Bilek Gunal, Karaman Filiz
Department of Statistics, Bitlis Eren University, 13000 Bitlis, Turkey.
Department of Statistics, Yildiz Technical University, 34349 Istanbul, Turkey.
Entropy (Basel). 2018 Mar 12;20(3):189. doi: 10.3390/e20030189.
The aim of this paper is to investigate the factors influencing the Beck Depression Inventory score, the Beck Hopelessness Scale score and the Rosenberg Self-Esteem score and the relationships among the psychiatric, demographic and socio-economic variables with Bayesian network modeling. The data of 823 university students consist of 21 continuous and discrete relevant psychiatric, demographic and socio-economic variables. After the discretization of the continuous variables by two approaches, two Bayesian networks models are constructed using the b n l e a r n package in R, and the results are presented via figures and probabilities. One of the most significant results is that in the first Bayesian network model, the gender of the students influences the level of depression, with female students being more depressive. In the second model, social activity directly influences the level of depression. In each model, depression influences both the level of hopelessness and self-esteem in students; additionally, as the level of depression increases, the level of hopelessness increases, but the level of self-esteem drops.
本文旨在通过贝叶斯网络建模,研究影响贝克抑郁量表得分、贝克绝望量表得分和罗森伯格自尊量表得分的因素,以及精神、人口统计学和社会经济变量之间的关系。823名大学生的数据包含21个连续和离散的相关精神、人口统计学和社会经济变量。通过两种方法对连续变量进行离散化后,使用R语言中的bnlearn包构建了两个贝叶斯网络模型,并通过图形和概率呈现结果。其中一个最重要的结果是,在第一个贝叶斯网络模型中,学生的性别会影响抑郁水平,女生的抑郁程度更高。在第二个模型中,社交活动直接影响抑郁水平。在每个模型中,抑郁都会影响学生的绝望水平和自尊水平;此外,随着抑郁水平的增加,绝望水平会上升,但自尊水平会下降。