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Algorithmic bias amplifies opinion fragmentation and polarization: A bounded confidence model

机译:算法偏差会加剧意见分歧和两极分化:有界置信度模型

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摘要

The flow of information reaching us via the online media platforms is optimized not by the information content or relevance but by popularity and proximity to the target. This is typically performed in order to maximise platform usage. As a side effect, this introduces an algorithmic bias that is believed to enhance fragmentation and polarization of the societal debate. To study this phenomenon, we modify the well-known continuous opinion dynamics model of bounded confidence in order to account for the algorithmic bias and investigate its consequences. In the simplest version of the original model the pairs of discussion participants are chosen at random and their opinions get closer to each other if they are within a fixed tolerance level. We modify the selection rule of the discussion partners: there is an enhanced probability to choose individuals whose opinions are already close to each other, thus mimicking the behavior of online media which suggest interaction with similar peers. As a result we observe: a) an increased tendency towards opinion fragmentation, which emerges also in conditions where the original model would predict consensus, b) increased polarisation of opinions and c) a dramatic slowing down of the speed at which the convergence at the asymptotic state is reached, which makes the system highly unstable. Fragmentation and polarization are augmented by a fragmented initial population.
机译:通过在线媒体平台到达我们的信息流不是通过信息内容或相关性而是通过受欢迎程度和与目标的接近程度来优化的。通常执行此操作是为了最大化平台使用率。副作用是,这引入了算法偏见,据信这种偏见会加剧社会辩论的分裂和两极分化。为了研究这种现象,我们修改了众所周知的有界置信度连续意见动态模型,以解决算法偏差并调查其后果。在原始模型的最简单版本中,随机选择一对讨论参与者,如果他们在固定的容忍度范围内,他们的观点就会彼此接近。我们修改了讨论伙伴的选择规则:选择观点彼此接近的个人的可能性更高,从而模仿了暗示与相似同行互动的在线媒体的行为。结果,我们观察到:a)意见分歧的趋势增加,这也出现在原始模型可以预测共识的情况下; b)意见分歧加剧; c)意见分歧趋同的速度急剧下降。达到渐近状态,使系统高度不稳定。零散的初始种群加剧了碎片化和极化。

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