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首页> 外文期刊>Advances in health sciences education: theory and practice >Using multivariate generalizability theory to assess the effect of content stratification on the reliability of a performance assessment.
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Using multivariate generalizability theory to assess the effect of content stratification on the reliability of a performance assessment.

机译:使用多元概化理论来评估内容分层对绩效评估可靠性的影响。

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摘要

In recent years, demand for performance assessments has continued to grow. However, performance assessments are notorious for lower reliability, and in particular, low reliability resulting from task specificity. Since reliability analyses typically treat the performance tasks as randomly sampled from an infinite universe of tasks, these estimates of reliability may not be accurate. For tests built according to a table of specifications, tasks are randomly sampled from different strata (content domains, skill areas, etc.). If these strata remain fixed in the test construction process, ignoring this stratification in the reliability analysis results in an underestimate of parallel forms component. This research explores the effect of representing and misrepresenting the stratification appropriately in estimation of reliability and the standard error of measurement. Both multivariate and univariate generalizability studies are reported. Results indicate that the proper specification of the analytic design is essential in yielding the proper information both about the generalizability of the assessment and the standard error of measurement. Further, illustrative D studies present the effect under a variety of situations and test designs. Additional benefits of multivariate generalizability theory in test design and evaluation are also discussed.
机译:近年来,对绩效评估的需求持续增长。但是,性能评估因可靠性较低而臭名昭著,尤其是任务特殊性导致可靠性较低。由于可靠性分析通常将性能任务视为从无限的任务范围中随机抽取的,因此这些可靠性估计可能不准确。对于根据规范表构建的测试,任务是从不同层次(内容域,技能领域等)中随机抽样的。如果这些层次在测试构建过程中保持固定,则在可靠性分析中忽略此层次将导致并行表单组件的估计不足。这项研究探索了正确表示和错误表示分层在估计可靠性和测量标准误差中的作用。报道了多变量和单变量概论研究。结果表明,分析设计的正确规范对于获得有关评估的可概括性和测量的标准误差的正确信息至关重要。此外,说明性D研究显示了在各种情况和测试设计下的效果。还讨论了多元概化理论在测试设计和评估中的其他好处。

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