Future Intelligent Autonomous Robots, Ethical by Design. Learning from Autonomous Cars Ethics
Gordana Dodig-Crnkovic, Tobias Holstein, Patrizio Pelliccione

TL;DR
This paper discusses ethical principles for autonomous robots, especially autonomous cars, emphasizing the importance of context-sensitive, interdisciplinary approaches and continuous development of ethical guidelines to ensure beneficial societal impact.
Contribution
It provides a set of ethical values and principles for autonomous cars, offering a framework that can be adapted to other autonomous robots and emphasizing stakeholder involvement.
Findings
Proposed ethical principles for autonomous cars.
Highlighted the need for context-sensitive ethical assessments.
Recommended continuous development of ethical guidelines.
Abstract
Development of the intelligent autonomous robot technology presupposes its anticipated beneficial effect on the individuals and societies. In the case of such disruptive emergent technology, not only questions of how to build, but also why to build and with what consequences are important. The field of ethics of intelligent autonomous robotic cars is a good example of research with actionable practical value, where a variety of stakeholders, including the legal system and other societal and governmental actors, as well as companies and businesses, collaborate bringing about shared view of ethics and societal aspects of technology. It could be used as a starting platform for the approaches to the development of intelligent autonomous robots in general, considering human-machine interfaces in different phases of the life cycle of technology - the development, implementation, testing, use…
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Taxonomy
TopicsEthics and Social Impacts of AI · Neuroethics, Human Enhancement, Biomedical Innovations · Adversarial Robustness in Machine Learning
