密集纵向数据的有序状态-特征回归

IF 1.5 3区 心理学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS British Journal of Mathematical & Statistical Psychology Pub Date : 2022-09-08 DOI:10.1111/bmsp.12285
Prince P. Osei, Philip T. Reiss
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引用次数: 0

摘要

在许多心理学研究中,特别是那些通过经验抽样进行的研究,反复测量每个参与者的心理状态。这样的设计允许回归模型将两个变量之间的关联成分从人与人之间,或特征与状态之间分离开来。但这些模型通常是为连续变量设计的,而心理状态变量通常是在有序尺度上测量的。在本文中,我们建立了一个模型来分解一个序数变量对另一个序数变量的人与人之间的影响。与标准有序回归一样,我们的模型假设一个连续的潜在响应,其值决定了观察到的响应。我们允许潜在反应非线性地依赖于特征和状态变量,但施加了一个新的惩罚,在潜在尺度上缩小了对线性模型的拟合。仿真研究表明,这种惩罚方法可以有效地在过度限制的线性模型和过度拟合的非线性模型之间找到一个中间地带。Baumeister等人(2020,Personality and Social Psychology Bulletin, 46, 1631)的经验抽样研究数据说明了该方法的应用。
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 state-trait regression for intensive longitudinal data

In many psychological studies, in particular those conducted by experience sampling, mental states are measured repeatedly for each participant. Such a design allows for regression models that separate between- from within-person, or trait-like from state-like, components of association between two variables. But these models are typically designed for continuous variables, whereas mental state variables are most often measured on an ordinal scale. In this paper we develop a model for disaggregating between- from within-person effects of one ordinal variable on another. As in standard ordinal regression, our model posits a continuous latent response whose value determines the observed response. We allow the latent response to depend nonlinearly on the trait and state variables, but impose a novel penalty that shrinks the fit towards a linear model on the latent scale. A simulation study shows that this penalization approach is effective at finding a middle ground between an overly restrictive linear model and an overfitted nonlinear model. The proposed method is illustrated with an application to data from the experience sampling study of Baumeister et al. (2020, Personality and Social Psychology Bulletin, 46, 1631).

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来源期刊
CiteScore
5.00
自引率
3.80%
发文量
34
审稿时长
>12 weeks
期刊介绍: The British Journal of Mathematical and Statistical Psychology publishes articles relating to areas of psychology which have a greater mathematical or statistical aspect of their argument than is usually acceptable to other journals including: • mathematical psychology • statistics • psychometrics • decision making • psychophysics • classification • relevant areas of mathematics, computing and computer software These include articles that address substantitive psychological issues or that develop and extend techniques useful to psychologists. New models for psychological processes, new approaches to existing data, critiques of existing models and improved algorithms for estimating the parameters of a model are examples of articles which may be favoured.
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