Wildy Logo
(020) 7242 5778
enquiries@wildy.com

Book of the Month

Cover of Borderlines in Private Law

Borderlines in Private Law

Edited by: William Day, Julius Grower
Price: £90.00

Lord Denning: Life, Law and Legacy



  


Welcome to Wildys

Watch


NEW EDITION
The Law of Rights of Light 2nd ed



 Jonathan Karas


Offers for Newly Called Barristers & Students

Special Discounts for Newly Called & Students

Read More ...


Secondhand & Out of Print

Browse Secondhand Online

Read More...


Ethical Data Science: Prediction in the Public Interest (eBook)


ISBN13: 9780197693056
Published: January 2024
Publisher: Oxford University Press USA
Country of Publication: UK
Format: eBook (ePub)
Price: £21.66
The amount of VAT charged may change depending on your location of use.


The sale of some eBooks are restricted to certain countries. To alert you to such restrictions, please select the country of the billing address of your credit or debit card you wish to use for payment.

Billing Country:


Sale prohibited in
Korea, [North] Democratic Peoples Republic Of

Due to publisher restrictions, international orders for ebooks may need to be confirmed by our staff during shop opening hours. Our trading hours are Monday to Friday, 8.30am to 5.00pm, London, UK time.


The device(s) you use to access the eBook content must be authorized with an Adobe ID before you download the product otherwise it will fail to register correctly.

For further information see https://www.wildy.com/ebook-formats


Once the order is confirmed an automated e-mail will be sent to you to allow you to download the eBook.

All eBooks are supplied firm sale and cannot be returned. If you believe there is a fault with your eBook then contact us on ebooks@wildy.com and we will help in resolving the issue. This does not affect your statutory rights.

This eBook is available in the following formats: ePub.

In stock.
Need help with ebook formats?




Also available as

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.

Subjects:
eBooks, IT, Internet and Artificial Intelligence Law
Contents:
Introduction: Ethical data science
Prologue: Tracking ethics in a prediction supply chain
1: SOURCE - Data are people too
2: MODEL - Dear validity: Advice for wayward algorithms
3: COMPARE - Category hacking
4: OPTIMIZE - Data science reasoning
5: LEARN - For good
6: Show us your work or someone gets hurt
7: Prediction in the public interest
References
Index