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Causal inference in collaboration networks using propensity score methods

机译:使用倾向分数方法的协作网络的因果推断

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Using panel data of school-class networks of 11-13-year-old students, this study investigates effects of schoolwork collaboration-networks on grades and school-related well-being. It suggests propensity score weighting-regression as a method of causal inference for data collected in social contexts, and in studies analyzing node-attributes as outcomes of interest. It will argued that this alternative approach is useful when stochastic actor-based models (SAOMs) show convergence problems in sparse networks. Three methods of causal analysis dealing with the problems of endogeneity bias and interference between observations will be discussed in this study: first, SAOMs for the co-evolution of networks and behavior/attitudes will be estimated, but this results in a systematic loss of data. Second, propensity score matching compares treated cases with untreated nearest neighbors. However, the stable-unit-treatment-value assumption (SUTVA) requires that the analysis controls for network embeddedness in the final analysis. This is possible by using propensity score weighting-regression, which is a flexible approach to capture treatment diffusion via multiplex networks.
机译:本研究使用11-13岁学生的班级网络面板数据,调查了学业协作网络对年级和学校相关幸福感的影响。它建议倾向评分加权回归作为一种因果推断方法,用于在社会环境中收集的数据,以及在分析节点属性作为感兴趣结果的研究中。本文认为,当基于随机参与者的模型(SAOM)在稀疏网络中出现收敛问题时,这种替代方法是有用的。本研究将讨论三种因果分析方法,它们处理内生性偏差和观察结果之间的干扰问题:首先,将估计网络和行为/态度共同进化的SAOM,但这会导致数据的系统性丢失。第二,倾向评分匹配将接受治疗的病例与未接受治疗的近邻进行比较。然而,稳定单位处理价值假设(SUTVA)要求分析在最终分析中控制网络嵌入性。这可以通过使用倾向评分加权回归实现,这是一种通过多重网络捕捉治疗扩散的灵活方法。

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