Adaptive link dynamics drive online hate networks and their mainstream influence

Minzhang Zheng, Richard F. Sear, Lucia Illari, Nicholas J. Restrepo, Neil F. Johnson
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Abstract

Online hate is dynamic, adaptive— and may soon surge with new AI/GPT tools. Establishing how hate operates at scale is key to overcoming it. We provide insights that challenge existing policies. Rather than large social media platforms being the key drivers, waves of adaptive links across smaller platforms connect the hate user base over time, fortifying hate networks, bypassing mitigations, and extending their direct influence into the massive neighboring mainstream. Data indicates that hundreds of thousands of people globally, including children, have been exposed. We present governing equations derived from first principles and a tipping-point condition predicting future surges in content transmission. Using the U.S. Capitol attack and a 2023 mass shooting as case studies, our findings offer actionable insights and quantitative predictions down to the hourly scale. The efficacy of proposed mitigations can now be predicted using these equations.

Abstract Image

自适应链接动态驱动网络仇恨及其主流影响
网络仇恨是动态的、适应性强的,而且可能很快就会随着新的人工智能/GPT 工具而激增。确定仇恨是如何大规模运作的,是战胜仇恨的关键。我们提供了挑战现有政策的见解。与其说大型社交媒体平台是主要驱动力,不如说是较小平台上一波又一波的适应性链接随着时间的推移将仇恨用户群连接起来,强化仇恨网络,绕过缓解措施,并将其直接影响扩展到大规模的邻近主流。数据显示,全球已有包括儿童在内的数十万人受到影响。我们提出了从第一原理推导出的支配方程,以及预测未来内容传输激增的临界点条件。以美国国会大厦袭击事件和 2023 年的大规模枪击事件为案例,我们的研究结果提供了可操作的见解,并对每小时的规模进行了定量预测。现在可以利用这些方程式预测建议的缓解措施的效果。
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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