NLSUI OPAC header image
Amazon cover image
Image from Amazon.com

Ethical data science : prediction in the public interest / Anne L. Washington, PhD.

By: Series: Oxford technology law and policyPublisher: New York, NY : Oxford University Press, [2023]Description: 172 pages ; 25 cmContent type:
  • text
ISBN:
  • 9780197693025
Subject(s): DDC classification:
  • 006.3 23/eng/20230810
LOC classification:
  • QA76.9.D343 W375 2023
Contents:
Prologue: Tracing ethics in the prediction supply chain -- Source : data are people too -- Model : dear validity, advice for wayward algorithms -- Compare : no comparison without representation -- Optimize : data science reasoning -- Learn : for good -- Show us your work or someone gets hurt -- Conclusion: Prediction in the public interest.
Summary: Can data science truly serve the public interest? Data-driven analysis shapes many interpersonal, consumer, and cultural experiences yet scientific solutions to social problems routinely stumble. All too often, predictions remain solely a technocratic instrument that sets financial interests against service to humanity. Amidst a growing movement to use science for positive change, Anne L. Washington offers a solution-oriented approach to the ethical challenges of data science. Ethical Data Science empowers those striving to create predictive data technologies that benefit more people. As one of the first books on public interest technology, it provides a starting point for anyone who wants human values to counterbalance the institutional incentives that drive computational prediction. It argues that data science prediction embeds administrative preferences that often ignore the disenfranchised. The book introduces the prediction supply chain to highlight moral questions alongside the interlocking legal and commercial interests influencing data science. Structured around a typical data science workflow, the book systematically outlines the potential for more nuanced approaches to transforming data into meaningful patterns. Drawing on arts and humanities methods, it encourages readers to think critically about the full human potential of data science step-by-step. Situating data science within multiple layers of effort exposes dependencies while also pinpointing opportunities for research ethics and policy interventions. This approachable process lays the foundation for broader conversations with a wide range of audiences. Practitioners, academics, students, policy makers, and legislators can all learn how to identify social dynamics in data trends, reflect on ethical questions, and deliberate over solutions. The book proves the limits of predictive technology controlled by the few and calls for more inclusive data science.
List(s) this item appears in: New Arrivals for 2024-25
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Shelving location Call number Materials specified Status Notes Barcode
BOOKs National Law School General Stacks 006.3 WAS (Browse shelf(Opens below)) HB Available Recommended by Dr. Arul George Scaria 39899

Includes bibliographical references and index.

Prologue: Tracing ethics in the prediction supply chain -- Source : data are people too -- Model : dear validity, advice for wayward algorithms -- Compare : no comparison without representation -- Optimize : data science reasoning -- Learn : for good -- Show us your work or someone gets hurt -- Conclusion: Prediction in the public interest.

Can data science truly serve the public interest? Data-driven analysis shapes many interpersonal, consumer, and cultural experiences yet scientific solutions to social problems routinely stumble. All too often, predictions remain solely a technocratic instrument that sets financial interests against service to humanity. Amidst a growing movement to use science for positive change, Anne L. Washington offers a solution-oriented approach to the ethical challenges of data science.
Ethical Data Science empowers those striving to create predictive data technologies that benefit more people. As one of the first books on public interest technology, it provides a starting point for anyone who wants human values to counterbalance the institutional incentives that drive computational prediction. It argues that data science prediction embeds administrative preferences that often ignore the disenfranchised. The book introduces the prediction supply chain to highlight moral questions alongside the interlocking legal and commercial interests influencing data science. Structured around a typical data science workflow, the book systematically outlines the potential for more nuanced approaches to transforming data into meaningful patterns. Drawing on arts and humanities methods, it encourages readers to think critically about the full human potential of data science step-by-step. Situating data science within multiple layers of effort exposes dependencies while also pinpointing opportunities for research ethics and policy interventions.
This approachable process lays the foundation for broader conversations with a wide range of audiences. Practitioners, academics, students, policy makers, and legislators can all learn how to identify social dynamics in data trends, reflect on ethical questions, and deliberate over solutions. The book proves the limits of predictive technology controlled by the few and calls for more inclusive data science.

There are no comments on this title.

to post a comment.