简单的序数回归模型:参数解释、数据模拟和功率分析教程。

IF 3.3 3区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY International Journal of Psychology Pub Date : 2024-10-01 DOI:10.1002/ijop.13243
Filippo Gambarota, Gianmarco Altoè
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引用次数: 0

摘要

李克特项目、评分或一般有序变量等序数数据在心理学中非常普遍。这些变量通常使用度量模型(如标准线性回归)进行分析,但在统计推断(功率降低和类型-1 误差增加)和预测方面存在重大缺陷。不使用序数回归模型的一个可能原因是难以理解参数或进行功率分析。本教程旨在使用基于模拟的方法介绍序数回归模型。首先,我们介绍了一般模型,强调了关键组成部分和假设。然后,我们解释了如何解释 logit 和 probit 模型的参数。然后,我们提出了模拟数据作为预测因子函数的两种方法,显示了与分类预测因子的 2 × 2 交互作用,以及数字预测因子与分类预测因子之间的交互作用。最后,我们展示了一个使用模拟进行幂次分析的示例,该示例可轻松扩展到具有多个预测因子的复杂模型。本教程由一系列为模拟和理解序数回归模型而开发的自定义 R 函数提供支持。您可以在在线开放科学框架资源库(https://osf.io/93h5j)中找到重现所提议模拟的代码、自定义 R 函数和其他序数回归模型示例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Ordinal regression models made easy: A tutorial on parameter interpretation, data simulation and power analysis

Ordinal data such as Likert items, ratings or generic ordered variables are widespread in psychology. These variables are usually analysed using metric models (e.g., standard linear regression) with important drawbacks in terms of statistical inference (reduced power and increased type-1 error) and prediction. One possible reason for not using ordinal regression models could be difficulty in understanding parameters or conducting a power analysis. The tutorial aims to present ordinal regression models using a simulation-based approach. Firstly, we introduced the general model highlighting crucial components and assumptions. Then, we explained how to interpret parameters for a logit and probit model. Then we proposed two ways for simulating data as a function of predictors showing a 2 × 2 interaction with categorical predictors and the interaction between a numeric and categorical predictor. Finally, we showed an example of power analysis using simulations that can be easily extended to complex models with multiple predictors. The tutorial is supported by a collection of custom R functions developed to simulate and understand ordinal regression models. The code to reproduce the proposed simulation, the custom R functions and additional examples of ordinal regression models can be found on the online Open Science Framework repository ( https://osf.io/93h5j).

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来源期刊
International Journal of Psychology
International Journal of Psychology PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
6.40
自引率
0.00%
发文量
64
期刊介绍: The International Journal of Psychology (IJP) is the journal of the International Union of Psychological Science (IUPsyS) and is published under the auspices of the Union. IJP seeks to support the IUPsyS in fostering the development of international psychological science. It aims to strengthen the dialog within psychology around the world and to facilitate communication among different areas of psychology and among psychologists from different cultural backgrounds. IJP is the outlet for empirical basic and applied studies and for reviews that either (a) incorporate perspectives from different areas or domains within psychology or across different disciplines, (b) test the culture-dependent validity of psychological theories, or (c) integrate literature from different regions in the world.
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