Alberto Giubilini, Sebastian Porsdam Mann, Cristina Voinea, Brian Earp, Julian Savulescu
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引用次数: 0
摘要
在本文中,我们建议,根据个人撰写的信息或与个人相关的信息训练的个性化 LLM 可以作为人工道德顾问(AMA),考虑到个人道德的动态性质。这些基于 LLM 的人工道德顾问将利用用户过去和现在的数据来推断和明确他们有时会改变的价值观和偏好,从而促进自我认知。此外,这些系统还可以帮助用户反思自己想成为什么样的人,以及成为这样的人所需采取的行动和实现的目标,从而帮助用户进行自我创造。在技术进一步发展之前,提供这种个性化道德见解的 LLM 的可行性仍不确定。不过,我们认为,这种方法解决了现有的基于预先确定的价值观或内省式自我认识的 AMA 方案的局限性。
Know Thyself, Improve Thyself: Personalized LLMs for Self-Knowledge and Moral Enhancement.
In this paper, we suggest that personalized LLMs trained on information written by or otherwise pertaining to an individual could serve as artificial moral advisors (AMAs) that account for the dynamic nature of personal morality. These LLM-based AMAs would harness users' past and present data to infer and make explicit their sometimes-shifting values and preferences, thereby fostering self-knowledge. Further, these systems may also assist in processes of self-creation, by helping users reflect on the kind of person they want to be and the actions and goals necessary for so becoming. The feasibility of LLMs providing such personalized moral insights remains uncertain pending further technical development. Nevertheless, we argue that this approach addresses limitations in existing AMA proposals reliant on either predetermined values or introspective self-knowledge.
期刊介绍:
Science and Engineering Ethics is an international multidisciplinary journal dedicated to exploring ethical issues associated with science and engineering, covering professional education, research and practice as well as the effects of technological innovations and research findings on society.
While the focus of this journal is on science and engineering, contributions from a broad range of disciplines, including social sciences and humanities, are welcomed. Areas of interest include, but are not limited to, ethics of new and emerging technologies, research ethics, computer ethics, energy ethics, animals and human subjects ethics, ethics education in science and engineering, ethics in design, biomedical ethics, values in technology and innovation.
We welcome contributions that deal with these issues from an international perspective, particularly from countries that are underrepresented in these discussions.