Navigation überspringen
Universitätsbibliothek Heidelberg
Status: bestellen
> Bestellen/Vormerken
Verfasst von:Giansiracusa, Noah [VerfasserIn]   i
Titel:How algorithms create and prevent fake news
Titelzusatz:exploring the impacts of social media, deepfakes, GPT-3, and more
Verf.angabe:Noah Giansiracusa
Verlagsort:[Berkeley, CA]
Verlag:Apress
E-Jahr:2021
Jahr:[2021]
Umfang:xii, 235 Seiten
Illustrationen:1 Illustration
Fussnoten:Includes bibliographical references and index
ISBN:978-1-4842-7154-4
Abstract:1. Perils of Pageview -- 2. Crafted by Computer -- 3. Deepfake Deception -- 4. Autoplay the Autocrats -- 5. Prevarication and the Polygraph -- 6. Gravitating to Google -- 7. Avarice of Advertising -- 8. Social Spread -- 9. Tools for Truth.
 From deepfakes to GPT-3, deep learning is now powering a new assault on our ability to tell what’s real and what’s not, bringing a whole new algorithmic side to fake news. On the other hand, remarkable methods are being developed to help automate fact-checking and the detection of fake news and doctored media. Success in the modern business world requires you to understand these algorithmic currents, and to recognize the strengths, limits, and impacts of deep learning---especially when it comes to discerning the truth and differentiating fact from fiction. This book tells the stories of this algorithmic battle for the truth and how it impacts individuals and society at large. In doing so, it weaves together the human stories and what’s at stake here, a simplified technical background on how these algorithms work, and an accessible survey of the research literature exploring these various topics. How Algorithms Create and Prevent Fake News is an accessible, broad account of the various ways that data-driven algorithms have been distorting reality and rendering the truth harder to grasp. From news aggregators to Google searches to YouTube recommendations to Facebook news feeds, the way we obtain information today is filtered through the lens of tech giant algorithms. The way data is collected, labelled, and stored has a big impact on the machine learning algorithms that are trained on it, and this is a main source of algorithmic bias ­– which gets amplified in harmful data feedback loops. Don’t be afraid: with this book you’ll see the remedies and technical solutions that are being applied to oppose these harmful trends. There is hope.
DOI:doi:10.1007/978-1-4842-7155-1
URL:DOI: https://doi.org/10.1007/978-1-4842-7155-1
Schlagwörter:(s)Algorithmus   i
Sprache:eng
Bibliogr. Hinweis:Erscheint auch als : Online-Ausgabe: Giansiracusa, Noah: How Algorithms Create and Prevent Fake News. - 1st edition. - [Erscheinungsort nicht ermittelbar] : Apress, 2021. - 1 online resource (239 pages)
 Erscheint auch als : Online-Ausgabe: Giansiracusa, Noah: How Algorithms Create and Prevent Fake News. - Berkeley, CA : Apress L. P., 2021. - 1 online resource (239 pages)
RVK-Notation:ST 134   i
K10plus-PPN:1765981239
Exemplare:

SignaturQRStandortStatus
LN-U 10-19563QR-CodeZweigstelle Neuenheim / Lehrbuchsammlung3D-Planbestellbar
Mediennummer: 20209316

Permanenter Link auf diesen Titel (bookmarkfähig):  https://katalog.ub.uni-heidelberg.de/titel/68782467   QR-Code
zum Seitenanfang