine Fernleihe
    Universitätsbibliothek Heidelberg
    UBN/SK 850 H236
    uneingeschränkte Fernleihe, Kopie und Ausleihe
    Universitätsbibliothek Osnabrück
    6221-359 2
    keine Fernleihe
    Herzog August Bibliothek Wolfenbüttel
    FID

     

    "Data describe and represent the world. However, no matter how big they may be, data sets don't - indeed cannot - capture everything. Data are measurements - and, as such, they represent only what has been measured. They don't necessarily capture all the information that is relevant to the questions we may want to ask. If we do not take into account what may be missing/unknown in the data we have, we may find ourselves unwittingly asking questions that our data cannot actually address, come to mistaken conclusions, and make disastrous decisions. In this book, David Hand looks at the ubiquitous phenomenon of "missing data." He calls this "dark data" (making a comparison to "dark matter" - i.e., matter in the universe that we know is there, but which is invisible to direct measurement). He reveals how we can detect when data is missing, the types of settings in which missing data are likely to be found, and what to do about it. It can arise for many reasons, which themselves may not be obvious - for example, asymmetric information in wars; time delays in financial trading; dropouts in clinical trials; deliberate selection to enhance apparent performance in hospitals, policing, and schools; etc. What becomes clear is that measuring and collecting more and more data (big data) will not necessarily lead us to better understanding or to better decisions. We need to be vigilant to what is missing or unknown in our data, so that we can try to control for it. How do we do that? We can be alert to the causes of dark data, design better data-collection strategies that sidestep some of these causes - and, we can ask better questions of our data, which will lead us to deeper insights and better decisions"--

     

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    Hinweise zum Inhalt
    Quelle: Herzog August Bibliothek Wolfenbüttel
    Sprache: Englisch
    Medientyp: Buch (Monographie)
    Format: Druck
    ISBN: 9780691182377
    RVK Klassifikation: SK 850
    Schlagworte: Missing observations (Statistics); Big data
    Umfang: xii, 330 Seiten, Diagramme
    Bemerkung(en):

    Includes bibliographical references and index