Individual-level probabilities and cluster-level proportions: Toward interpretable level 2 estimates in unconflated multilevel models for binary outcomes.

IF 7.6 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Psychological methods Pub Date : 2024-02-08 DOI:10.1037/met0000646
Timothy Hayes
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Abstract

Multilevel models allow researchers to test hypotheses at multiple levels of analysis-for example, assessing the effects of both individual-level and school-level predictors on a target outcome. To assess these effects with the greatest clarity, researchers are well-advised to cluster mean center all Level 1 predictors and explicitly incorporate the cluster means into the model at Level 2. When an outcome of interest is continuous, this unconflated model specification serves both to increase model accuracy, by separating the level-specific effects of each predictor, and to increase model interpretability, by reframing the random intercepts as unadjusted cluster means. When an outcome of interest is binary or ordinal, however, only the first of these benefits is fully realized: In these models, the intuitive cluster mean interpretations of Level 2 effects are only available on the metric of the linear predictor (e.g., the logit) or, equivalently, the latent response propensity, yij∗. Because the calculations for obtaining predicted probabilities, odds, and ORs operate on the entire combined model equation, the interpretations of these quantities are inextricably tied to individual-level, rather than cluster-level, outcomes. This is unfortunate, given that the probability and odds metrics are often of greatest interest to researchers in practice. To address this issue, I propose a novel rescaling method designed to calculate cluster average success proportions, odds, and ORs in two-level binary and ordinal logistic and probit models. I apply the approach to a real data example and provide supplemental R functions to help users implement the method easily. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

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个体水平的概率和聚类水平的比例:在二元结果的非膨胀多层次模型中实现可解释的第 2 层估计。
多层次模型允许研究人员在多个分析层次上检验假设--例如,评估个人层次和学校 层次的预测因素对目标结果的影响。为了最清晰地评估这些影响,研究人员最好对所有一级预测因子的平均值进行聚类,并将聚类平均值明确纳入二级模型。如果所关注的结果是连续的,这种非膨胀模型规格既可以通过分离每个预测因子的特定水平效应来提高模型的准确性,又可以通过将随机截距重构为未经调整的聚类均值来提高模型的可解释性。然而,当所关注的结果是二元或序数结果时,只有第一个好处才能充分实现:在这些模型中,第 2 层次效应的直观聚类平均值解释只适用于线性预测因子(如 logit)或潜在反应倾向 yij∗ 的度量。由于预测概率、几率和或然率的计算是在整个组合模型方程上进行的,因此这些量的解释与个 人层面而非集群层面的结果有着千丝万缕的联系。鉴于概率和几率指标往往是研究人员在实践中最感兴趣的指标,这种情况令人遗憾。为了解决这个问题,我提出了一种新颖的重新缩放方法,旨在计算两级二元和序数逻辑和 probit 模型中的群组平均成功比例、几率和 OR。我将该方法应用于一个真实数据示例,并提供了补充 R 函数,以帮助用户轻松实施该方法。(PsycInfo 数据库记录 (c) 2024 APA,保留所有权利)。
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来源期刊
Psychological methods
Psychological methods PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.10
自引率
7.10%
发文量
159
期刊介绍: Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.
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