Sophie W Berkhout, Noémi K Schuurman, Ellen L Hamaker
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引用次数: 0
摘要
夜隙是经验采样法(ESM)获得的数据所固有的。当这些数据被用于研究变量之间的滞后关系时——比如同一变量内的自回归,以及不同变量之间的交叉滞后回归——通常不会研究夜间隔的实际作用。然而,在分析中有各种方法来处理它们。常见的解决方案包括:(a)通过将夜间间隔视为常规间隔来忽略夜间间隔;(b)通过不将当天的第一次测量值与前一天的最后一次测量值进行回归来消除夜间差距;或者(c)将夜间间隔视为缺失数据问题。本文的目的是在一阶自回归模型的背景下明确这三种方法的理论含义。此外,我们提出了另一种建模方法,使我们能够更详细地研究夜隙的含义。此外,鉴于当前的方法是所提出的替代方法的特殊情况,我们可以测试哪种方法最能描述感兴趣的过程。通过一个具有不同ESM变量的N = 1的实证例子,我们证明了每个变量的最佳拟合方法是不同的。这意味着一些过程在夜间可能表现出与白天不同的动态,为理解和模拟ESM中的夜间间隙提供了一个垫脚石。(PsycInfo Database Record (c) 2025 APA,版权所有)。
Let sleeping dogs lie? How to deal with the night gap problem in experience sampling method data.
Night gaps are inherent to data obtained with the experience sampling method (ESM). When such data are used to study lagged relations between variables-such as autoregression within the same variable, and cross-lagged regressions between different variables-the actual role of night gaps is typically not investigated. However, there are various methods to handle them in analyses. Common solutions involve (a) ignoring the night gap by considering the night interval as a regular interval; (b) removing the night gap by not regressing the first measurement of the day on the last measurement of the previous day; or (c) treating the night gap as a missing data problem. The goal of this article is to make explicit the theoretical implications of these three methods within the context of the first-order autoregressive model. Additionally, we propose an alternative modeling approach that allows us to study the implications of the night gap in more detail. Moreover, given that the current methods are special cases of the proposed alternative, we can test which method best describes the process of interest. Through an empirical N = 1 example with various ESM variables, we demonstrate that the best-fitting method differs per variable. This implies that some processes may exhibit different dynamics during the night than during the daytime, providing a stepping stone to understanding and modeling night gaps in ESM. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
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.