• Login
    View Item 
    •   DORA Home
    • Faculty of Computing, Engineering and Media
    • School of Computer Science and Informatics
    • View Item
    •   DORA Home
    • Faculty of Computing, Engineering and Media
    • School of Computer Science and Informatics
    • View Item
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Artificial intelligence for human flourishing – Beyond principles for machine learning

    Thumbnail
    View/Open
    Main article (2.487Mb)
    Date
    2021
    Author
    Stahl, Bernd Carsten, 1968-;
    Andreou, Andreas;
    Brey, Philip;
    Hatzakis, Tally;
    Kirichenko, Alexey;
    Macnish, Kevin;
    Laulhe Shaelou, Stephanie;
    Patel, Andrew;
    Ryan, Mark;
    Wright, David
    Metadata
    Show attachments and full item record
    Abstract
    The technical and economic benefits of artificial intelligence (AI) are counterbalanced by legal, social and ethical issues. It is challenging to conceptually capture and empirically measure both benefits and downsides. We therefore provide an account of the findings and implications of a multi-dimensional study of AI, comprising 10 case studies, five scenarios, an ethical impact analysis of AI, a human rights analysis of AI and a technical analysis of known and potential threats and vulnerabilities. Based on our findings, we separate AI ethics discourse into three streams: (1) specific issues related to the application of machine learning, (2) social and political questions arising in a digitally enabled society and (3) metaphysical questions about the nature of reality and humanity. Human rights principles and legislation have a key role to play in addressing the ethics of AI. This work helps to steer AI to contribute to human flourishing.
    Description
    open access article
    Citation : Stahl, B. C., Andreou, A., Brey, P., Hatzakis, T., Kirichenko, A., Macnish, K., Laulhé Shaelou, S., Patel, A., Ryan, M. and Wright, D. (2021) Artificial intelligence for human flourishing – Beyond principles for machine learning. Journal of Business Research.
    URI
    https://dora.dmu.ac.uk/handle/2086/20535
    DOI
    https://doi.org/10.1016/j.jbusres.2020.11.030
    ISSN : 0148-2963
    Research Institute : Centre for Computing and Social Responsibility (CCSR)
    Peer Reviewed : Yes
    Collections
    • School of Computer Science and Informatics [2987]

    Submission Guide | Reporting Guide | Reporting Tool | DMU Open Access Libguide | Take Down Policy | Connect with DORA
    DMU LIbrary
     

     

    Browse

    All of DORACommunities & CollectionsAuthorsTitlesSubjects/KeywordsResearch InstituteBy Publication DateBy Submission DateThis CollectionAuthorsTitlesSubjects/KeywordsResearch InstituteBy Publication DateBy Submission Date

    My Account

    Login

    Submission Guide | Reporting Guide | Reporting Tool | DMU Open Access Libguide | Take Down Policy | Connect with DORA
    DMU LIbrary