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A Monte Carlo Approach to the Design, Assembly, and Evaluation of Multistage Adaptive Tests

机译:用于多阶段自适应测试的设计,组装和评估的蒙特卡洛方法

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This article presents an application of Monte Carlo methods for developing and assembling multistage adaptive tests (MSTs). A major advantage of the Monte Carlo assembly over other approaches (e.g., integer programming or enumerative heuristics) is that it provides a uniform sampling from all MSTs (or MST paths) available from a given item pool. The uniform sampling allows a statistically valid analysis for MST design and evaluation. Given an item pool, MST model, and content constraints for test assembly, three problems are addressed in this study. They are (a) the construction of item response theory (IRT) targets for each MST path, (b) the assembly of an MST such that each path satisfies content constraints and IRT constraints, and (c) an analysis of the pool and constraints to increase the number of nonoverlapping MSTs that can be assembled from the pool. The primary intent is to produce reliable measurements and enhance pool utilization.
机译:本文介绍了蒙特卡洛方法在开发和组装多级自适应测试(MST)中的应用。蒙特卡洛程序集相对于其他方法(例如整数编程或枚举启发式方法)的主要优势在于,它可以从给定项目库中可用的所有MST(或MST路径)提供统一采样。统一采样可以对MST设计和评估进行统计上有效的分析。给定一个项目库,MST模型和测试程序集的内容约束,此研究解决了三个问题。它们是(a)为每个MST路径构建项目响应理论(IRT)目标,(b)组装MST以使每个路径都满足内容约束和IRT约束,以及(c)对池和约束的分析增加可以从池中组装的非重叠MST的数量。主要目的是进行可靠的测量并提高池利用率。

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