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Memory Transmission in Small Groups and Large Networks: An Agent-Based Model

机译:小型组和大型网络中的内存传输:基于代理的模型

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摘要

The spread of social influence in large social networks has long been an interest of social scientists. In the domain of memory, collaborative memory experiments have illuminated cognitive mechanisms that allow information to be transmitted between interacting individuals, but these experiments have focused on small-scale social contexts. In the current study, we took a computational approach, circumventing the practical constraints of laboratory paradigms and providing novel results at scales unreachable by laboratory methodologies. Our model embodied theoretical knowledge derived from small-group experiments and replicated foundational results regarding collaborative inhibition and memory convergence in small groups. Ultimately, we investigated large-scale, realistic social networks and found that agents are influenced by the agents with which they interact, but we also found that agents are influenced by nonneighbors (i.e., the neighbors of their neighbors). The similarity between these results and the reports of behavioral transmission in large networks offers a major theoretical insight by linking behavioral transmission to the spread of information.
机译:长期以来,社会影响力在大型社交网络中的传播一直是社会科学家的兴趣所在。在记忆领域,协作记忆实验已经阐明了认知机制,该机制允许信息在交互的个人之间传输,但是这些实验的重点是小规模的社会环境。在当前的研究中,我们采用了一种计算方法,规避了实验室范式的实际约束,并提供了实验室方法无法达到的新颖结果。我们的模型体现了从小组实验中获得的理论知识,并复制了关于小组合作抑制和记忆融合的基础结果。最终,我们调查了大规模的,现实的社交网络,发现代理受他们与之交互的代理的影响,但我们也发现代理受非邻居(即邻居的邻居)的影响。这些结果与大型网络中的行为传播报告之间的相似性通过将行为传播与信息传播联系起来,提供了重要的理论见解。

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