首页> 外文期刊>Behavioral Ecology and Sociobiology >Social network dynamics: the importance of distinguishing between heterogeneous and homogeneous changes
【24h】

Social network dynamics: the importance of distinguishing between heterogeneous and homogeneous changes

机译:社交网络动态:区分异构变化和同类变化的重要性

获取原文
获取原文并翻译 | 示例
           

摘要

Social network analysis is increasingly applied to understand the evolution of animal sociality. Identifying ecological and evolutionary drivers of complex social structures requires inferring how social networks change over time. In most observational studies, sampling errors may affect the apparent network structures. Here, we argue that existing approaches tend not to control sufficiently for some types of sampling errors when social networks change over time. Specifically, we argue that two different types of changes may occur in social networks, heterogeneous and homogeneous changes, and that understanding network dynamics requires distinguishing between these two different types of changes, which are not mutually exclusive. Heterogeneous changes occur if relationships change differentially, e.g., if some relationships are terminated but others remain intact. Homogeneous changes occur if all relationships are proportionally affected in the same way, e.g., if grooming rates decline similarly across all dyads. Homogeneous declines in the strength of relationships can strongly reduce the probability of observing weak relationships, producing the appearance of heterogeneous network changes. Using simulations, we confirm that failing to differentiate homogeneous and heterogeneous changes can potentially lead to false conclusions about network dynamics. We also show that bootstrap tests fail to distinguish between homogeneous and heterogeneous changes. As a solution to this problem, we show that an appropriate randomization test can infer whether heterogeneous changes occurred. Finally, we illustrate the utility of using the randomization test by performing an example analysis using an empirical data set on wild baboons.
机译:社交网络分析越来越多地用于了解动物社交的演变。确定复杂社会结构的生态和进化驱动因素,需要推断社交网络如何随着时间而变化。在大多数观察性研究中,采样误差可能会影响表观网络结构。在这里,我们认为,当社交网络随时间变化时,对于某些类型的抽样错误,现有方法往往无法充分控制。具体来说,我们认为社交网络中可能发生两种不同类型的变化,即异质性变化和同类变化,并且了解网络动态需要区分这两种不同类型的变化,而这两种变化不是互斥的。如果关系差异地变化,例如,如果某些关系终止而另一些保持不变,则发生异构变化。如果所有关系都以相同的方式成比例地受到影响,例如,如果修饰率在所有二元组中相似地下降,则会发生同质变化。关系强度的同质下降可以大大降低观察弱关系的可能性,从而产生异构网络变化的外观。使用模拟,我们确认未能区分同质变化和异质变化可能导致有关网络动态的错误结论。我们还显示自举测试无法区分同质变化和异质变化。作为此问题的解决方案,我们表明适当的随机检验可以推断是否发生了异质变化。最后,我们通过使用关于野生狒狒的经验数据集进行示例分析来说明使用随机检验的效用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号