Recent work in natural language processing (NLP) has focused on ethical challenges such as understanding and mitigating bias in data and algorithms; identifying objectionable content like hate speech, stereotypes and offensive language; and building frameworks for better system design and data handling practices. However, there has been little discussion about the ethical foundations that underlie these efforts. In this work, we study one ethical theory, namely deontological ethics, from the perspective of NLP. In particular, we focus on the generalization principle and the respect for autonomy through informed consent. We provide four case studies to demonstrate how these principles can be used with NLP systems. We also recommend directions to avoid the ethical issues in these systems.
翻译:自然语言处理(NLP)最近的工作侧重于伦理挑战,如理解和减少数据和算法中的偏见;查明仇恨言论、陈规定型观念和冒犯性语言等令人反感的内容;为更好的系统设计和数据处理做法建立框架;然而,关于这些努力所依据的道德基础的讨论很少;在这项工作中,我们从NLP的角度研究一个伦理理论,即道德伦理学。我们尤其侧重于普遍化原则和通过知情同意尊重自治。我们提供了四个案例研究,以表明这些原则如何在NLP系统中应用。我们还建议如何避免这些系统中的道德问题。