NA Smuha - Internet Policy Review, 2021 - papers.ssrn.com
In this paper, I distinguish three types of harm that can arise in the context of artificial intelligence (AI): individual harm, collective harm and societal harm. Societal harm is often …
Responding to growing criticism that the use of artificial intelligence in public services reinforces unethical activities such as discrimination, the paper presents two new cases from …
J Cobbe, MSA Lee, J Singh - Proceedings of the 2021 ACM conference …, 2021 - dl.acm.org
This paper introduces reviewability as a framework for improving the accountability of automated and algorithmic decisionmaking (ADM) involving machine learning. We draw on …
Technology adoption is crucial to economic growth, yet levels of technology adoption vary, with limited adoption in many countries. Countries wield considerable technology adoption …
M Schuilenburg, R Peeters - London‒New York, 2021 - api.taylorfrancis.com
Contemporary social scientific scholarship is being transformed by the challenges associated with the changing nature of, and responses to, questions of crime, security and …
This research proposes a framework for the negative impacts of artificial intelligence (AI) in government by classifying 14 topics of its dark side into five socio technical categories. The …
Arguments in favor of tempering algorithmic decision making with human judgment often appeal to concepts and criteria derived from legal philosophy about the nature of law and …
The mounting evidence of unintended harmful social consequences of automated algorithmic decision-making (AADM), powered by AI and big data, in transformative services …
In this article, we focus on the growing evidence of unintended harmful societal effects of automated algorithmic decision-making in transformative services (eg social welfare …