Using Bayesian Networks to Investigate Psychological Constructs: The Case of Empathy.

IF 1.7 4区 心理学 Q2 PSYCHOLOGY, MULTIDISCIPLINARY Psychological Reports Pub Date : 2024-10-01 Epub Date: 2022-12-20 DOI:10.1177/00332941221146711
Giovanni Briganti, Jean Decety, Marco Scutari, Richard J McNally, Paul Linkowski
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Abstract

Network analysis is an emerging field for the study of psychopathology that considers constructs as arising from the interactions among their constituents. Pairwise effects among psychological components are often investigated by using this framework. Few studies have applied Bayesian networks, models that include directed interactions to perform causal inference on psychological constructs. Directed graphical models may be less straightforward to interpret in case the construct at hand does not contain symptoms but instead psychometric items from self-report measures. However, they may be useful in validating specific research questions that arise while using standard pairwise network models. In this study, we use Bayesian networks to investigate a well-known psychological construct, empathy from the Interpersonal Reactivity Index, in large two samples of 1973 university students from Belgium. Overall, our results support the hypotheses emphasizing empathic concern (i.e., sympathy) as causally important in the construct of empathy, and overall attribute the primacy of emotional components of empathy over their intellectual counterparts. Bayesian networks help researchers identify the plausible causal relationships in psychometric data, to gain new insight on the psychological construct under examination, help generate new hypotheses and provide evidence relevant to old ones.

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利用贝叶斯网络研究心理结构:移情案例。
网络分析是研究心理病理学的一个新兴领域,它认为心理结构是由其组成成分之间的相互作用产生的。心理成分之间的配对效应通常通过这一框架进行研究。很少有研究应用贝叶斯网络(包括有向交互作用的模型)来对心理结构进行因果推断。如果所研究的构念不包含症状,而是来自自我报告测量的心理测量项目,那么定向图模型的解释可能就不那么直接了。不过,它们在验证使用标准配对网络模型时出现的特定研究问题时可能会很有用。在本研究中,我们使用贝叶斯网络研究了一个著名的心理结构--人际反应指数中的移情--比利时 1973 名大学生的两个大型样本。总体而言,我们的研究结果支持强调共情关注(即同情)在共情建构中的因果重要性的假设,并且总体上认为共情的情感成分优先于其智力成分。贝叶斯网络有助于研究人员从心理测量数据中找出合理的因果关系,对所研究的心理结构获得新的认识,帮助提出新的假设,并为旧的假设提供相关证据。
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来源期刊
Psychological Reports
Psychological Reports PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
5.10
自引率
4.30%
发文量
171
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