Beyond Fairness and Explanation
Bertram F. Malle
- 发表年份
- 2022
- 引用次数
- 2
摘要
The topics of fairness and explainability have dominated recent discussions of ethical AI. However, these are only two criteria that would make artificial agents anywhere close to ethical. I frame the question of ethical AI, and especially ethical social robots, as the question of what would make them worthy of human trust and actually eliciting human trust. Relying on a recent investigation of the multi-dimensionality of human trust, I lay out five criteria of trustworthiness-being competent, reliable, transparent, benevolent, and having ethical integrity. I will argue that an essential ingredient of such trustworthiness is norm competence-the ability to represent, comply with, and learn relevant social-moral norms (including fairness as one among many). I discuss the challenges to implementing norm competence and the critical role that justification, not just explanation, will play in providing evidence for such competence.
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