网络媒体中的年龄和性别扭曲与大型语言模式。

IF 48.5 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Nature Pub Date : 2025-10-08 DOI:10.1038/s41586-025-09581-z
Douglas Guilbeault,Solène Delecourt,Bhargav Srinivasa Desikan
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引用次数: 0

摘要

普遍的刻板印象是准确的还是社会扭曲的?由于缺乏关于陈规定型关联的大规模多模态数据,以及无法将这些数据与基础真实指标进行比较,这种持续的辩论受到限制。在此,我们克服了这些挑战,分析了年龄相关的性别偏见7-9,年龄为评估刻板印象的准确性提供了一个客观的锚点。尽管根据美国人口普查,劳动力中男女之间没有系统的年龄差异,但我们发现,在b谷歌、维基百科、IMDb、Flickr和YouTube上的近140万张图片和视频中,以及在互联网上经过数十亿单词训练的9种语言模型中,女性在职业和社会角色上都比男性年轻。在描述地位和收入较高的职业的内容中,这种年龄差距最为明显。我们展示了主流算法是如何放大这种偏见的。一项具有全国代表性的预注册实验(n = 459)发现,在谷歌上搜索职业图片会放大参与者在信仰和招聘偏好方面与年龄相关的性别偏见。此外,在生成和评估简历时,ChatGPT会假设女性更年轻、经验更少,从而将年龄较大的男性求职者评价为更高的素质。我们的研究表明,性别和年龄是如何在互联网及其中介算法中共同扭曲的,从而揭示了与不平等作斗争的关键挑战和机遇。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Age and gender distortion in online media and large language models.
Are widespread stereotypes accurate1-3 or socially distorted4-6? This continuing debate is limited by the lack of large-scale multimodal data on stereotypical associations and the inability to compare these to ground truth indicators. Here we overcame these challenges in the analysis of age-related gender bias7-9, for which age provides an objective anchor for evaluating stereotype accuracy. Despite there being no systematic age differences between women and men in the workforce according to the US Census, we found that women are represented as younger than men across occupations and social roles in nearly 1.4 million images and videos from Google, Wikipedia, IMDb, Flickr and YouTube, as well as in nine language models trained on billions of words from the internet. This age gap is the starkest for content depicting occupations with higher status and earnings. We demonstrate how mainstream algorithms amplify this bias. A nationally representative pre-registered experiment (n = 459) found that Googling images of occupations amplifies age-related gender bias in participants' beliefs and hiring preferences. Furthermore, when generating and evaluating resumes, ChatGPT assumes that women are younger and less experienced, rating older male applicants as of higher quality. Our study shows how gender and age are jointly distorted throughout the internet and its mediating algorithms, thereby revealing critical challenges and opportunities in the fight against inequality.
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来源期刊
Nature
Nature 综合性期刊-综合性期刊
CiteScore
90.00
自引率
1.20%
发文量
3652
审稿时长
3 months
期刊介绍: Nature is a prestigious international journal that publishes peer-reviewed research in various scientific and technological fields. The selection of articles is based on criteria such as originality, importance, interdisciplinary relevance, timeliness, accessibility, elegance, and surprising conclusions. In addition to showcasing significant scientific advances, Nature delivers rapid, authoritative, insightful news, and interpretation of current and upcoming trends impacting science, scientists, and the broader public. The journal serves a dual purpose: firstly, to promptly share noteworthy scientific advances and foster discussions among scientists, and secondly, to ensure the swift dissemination of scientific results globally, emphasizing their significance for knowledge, culture, and daily life.
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