摘要
变量间的网络分析模型近年来被广泛应用于心理学研究。不同于将潜变量作为观测变量的共同先导因素的潜变量模型,网络分析模型将观测变量作为初级指标,采用图论的方法建立观测变量之间的关系网络,其中变量为网络的节点,而变量间的关系是节点之间的连线。因此网络分析可以突显观测变量之间的联系以及观测变量相互影响而形成的系统。通过变量网络中基于各个节点特征的指标(如中心性)以及基于整体结构特征的指标(如小世界性),网络分析为研究各种心理现象提供了新的可视化的描述方式和理解视角。近10年来,网络分析的方法已在人格心理学、社会心理学和临床心理学等领域得到一定的应用。未来研究应继续发展和完善网络分析模型的理论和方法,使之运用到更多的数据类型和更广的研究领域中。
Network analysis models(or Network Psychometrics) have been widely used in psychology research in recent years. Unlike latent variable models which conceive observable variables as outcomes of unobservable latent factors, network analysis models apply the graph theory to construct a network to depict the associations among observable variables. The observable variables are treated as nodes and the associations between them are treated as edges. As such, network analysis models reveal the relationships among observable variables and the dynamic system resulted from the interactions between these observable variables. With indices reflecting individual nodes’ characteristics(such as centrality) and network structural characteristics(such as small-worldness), network analysis models provide a new perspective for visualization and for studying various psychological phenomena. In the past decade, network analysis models have been applied in the fields of personality, social, and clinical psychology as well as psychiatry. Future research should continue to develop and improve the methods of network analysis models, making them applicable to more types of data and broader research fields.
出处
《心理科学进展》
CSSCI
CSCD
北大核心
2020年第1期178-190,I0002-I0006,共18页
Advances in Psychological Science
基金
清华大学学术推进计划资助
关键词
网络分析
潜变量模型
心理测量
临床心理学
人格特质
network analysis
latent variable
psychometrics
psychopathology
personality traits