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首页> 外文期刊>Behavioral Ecology and Sociobiology >Simulation of information propagation in real-life primate networks: longevity, fecundity, fidelity
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Simulation of information propagation in real-life primate networks: longevity, fecundity, fidelity

机译:真实的灵长类动物网络中信息传播的仿真:寿命,繁殖力,保真度

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摘要

In many vertebrate species, we find temporally stable traditions of socially learned behaviors. The social structure of animal populations is highly diverse and it has been proposed that differences in the social organization influence the patterns of information propagation. Here, we provide results of a simulation study of information propagation on real-life social networks of 70 primate groups comprising 30 different species. We found that models that include the social structure of a group differ significantly from those that assume random associations of individuals. Information spreads slower in the structured groups than in the well-mixed groups. While we found only a minor effect on the path lengths of the transmission chains, robustness against information extinction was strongly influenced by the group structure. Interestingly, robustness against information loss was not correlated with propagation speed but could be predicted reasonably well by relative strength assortativity—a structural network metric. In those groups where highly pro-social individuals preferentially interact with other pro-social individuals, information was more likely to be lost. Our results show that incorporating group structure in any social propagation model significantly alters predictions for spreading patterns, speed, and robustness of information.
机译:在许多脊椎动物中,我们发现了社会学习行为在时间上稳定的传统。动物种群的社会结构高度多样化,有人提出社会组织的差异会影响信息传播的模式。在这里,我们提供了对包含30个不同物种的70个灵长类动物群体的现实社会网络上的信息传播进行仿真研究的结果。我们发现,包括一个群体的社会结构的模型与那些假定个人是随机关联的模型有很大的不同。在结构化组中,信息传播比在混合型组中传播慢。虽然我们发现对传输链的路径长度影响不大,但针对信息消灭的鲁棒性却受到组结构的强烈影响。有趣的是,针对信息丢失的鲁棒性与传播速度无关,但可以通过相对强度分类法(一种结构网络指标)合理地预测。在那些高度亲社会人士优先与其他亲社会人士互动的群体中,信息更有可能丢失。我们的结果表明,在任何社会传播模型中纳入群体结构都会大大改变对信息传播方式,速度和鲁棒性的预测。

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