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Assortativity coefficient-based estimation of population patterns of sexual mixing when cluster size is informative

机译:当簇的大小可提供信息时,基于分类系数的性混合种群模式估计

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摘要

Objectives: Population sexual mixing patterns can be quantified using Newman's assortativity coefficient (r). Suggested methods for estimating the SE for r may lead to inappropriate statistical conclusions in situations where intracluster correlation is ignored and/or when cluster size is predictive of the response. We describe a computer-intensive, but highly accessible, within-cluster resampling approach for providing a valid large-sample estimated SE for r and an associated 95% CI. Methods: We introduce needed statistical notation and describe the within-cluster resampling approach. Sexual network data and a simulation study were employed to compare within-cluster resampling with standard methods when cluster size is informative. Results: For the analysis of network data when cluster size is informative, the simulation study demonstrates that within-cluster resampling produces valid statistical inferences about Newman's assortativity coefficient, a popular statistic used to quantify the strength of mixing patterns. In contrast, commonly used methods are biased with attendant extremely poor CI coverage. Within-cluster resampling is recommended when cluster size is informative and/or when there is within-cluster response correlation. Conclusions: Within-cluster resampling is recommended for providing valid statistical inferences when applying Newman's assortativity coefficient r to network data.
机译:目标:可以使用纽曼的分类系数(r)来量化人口性别混合模式。在忽略集群内部相关性和/或集群大小可预测响应的情况下,建议的估计SE的方法可能会导致不恰当的统计结论。我们描述了一种计算机密集型但高度可访问的集群内重采样方法,用于为r和相关的95%CI提供有效的大样本估计SE。方法:我们介绍了所需的统计符号并描述了集群内重采样方法。当群集大小可提供信息时,使用性网络数据和模拟研究将群集内重采样与标准方法进行比较。结果:对于在簇大小有用时的网络数据分析,仿真研究表明,簇内重采样可产生有关纽曼分类系数的有效统计推断,该系数是一种流行的统计数据,用于量化混合模式的强度。相比之下,通常使用的方法会伴随着极差的CI覆盖范围而产生偏差。当群集大小可提供信息和/或存在群集内响应相关性时,建议使用群集内重采样。结论:当将纽曼的分类系数r应用于网络数据时,建议使用集群内重采样以提供有效的统计推断。

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