Deep Learning and Ethics
LaCroix, Travis, Prince, Simon J. D.
–arXiv.org Artificial Intelligence
The value alignment problem is the task of ensuring that the objectives of AI systems are aligned with human objectives. Bias, explainability, artificial moral agency, and other topics can be viewed through this lens. AI can be intentionally misused, and this chapter detailed some ways this can happen. Progress in AI has further implications in areas as diverse as IP law and climate change. Ethical AI is a collective action problem, and the chapter concludes with an appeal to scientists to consider the moral and ethical implications of their work. Every ethical issue is not within the control of every individual computer scientist. However, this does not imply that researchers have no responsibility whatsoever to consider--and mitigate where they can--the potential for misuse of the systems they create.
arXiv.org Artificial Intelligence
Jun-20-2023
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