Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap
Big Data and Artificial Intelligence have a symbiotic relationship. Artificial Intelligence needs to be trained on Big Data to be accurate, and Big Data's value is largely realized through its use by Artificial Intelligence. As a result, Big Data and Artificial Intelligence practices are tightl...
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doaj-4c75bc32b9d340929bedc24bf38c2c8a2021-09-15T21:33:21ZengSAGE PublishingBig Data & Society2053-95172021-07-01810.1177/20539517211040197Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gapJana Schaich BorgBig Data and Artificial Intelligence have a symbiotic relationship. Artificial Intelligence needs to be trained on Big Data to be accurate, and Big Data's value is largely realized through its use by Artificial Intelligence. As a result, Big Data and Artificial Intelligence practices are tightly intertwined in real life settings, as are their impacts on society. Unethical uses of Artificial Intelligence are therefore a Big Data problem, at least to some degree. Efforts to address this problem have been dominated by the documentation of Ethical Artificial Intelligence principles and the creation of technical tools that address specific aspects of those principles. However, there is mounting evidence that Ethical Artificial Intelligence principles and technical tools have little impact on the Artificial Intelligence that is created in practice, sometimes in very public ways. The goal of this commentary is to highlight four interconnected areas society can invest in to close this Ethical Artificial Intelligence publication-to-practice gap, maximizing the positive impact Artificial Intelligence and Big Data have on society. For Ethical Artificial Intelligence to become a reality, I argue that these areas need to be addressed holistically in a way that acknowledges their interdependencies. Progress will require iteration, compromise, and transdisciplinary collaboration, but the result of our investments will be the realization of Artificial Intelligence's and Big Data's tremendous potential for social good, in practice rather than in just our hopes and aspirations.https://doi.org/10.1177/20539517211040197 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jana Schaich Borg |
spellingShingle |
Jana Schaich Borg Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap Big Data & Society |
author_facet |
Jana Schaich Borg |
author_sort |
Jana Schaich Borg |
title |
Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap |
title_short |
Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap |
title_full |
Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap |
title_fullStr |
Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap |
title_full_unstemmed |
Four investment areas for ethical AI: Transdisciplinary opportunities to close the publication-to-practice gap |
title_sort |
four investment areas for ethical ai: transdisciplinary opportunities to close the publication-to-practice gap |
publisher |
SAGE Publishing |
series |
Big Data & Society |
issn |
2053-9517 |
publishDate |
2021-07-01 |
description |
Big Data and Artificial Intelligence have a symbiotic relationship. Artificial Intelligence needs to be trained on Big Data to be accurate, and Big Data's value is largely realized through its use by Artificial Intelligence. As a result, Big Data and Artificial Intelligence practices are tightly intertwined in real life settings, as are their impacts on society. Unethical uses of Artificial Intelligence are therefore a Big Data problem, at least to some degree. Efforts to address this problem have been dominated by the documentation of Ethical Artificial Intelligence principles and the creation of technical tools that address specific aspects of those principles. However, there is mounting evidence that Ethical Artificial Intelligence principles and technical tools have little impact on the Artificial Intelligence that is created in practice, sometimes in very public ways. The goal of this commentary is to highlight four interconnected areas society can invest in to close this Ethical Artificial Intelligence publication-to-practice gap, maximizing the positive impact Artificial Intelligence and Big Data have on society. For Ethical Artificial Intelligence to become a reality, I argue that these areas need to be addressed holistically in a way that acknowledges their interdependencies. Progress will require iteration, compromise, and transdisciplinary collaboration, but the result of our investments will be the realization of Artificial Intelligence's and Big Data's tremendous potential for social good, in practice rather than in just our hopes and aspirations. |
url |
https://doi.org/10.1177/20539517211040197 |
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