探讨与高危学生自杀意念相关的生态因素:一种决策树算法

Saahoon Hong, Eunji Kim, J. Sung, Oyong Kweon
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引用次数: 0

摘要

摘要本研究的主要目的是探讨参与京畿道教育小组研究(GEPS)第五年的初二学生中有自杀念头的高危学生的生态因素。机器学习算法之一的决策树模型证实了自杀意念与处于危险中的学生的生态因素之间的交叉性。在回答“非常同意”和“完全不同意”的学生中,心理健康、依恋疏离、学业压力、性别、家庭收入、犯罪等因素是影响自杀意念的主要因素,且差异有统计学意义。基于决策树模型及其结果,强调有必要从生态学的角度理解危机学生的心理和情感需求、家庭环境和学校环境。此外,本文还讨论了基于数据的方法的意义,如全校积极行为支持的决策树模型和学校安全集成系统(Wee项目)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Ecological Factors Associated with At-Risk Students with Suicidal Ideation: A Decision Tree Algorithm
The primary purpose of this study was to explore the ecological factors of at-risk students with suicidal thoughts among second-year middle school students, participated in the 5th year of the Gyeonggi Education Panel Study (GEPS). The decision-tree model, one of the machine learning algorithms, confirmed the intersectionality between suicidal ideation and the ecological factors of students at risk. For students who answered “strongly agree” and “not at all” to the question of suicidal ideation, mental health, attachment alienation, academic stress, gender, household income, and delinquency factors were identified as major factors with statistical significance. Based on the decision-tree model and its results, it was emphasized that it is necessary to understand the psychological and emotional needs, the home environment, and the school environment of students in crisis from an ecological perspective. In addition, the implications of the data-based approach, such as the decision tree model for School-Wide Positive Behavior Supports and the school safety integrated system (Wee project), were discussed.
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