生成语法
工程伦理学
伦理问题
管理科学
钥匙(锁)
伦理理论
计算机科学
知识管理
政治学
生成模型
风险管理
风险分析(工程)
业务
作者
Yutan Huang,Chetan Arora,Wen Cheng Huong,Tanjila Kanij,Anuradha Madugalla,John Grundy
标识
DOI:10.1016/j.asoc.2026.114789
摘要
Generative AI technologies, particularly Large Language Models (LLMs), have transformed numerous domains by enhancing convenience and efficiency in information retrieval, content generation, and decision-making processes. However, deploying LLMs also presents diverse ethical challenges, and their mitigation strategies remain complex and domain-dependent. This paper aims to identify and categorise the key ethical concerns associated with using LLMs, examine existing mitigation strategies, and assess the outstanding challenges in implementing these strategies across various domains. We conducted a systematic mapping study, reviewing 39 studies that discuss ethical concerns and mitigation strategies related to LLMs. We analysed these ethical concerns using five ethical dimensions we extracted from various existing guidelines and frameworks, along with an analysis of mitigation strategies and implementation challenges. Our findings reveal that ethical concerns in LLMs are multi-dimensional and context-dependent. While proposed mitigation strategies address some of these concerns, significant challenges still remain. Our results highlight that ethical issues often hinder the practical implementation of mitigation strategies, particularly in high-stakes areas such as healthcare and public governance. Existing frameworks are often inflexible, failing to accommodate evolving societal expectations and diverse contexts.
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