横截面网络的贝叶斯分析:R和JASP教程

IF 15.6 1区 心理学 Q1 PSYCHOLOGY Advances in Methods and Practices in Psychological Science Pub Date : 2023-10-01 DOI:10.1177/25152459231193334
Karoline B. S. Huth, Jill de Ron, Anneke E. Goudriaan, Judy Luigjes, Reza Mohammadi, Ruth J. van Holst, Eric-Jan Wagenmakers, Maarten Marsman
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引用次数: 0

摘要

网络心理测量学是心理学研究的一个新方向,它将心理构念概念化为相互作用的变量系统。在网络分析中,变量被表示为节点,它们的相互作用产生(部分)关联。目前的估计方法大多采用频率论方法,这种方法不允许对模型及其参数进行适当的不确定性量化。在这里,我们概述了网络分析的贝叶斯方法,它提供了三个主要优点。特别是,应用研究人员可以使用贝叶斯方法(1)确定结构不确定性,(2)获得边缘包含和排除的证据(即区分变量之间的条件依赖性或独立性),以及(3)量化参数精度。在本文中,我们对贝叶斯推理进行了概念介绍,描述了研究人员如何促进网络的三个好处,并回顾了可用的R包。此外,我们还提出了两个用户友好的软件解决方案:一个新的R包,easybgm,用于拟合,提取和可视化网络的贝叶斯分析,以及在JASP中的图形用户界面实现。该方法用一个人格特征和心理健康网络的实例来说明。
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Bayesian Analysis of Cross-Sectional Networks: A Tutorial in R and JASP
Network psychometrics is a new direction in psychological research that conceptualizes psychological constructs as systems of interacting variables. In network analysis, variables are represented as nodes, and their interactions yield (partial) associations. Current estimation methods mostly use a frequentist approach, which does not allow for proper uncertainty quantification of the model and its parameters. Here, we outline a Bayesian approach to network analysis that offers three main benefits. In particular, applied researchers can use Bayesian methods to (1) determine structure uncertainty, (2) obtain evidence for edge inclusion and exclusion (i.e., distinguish conditional dependence or independence between variables), and (3) quantify parameter precision. In this article, we provide a conceptual introduction to Bayesian inference, describe how researchers can facilitate the three benefits for networks, and review the available R packages. In addition, we present two user-friendly software solutions: a new R package, easybgm, for fitting, extracting, and visualizing the Bayesian analysis of networks and a graphical user interface implementation in JASP. The methodology is illustrated with a worked-out example of a network of personality traits and mental health.
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来源期刊
CiteScore
21.20
自引率
0.70%
发文量
16
期刊介绍: In 2021, Advances in Methods and Practices in Psychological Science will undergo a transition to become an open access journal. This journal focuses on publishing innovative developments in research methods, practices, and conduct within the field of psychological science. It embraces a wide range of areas and topics and encourages the integration of methodological and analytical questions. The aim of AMPPS is to bring the latest methodological advances to researchers from various disciplines, even those who are not methodological experts. Therefore, the journal seeks submissions that are accessible to readers with different research interests and that represent the diverse research trends within the field of psychological science. The types of content that AMPPS welcomes include articles that communicate advancements in methods, practices, and metascience, as well as empirical scientific best practices. Additionally, tutorials, commentaries, and simulation studies on new techniques and research tools are encouraged. The journal also aims to publish papers that bring advances from specialized subfields to a broader audience. Lastly, AMPPS accepts Registered Replication Reports, which focus on replicating important findings from previously published studies. Overall, the transition of Advances in Methods and Practices in Psychological Science to an open access journal aims to increase accessibility and promote the dissemination of new developments in research methods and practices within the field of psychological science.
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