Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward
Abstract Decision-making on numerous aspects of our daily lives is being outsourced to machine-learning (ML) algorithms and artificial intelligence (AI), motivated by speed and efficiency in the decision process. ML approaches—one of the typologies of algorithms underpinning artificial intelligence—...
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2020-06-01
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Online Access: | https://doi.org/10.1057/s41599-020-0501-9 |
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doaj-58ba89fa4a98478c9e4a4b7b117497f32021-06-20T11:05:48ZengSpringer NatureHumanities & Social Sciences Communications2662-99922020-06-01711710.1057/s41599-020-0501-9Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forwardSamuele Lo Piano0School of the Built Environment, University of ReadingAbstract Decision-making on numerous aspects of our daily lives is being outsourced to machine-learning (ML) algorithms and artificial intelligence (AI), motivated by speed and efficiency in the decision process. ML approaches—one of the typologies of algorithms underpinning artificial intelligence—are typically developed as black boxes. The implication is that ML code scripts are rarely scrutinised; interpretability is usually sacrificed in favour of usability and effectiveness. Room for improvement in practices associated with programme development have also been flagged along other dimensions, including inter alia fairness, accuracy, accountability, and transparency. In this contribution, the production of guidelines and dedicated documents around these themes is discussed. The following applications of AI-driven decision-making are outlined: (a) risk assessment in the criminal justice system, and (b) autonomous vehicles, highlighting points of friction across ethical principles. Possible ways forward towards the implementation of governance on AI are finally examined.https://doi.org/10.1057/s41599-020-0501-9 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Samuele Lo Piano |
spellingShingle |
Samuele Lo Piano Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward Humanities & Social Sciences Communications |
author_facet |
Samuele Lo Piano |
author_sort |
Samuele Lo Piano |
title |
Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
title_short |
Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
title_full |
Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
title_fullStr |
Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
title_full_unstemmed |
Ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
title_sort |
ethical principles in machine learning and artificial intelligence: cases from the field and possible ways forward |
publisher |
Springer Nature |
series |
Humanities & Social Sciences Communications |
issn |
2662-9992 |
publishDate |
2020-06-01 |
description |
Abstract Decision-making on numerous aspects of our daily lives is being outsourced to machine-learning (ML) algorithms and artificial intelligence (AI), motivated by speed and efficiency in the decision process. ML approaches—one of the typologies of algorithms underpinning artificial intelligence—are typically developed as black boxes. The implication is that ML code scripts are rarely scrutinised; interpretability is usually sacrificed in favour of usability and effectiveness. Room for improvement in practices associated with programme development have also been flagged along other dimensions, including inter alia fairness, accuracy, accountability, and transparency. In this contribution, the production of guidelines and dedicated documents around these themes is discussed. The following applications of AI-driven decision-making are outlined: (a) risk assessment in the criminal justice system, and (b) autonomous vehicles, highlighting points of friction across ethical principles. Possible ways forward towards the implementation of governance on AI are finally examined. |
url |
https://doi.org/10.1057/s41599-020-0501-9 |
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