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A foundation for developing a methodology for social network sampling

机译:开发社交网络抽样方法的基础

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Researchers are increasingly turning to network theory to understand the social nature of animal populations. We present a computational framework that is the first step in a series of works that will allow us to develop a quantitative methodology of social network sampling to aid ecologists in their social network data collection. To develop our methodology, we need to be able to generate networks from which to sample. Ideally, we need to perform a systematic study of sampling protocols on different known network structures, as network structure might affect the robustness of any particular sampling methodology. Thus, we present a computational tool for generating network structures that have user-defined distributions for network properties and for key measures of interest to ecologists. The user defines the values of these measures and the tool will generate appropriate network randomizations with those properties. This tool will be used as a framework for developing a sampling methodology, although we do not present a full methodology here. We describe the method used by the tool, demonstrate its effectiveness, and discuss how the tool can now be utilized. We provide a proof-of-concept example (using the assortativity measure) of how such networks can be used, along with a simulated egocentric sampling regime, to test the level of equivalence of the sampled network to the actual network.
机译:研究人员越来越多地转向网络理论来理解动物种群的社会本质。我们提出了一个计算框架,这是一系列工作的第一步,这将使我们能够开发社交网络采样的定量方法,以帮助生态学家进行社交网络数据收集。为了开发我们的方法,我们需要能够生成从中进行采样的网络。理想情况下,我们需要对不同已知网络结构上的采样协议进行系统研究,因为网络结构可能会影响任何特定采样方法的鲁棒性。因此,我们提出了一种计算工具,用于生成具有用户定义的网络属性和生态学家感兴趣的关键度量的用户定义分布的网络结构。用户定义这些度量的值,该工具将使用这些属性生成适当的网络随机化。该工具将用作开发抽样方法的框架,尽管我们在此不介绍完整的方法。我们描述了该工具使用的方法,展示了其有效性,并讨论了现在如何利用该工具。我们提供了一个概念证明示例(使用分类度量),说明了如何使用此类网络以及模拟的以自我为中心的采样方案,以测试采样网络与实际网络的等效水平。

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