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Multivariate Hypothesis Testing Methods for Evaluating Significant Individual Change

机译:多变量假设检测方法,用于评估重大个别变化

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摘要

The measurement of individual change has been an important topic in both education and psychology. For instance, teachers are interested in whether students have significantly improved (e.g., learned) from instruction, and counselors are interested in whether particular behaviors have been significantly changed after certain interventions. Although classical test methods have been unable to adequately resolve the problems in measuring change, recent approaches for measuring change have begun to use item response theory (IRT). However, all prior methods mainly focus on testing whether growth is significant at the group level. The present research targets a key research question: Is the change in latent trait estimates for each individual significant across occasions? Many researchers have addressed this research question assuming that the latent trait is unidimensional. This research generalizes their earlier work and proposes four hypothesis testing methods to evaluate individual change on multiple latent traits: a multivariate Z-test, a multivariate likelihood ratio test, a multivariate score test, and a Kullback-Leibler test. Simulation results show that these tests hold promise of detecting individual change with low Type I error and high power. A real-data example from an educational assessment illustrates the application of the proposed methods.
机译:个人变革的衡量是教育和心理学的重要课题。例如,教师对学生在教学中有显着改善(例如,学习)和辅导员是否有兴趣在某些干预措施后有兴趣特殊行为是否受到严重改变。虽然经典测试方法无法充分解决测量变化中的问题,但近期测量变化的方法已经开始使用项目响应理论(IRT)。然而,所有先前的方法都主要关注测试在群体水平上的增长是否显着。目前的研究是一个关键的研究问题:潜在特征估计的变化估计在各种情况下都有重要意义吗?许多研究人员已经解决了这一研究问题,假设潜在特质是单向的。这项研究概括了他们之前的工作,并提出了四个假设检测方法来评估多元潜在特征的个体变化:多变量Z检验,多变量似然比测试,多变量得分测试和耐架 - 雷布勒测试。仿真结果表明,这些测试能够持有检测低类型误差和高功率的个体变化。教育评估中的真实数据示例说明了所提出的方法的应用。

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