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Challenging Systematic Prejudices: An Investigation into Bias Against Women and Girls in Large Language Models
出版地 | 出版年份 | 页数: 
Paris, Ljublijana | 2024 | 20 p.
作者: 
Daniel van Niekerk et al.
联合作者: 
UNESCO; International Research Centre on Artificial Intelligence (IRCAI)
地区: 
全球范围

This study explores biases in three significant large language models (LLMs): OpenAI’s GPT-2 and ChatGPT, along with Meta’s Llama 2, highlighting their role in both advanced decision-making systems and as user-facing conversational agents. Across multiple studies, the brief reveals how biases emerge in the text generated by LLMs, through gendered word associations, positive or negative regard for gendered subjects, or diversity in text generated by gender and culture. The research uncovers persistent social biases within these state-of-the-art language models, despite ongoing efforts to mitigate such issues. The findings underscore the critical need for continuous research and policy intervention to address the biases that exacerbate as these technologies are integrated across diverse societal and cultural landscapes. The emphasis on GPT-2 and Llama 2 being open-source foundational models is particularly noteworthy, as their widespread adoption underlines the urgent need for scalable, objective methods to assess and correct biases, ensuring fairness in AI systems globally.

文件: 
资源类型: 
会议和项目报告
主题: 
人权
媒体与信息素养 / 数字公民素养
教育水平 : 
幼儿保育
小学
初中
高中
终身学习
职业教育培训
非正规教育
关键词: 
Artificial intelligence
AI
Gender stereotypes
Prejudice
Languages