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Investigation of Rater Effects Using Social Network Analysis and Exponential Random Graph Models

机译:利用社会网络分析和指数随机图模型调查患者效应

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摘要

It is common practice for assessment programs to organize qualifying sessions during which the raters (often known as markers or judges) demonstrate their consistency before operational rating commences. Because of the high-stakes nature of many rating activities, the research community tends to continuously explore new methods to analyze rating data. We used simulated and empirical data from two high-stakes language assessments, to propose a new approach, based on social network analysis and exponential graph models, to evaluate the readiness of a group of raters for operational rating. The results of this innovative approach are compared with the results of a Rasch analysis, which is a well-established approach for the analysis of such data. We also demonstrate how the new approach can be practically used to investigate important research questions such as whether rater severity is stable across rating tasks. The merits of the new approach, and the consequences for practice are discussed.
机译:评估计划是常规做法,以组织资格赛,其中评级(通常称为标记或法官)在运营评级开始之前展示了它们的一致性。由于许多评级活动的高赌注性质,研究界往往不断探索分析评级数据的新方法。我们使用两种高赌注语言评估的模拟和经验数据,提出了一种基于社交网络分析和指数图模型的新方法,以评估一组评级的可操作者进行操作等级。这种创新方法的结果与Rasch分析的结果进行了比较,这是一种熟悉的分析这些数据的方法。我们还展示了新方法如何实际上用于调查重要的研究问题,例如Rater严重程度跨评级任务稳定。讨论了新方法的优点,以及对实践的后果。

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