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How Many People Do You Know in Prison?: Using Overdispersion in Count Data to Estimate Social Structure in Networks

机译:您在监狱中认识多少人?:使用计数数据的过度分散来估计网络中的社会结构

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Networks—sets of objects connected by relationships—are important in a number of fields. The study of networks has long been central to sociology, where researchers have attempted to understand the causes and consequences of the structure of relationships in large groups of people. Using insight from previous network research, Killworth et al. and McCarty et al. have developed and evaluated a method for estimating the sizes of hard-to-count populations using network data collected from a simple random sample of Americans. In this article we show how, using a multilevel overdispersed Poisson regression model, these data also can be used to estimate aspects of social structure in the population. Our work goes beyond most previous research on networks by using variation, as well as average responses, as a source of information. We apply our method to the data of McCarty et al. and find that Americans vary greatly in their number of acquaintances. Further, Americans show great variation in propensity to form ties to people in some groups (e.g., males in prison, the homeless, and American Indians), but little variation for other groups (e.g., twins, people named Michael or Nicole). We also explore other features of these data and consider ways in which survey data can be used to estimate network structure.
机译:网络(通过关系连接的对象集)在许多领域中都很重要。长期以来,网络研究一直是社会学的核心,研究人员试图了解大型人群中人际关系结构的成因和后果。利用先前网络研究的见识,Killworth等人。和McCarty等。已经开发并评估了一种方法,该方法使用从简单的美国人随机样本中收集的网络数据来估算难以计数的人口规模。在本文中,我们展示了如何使用多级过度分散的Poisson回归模型,将这些数据用于估计人口中社会结构的各个方面。通过使用变异以及平均响应作为信息源,我们的工作超出了以往对网络的大多数研究。我们将我们的方法应用于McCarty等人的数据。并且发现美国人的相识数量差异很大。此外,美国人在与某些群体中的人建立联系的倾向上显示出很大的差异(例如,监狱中的男性,无家可归者和美洲印第安人),而其他群体(例如,双胞胎,名为迈克尔或妮可的人)则没有什么变化。我们还探索了这些数据的其他功能,并考虑了可将调查数据用于估算网络结构的方式。

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