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运用多层网络分析探索集体行为的时间动态。

Using multilayer network analysis to explore the temporal dynamics of collective behavior.

作者信息

Fisher David N, Pinter-Wollman Noa

机构信息

Department of Psychology, Neuroscience, & Behaviour, McMaster University, Hamilton, ON L8S 4K1, Canada.

School of Biological Sciences, University of Aberdeen, Aberdeen, AB24 3FX, UK.

出版信息

Curr Zool. 2021 Feb;67(1):71-80. doi: 10.1093/cz/zoaa050. Epub 2020 Sep 2.

Abstract

Social organisms often show collective behaviors such as group foraging or movement. Collective behaviors can emerge from interactions between group members and may depend on the behavior of key individuals. When social interactions change over time, collective behaviors may change because these behaviors emerge from interactions among individuals. Despite the importance of, and growing interest in, the temporal dynamics of social interactions, it is not clear how to quantify changes in interactions over time or measure their stability. Furthermore, the temporal scale at which we should observe changes in social networks to detect biologically meaningful changes is not always apparent. Here we use multilayer network analysis to quantify temporal dynamics of social networks of the social spider and determine how these dynamics relate to individual and group behaviors. We found that social interactions changed over time at a constant rate. Variation in both network structure and the identity of a keystone individual was not related to the mean or variance of the collective prey attack speed. Individuals that maintained a large and stable number of connections, despite changes in network structure, were the boldest individuals in the group. Therefore, social interactions and boldness are linked across time, but group collective behavior is not influenced by the stability of the social network. Our work demonstrates that dynamic social networks can be modeled in a multilayer framework. This approach may reveal biologically important temporal changes to social structure in other systems.

摘要

社会性生物常常表现出诸如群体觅食或移动等集体行为。集体行为可能源自群体成员之间的相互作用,并且可能取决于关键个体的行为。当社会互动随时间变化时,集体行为可能会改变,因为这些行为是由个体之间的相互作用产生的。尽管社会互动的时间动态具有重要性且人们对其兴趣与日俱增,但目前尚不清楚如何量化互动随时间的变化或衡量其稳定性。此外,为了检测具有生物学意义的变化,我们应该在何种时间尺度上观察社会网络的变化,这一点也并不总是显而易见的。在此,我们使用多层网络分析来量化社会性蜘蛛社会网络的时间动态,并确定这些动态如何与个体和群体行为相关联。我们发现社会互动随时间以恒定速率变化。网络结构和关键个体身份的变化均与集体猎物攻击速度的均值或方差无关。尽管网络结构发生了变化,但仍保持大量且稳定连接数量的个体是群体中最胆大的个体。因此,社会互动和大胆程度在时间上是相关联的,但群体集体行为不受社会网络稳定性的影响。我们的研究表明,动态社会网络可以在多层框架中进行建模。这种方法可能会揭示其他系统中社会结构在生物学上的重要时间变化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/87b7/7901757/2bd60c2d938b/zoaa050f1.jpg

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