重新采样可以减少实验性社交网络中的偏见放大。

IF 21.4 1区 心理学 Q1 MULTIDISCIPLINARY SCIENCES Nature Human Behaviour Pub Date : 2023-10-16 DOI:10.1038/s41562-023-01715-5
Mathew D. Hardy, Bill D. Thompson, P. M. Krafft, Thomas L. Griffiths
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引用次数: 0

摘要

大规模的社交网络被认为会放大人们的偏见,从而导致两极分化。然而,这些技术的复杂性使得确定责任机制和评估缓解战略变得困难。在这里,我们展示了在受控的实验室条件下,通过社交网络的传播放大了对简单人工决策任务的动机偏见。一项大型行为实验的参与者显示,在40个独立进化的群体中,当作为社会网络的一部分时,相对于非社会参与者,有偏见的决策率增加。根据贝叶斯统计的思想,我们确定了一种对内容选择算法的简单调整,该算法被预测为通过从个人网络中生成更能代表更广泛人群的视角样本来减轻偏见放大。在两个大型实验中,这种策略在保持信息共享优势的同时,有效地减少了偏见放大。仿真结果表明,该算法在更复杂的网络中也是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Resampling reduces bias amplification in experimental social networks
Large-scale social networks are thought to contribute to polarization by amplifying people’s biases. However, the complexity of these technologies makes it difficult to identify the mechanisms responsible and evaluate mitigation strategies. Here we show under controlled laboratory conditions that transmission through social networks amplifies motivational biases on a simple artificial decision-making task. Participants in a large behavioural experiment showed increased rates of biased decision-making when part of a social network relative to asocial participants in 40 independently evolving populations. Drawing on ideas from Bayesian statistics, we identify a simple adjustment to content-selection algorithms that is predicted to mitigate bias amplification by generating samples of perspectives from within an individual’s network that are more representative of the wider population. In two large experiments, this strategy was effective at reducing bias amplification while maintaining the benefits of information sharing. Simulations show that this algorithm can also be effective in more complex networks. Hardy and co-authors present a resampling strategy in social networks that is effective at reducing bias amplification while maintaining the benefits of information sharing.
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来源期刊
Nature Human Behaviour
Nature Human Behaviour Psychology-Social Psychology
CiteScore
36.80
自引率
1.00%
发文量
227
期刊介绍: Nature Human Behaviour is a journal that focuses on publishing research of outstanding significance into any aspect of human behavior.The research can cover various areas such as psychological, biological, and social bases of human behavior.It also includes the study of origins, development, and disorders related to human behavior.The primary aim of the journal is to increase the visibility of research in the field and enhance its societal reach and impact.
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