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A Note on the Usefulness of the Behavioural Rasch Selection Model for Causal Inference in the Social Sciences

机译:关于社会科学因果推断的行为Rasch选择模型的有用性的说明

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Social scientists are often interested in examining causal relationships where the outcome of interest is represented by an intangible concept, such as an individual's well-being or ability. Estimating causal relationships in this scenario is particularly challenging because the social scientist must rely on measurement models to measure individual's properties or attributes and then address issues related to survey data, such as omitted variables. In this paper, the usefulness of the recently proposed behavioural Rasch selection model is explored using a series of Monte Carlo experiments. The behavioural Rasch selection model is particularly useful for these types of applications because it is capable of estimating the causal effect of a binary treatment effect on an outcome that is represented by an intangible concept using cross-sectional data. Other methodology typically relies of summary measures from measurement models that require additional assumptions, some of which make these approaches less efficient. Recommendations for application of the behavioural Rasch selection model are made based on results from the Monte Carlo experiments.
机译:社会科学家往往对检查感兴趣结果的因果关系是有兴趣的,这些关系是由无形的概念所代表的,例如个人的福祉或能力。估计这种情况下的因果关系尤其具有挑战性,因为社会科学家必须依赖测量模型来衡量个人的属性或属性,然后解决与调查数据相关的问题,例如省略的变量。在本文中,利用一系列蒙特卡罗实验探索了最近提出的行为Rasch选择模型的有用性。行为Rasch选择模型对这些类型的应用特别有用,因为它能够估计二元治疗效果对使用横截面数据表示的结果的结果。其他方法通常依赖于需要额外假设的测量模型的简要措施,其中一些方法使这些方法效率较低。基于Monte Carlo实验的结果进行了用于应用行为Rasch选择模型的建议。

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