NWEA, Portland, USA.
University of California, Los Angeles, USA.
Psychometrika. 2023 Mar;88(1):332-356. doi: 10.1007/s11336-022-09893-3. Epub 2022 Nov 8.
Performance-targeted interventions are an important tool in improving educational outcomes and are often applied at the school level, where low-performing schools are selected for participation. In this paper, we aim to identify low-performing schools in Cambodia that are in need of support on improving students' abilities in formulating math problems. Using data from the PISA for Development project, we present an application of a structured multilevel mixture item response theory (IRT) model that utilizes strategic constraints in order to achieve our research aims. The approach utilized in this application draws on psychometric traditions in multilevel IRT modeling, mixture IRT modeling, and constrained mixture IRT modeling. Results support classifications of Cambodian schools participating in PISA-D as low- and non-low-performing schools, as well as provide insight into these schools various contexts. Implications for future school interventions in Cambodia as well as future extensions to this modeling approach are discussed.
以绩效为目标的干预措施是提高教育成果的重要工具,通常在学校层面实施,选择表现不佳的学校参与。本文旨在确定柬埔寨需要支持提高学生解决数学问题能力的表现不佳的学校。我们使用来自 PISA for Development 项目的数据,展示了一种应用结构化多级混合项目反应理论 (IRT) 模型的方法,该模型利用战略约束来实现我们的研究目标。本应用中采用的方法借鉴了多级 IRT 建模、混合 IRT 建模和约束混合 IRT 建模的心理测量传统。结果支持将参与 PISA-D 的柬埔寨学校分类为表现不佳和非表现不佳的学校,并深入了解这些学校的各种情况。讨论了对柬埔寨未来学校干预措施以及对这种建模方法的未来扩展的影响。