超参数
偏相关
潜变量
计算机科学
结构方程建模
相关性
机器学习
人工智能
数据挖掘
正规化(语言学)
计量经济学
心理学
数学
几何学
作者
Sacha Epskamp,Eiko I. Fried
出处
期刊:Psychological Methods
[American Psychological Association]
日期:2018-03-29
卷期号:23 (4): 617-634
被引量:1039
摘要
Recent years have seen an emergence of network modeling applied to moods, attitudes, and problems in the realm of psychology. In this framework, psychological variables are understood to directly affect each other rather than being caused by an unobserved latent entity. In this tutorial, we introduce the reader to estimating the most popular network model for psychological data: the partial correlation network. We describe how regularization techniques can be used to efficiently estimate a parsimonious and interpretable network structure in psychological data. We show how to perform these analyses in R and demonstrate the method in an empirical example on post-traumatic stress disorder data. In addition, we discuss the effect of the hyperparameter that needs to be manually set by the researcher, how to handle non-normal data, how to determine the required sample size for a network analysis, and provide a checklist with potential solutions for problems that can arise when estimating regularized partial correlation networks.
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