用项目水平结果数据估计异质性治疗效果:来自项目反应理论的见解

IF 2.3 3区 管理学 Q2 ECONOMICS
Joshua B. Gilbert, Zachary Himmelsbach, James Soland, Mridul Joshi, Benjamin W. Domingue
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引用次数: 0

摘要

异质性治疗效应分析在应用因果推理研究中很常见。然而,当结果是通过心理测量工具(如教育测试)评估的潜在变量时,标准方法忽略了结果测量的单个项目中可能存在的潜在HTE。未能解释“项目水平”HTE (IL-HTE)可能导致低估标准误差,并在估计协变量治疗相互作用效应时面临识别挑战。我们展示了项目反应理论(IRT)模型如何估计每个评估项目的治疗效果,既可以解决这些挑战,又可以为HTE提供新的见解。本研究阐明了IL-HTE模型的理论基础,并利用来自48个随机对照试验的75个数据集证明了其实用价值,这些试验包含经济学、教育和健康研究中的580万个项目反应。我们的研究结果表明,IL-HTE模型揭示了被单数字分数掩盖的项目水平变化,在许多设置中提供了更有意义的标准误差,允许估计因果效应对未测试项目的普遍性,解决了估计相互作用效应中的识别问题,并提供了校正了由于测量误差引起的衰减的标准化处理效应大小的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating heterogeneous treatment effects with item-level outcome data: Insights from Item Response Theory
Analyses of heterogeneous treatment effects (HTE) are common in applied causal inference research. However, when outcomes are latent variables assessed via psychometric instruments such as educational tests, standard methods ignore the potential HTE that may exist among the individual items of the outcome measure. Failing to account for “item-level” HTE (IL-HTE) can lead to both underestimated standard errors and identification challenges in the estimation of treatment-by-covariate interaction effects. We demonstrate how Item Response Theory (IRT) models that estimate a treatment effect for each assessment item can both address these challenges and provide new insights into HTE generally. This study articulates the theoretical rationale for the IL-HTE model and demonstrates its practical value using 75 datasets from 48 randomized controlled trials containing 5.8 million item responses in economics, education, and health research. Our results show that the IL-HTE model reveals item-level variation masked by single-number scores, provides more meaningful standard errors in many settings, allows for estimates of the generalizability of causal effects to untested items, resolves identification problems in the estimation of interaction effects, and provides estimates of standardized treatment effect sizes corrected for attenuation due to measurement error.
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来源期刊
CiteScore
5.80
自引率
2.60%
发文量
82
期刊介绍: This journal encompasses issues and practices in policy analysis and public management. Listed among the contributors are economists, public managers, and operations researchers. Featured regularly are book reviews and a department devoted to discussing ideas and issues of importance to practitioners, researchers, and academics.
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