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Automated monitoring of behavior reveals bursty interaction patterns and rapid spreading dynamics in honeybee social networks

机译:行为的自动监视揭示了蜜蜂社交网络中突发的交互模式和快速传播的动态

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摘要

Social networks mediate the spread of information and disease. The dynamics of spreading depends, among other factors, on the distribution of times between successive contacts in the network. Heavy-tailed (bursty) time distributions are characteristic of human communication networks, including face-to-face contacts and electronic communication via mobile phone calls, email, and internet communities. Burstiness has been cited as a possible cause for slow spreading in these networks relative to a randomized reference network. However, it is not known whether burstiness is an epiphenomenon of human-specific patterns of communication. Moreover, theory predicts that fast, bursty communication networks should also exist. Here, we present a high-throughput technology for automated monitoring of social interactions of individual honeybees and the analysis of a rich and detailed dataset consisting of more than 1.2 million interactions in five honeybee colonies. We find that bees, like humans, also interact in bursts but that spreading is significantly faster than in a randomized reference network and remains so even after an experimental demographic perturbation. Thus, while burstiness may be an intrinsic property of social interactions, it does not always inhibit spreading in real-world communication networks. We anticipate that these results will inform future models of large-scale social organization and information and disease transmission, and may impact health management of threatened honeybee populations.
机译:社交网络介导了信息和疾病的传播。除其他因素外,扩展的动态取决于网络中连续联系人之间时间的分布。重尾(突发)时间分布是人类通信网络的特征,包括面对面的联系以及通过移动电话,电子邮件和互联网社区进行的电子通信。相对于随机参考网络,突发性被认为是这些网络中缓慢传播的可能原因。但是,不知道突发性是否是特定于人类的通信模式的现象。此外,理论预测还应该存在快速,突发的通信网络。在这里,我们提出了一种高通量技术,用于自动监视单个蜜蜂的社交互动,并分析丰富而详细的数据集,该数据集由五个蜜蜂殖民地中的超过120万个互动组成。我们发现,蜜蜂与人类一样,也可以爆发性地相互作用,但是传播比随机参考网络中的传播要快得多,即使在经过实验性的人口统计学扰动后,传播也是如此。因此,尽管突发性可能是社交互动的固有属性,但它并不总是抑制现实世界中通信网络中的传播。我们预期这些结果将为大规模社会组织,信息和疾病传播的未来模型提供参考,并可能影响受威胁蜜蜂种群的健康管理。

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