Potential for Bias Inflation with Grouped Data: A Comparison of Estimators and a Sensitivity Analysis Strategy

M. Scott, Ronli Diakow, J. Hill, J. Middleton
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引用次数: 2

Abstract

Abstract:We are concerned with the unbiased estimation of a treatment effect in the context of non-experimental studies with grouped or multilevel data. When analyzing such data with this goal, practitioners typically include as many predictors (controls) as possible, in an attempt to satisfy ignorability of the treatment assignment. In the multilevel setting with two levels, there are two classes of potential confounders that one must consider, and attempts to satisfy ignorability conditional on just one set would lead to a different treatment effect estimator than attempts to satisfy the other (or both). The three estimators considered in this paper are so-called “within,” “between” and OLS estimators. We generate bounds on the potential differences in bias for these competing estimators to inform model selection. Our approach relies on a parametric model for grouped data and omitted confounders and establishes a framework for sensitivity analysis in the two-level modeling context. The method relies on information obtained from parameters estimated under a variety of multilevel model specifications. We characterize the strength of the confounding and corresponding bias using easily interpretable parameters and graphical displays. We apply this approach to data from a multinational educational evaluation study. We demonstrate the extent to which different treatment effect estimators may be robust to potential unobserved individual- and group-level confounding.
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分组数据的偏差通货膨胀潜力:估计值与敏感性分析策略的比较
摘要:我们关注的是在分组或多级数据的非实验研究中对治疗效果的无偏估计。当以此为目标分析这些数据时,从业者通常会包括尽可能多的预测因素(对照),以满足治疗分配的可忽略性。在具有两个水平的多水平设置中,必须考虑两类潜在的混杂因素,并且试图满足仅一个集合的可忽略性将导致与试图满足另一个(或两者)不同的治疗效果估计量。本文考虑的三种估计量是所谓的“内部”、“之间”和OLS估计量。我们为这些竞争估计器生成潜在偏差的边界,以告知模型选择。我们的方法依赖于分组数据的参数模型和省略的混杂因素,并在两级建模环境中建立了敏感性分析框架。该方法依赖于从各种多级模型规范下估计的参数中获得的信息。我们使用易于解释的参数和图形显示来表征混杂的强度和相应的偏倚。我们将这种方法应用于一项跨国教育评估研究的数据。我们证明了不同的治疗效果估计量在多大程度上对潜在的未观察到的个体和群体水平的混杂因素具有稳健性。
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