使用监督机器学习随机森林分析探索父亲的心理健康

IF 1.7 3区 社会学 Q2 FAMILY STUDIES
Kwangman Ko, Matthew R. Rodriguez
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引用次数: 0

摘要

目的在家庭系统理论框架的指导下,本文探讨了使用监督机器学习随机森林回归来理解父亲心理健康的效用。虽然父亲的心理健康没有受到太多关注,但考虑到家庭系统的相互依存关系,了解家庭因素如何影响父亲的心理健康将有利于父亲本人和家庭。使用随机森林回归的监督机器学习对于识别影响父亲心理健康的因素之间的层次关系很有用。方法选取277例美国临床资料至少有一个学龄前儿童的父亲作为参与者。研究变量包括父亲心理健康、父亲投入、父母胜任力、亲子关系、父母关系质量、工作与家庭冲突、父亲人口统计信息。结果采用随机森林回归对有监督机器学习模型进行训练。对训练数据进行随机森林回归后发现,亲子关系冲突是最重要的预测因子,其次是父亲参与、父母关系、工作与家庭冲突和父母胜任力(R2 = .62)。本研究表明,采用监督机器学习随机森林统计方法可以提高对父亲心理健康相关因素复杂性的理解。为了支持父亲的心理健康,从业者和家庭教育者可以考虑解决家庭因素,如亲子关系冲突、父亲参与和家庭中父母关系的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring fathers' psychological well-being using supervised machine learning random forest analysis

Objective

Guided by a family systems theoretical framework, the study reported herein explores the utility of using supervised machine learning random forest regression for understanding fathers' psychological well-being.

Background

Although fathers' psychological well-being has not received much attention, understanding how familial factors contribute to fathers' mental health will benefit fathers themselves as well as their families, given the interdependence of the family system. Supervised machine learning using a random forest regression can be useful for identifying the hierarchical relationships between factors that shape fathers' psychological well-being.

Method

The study includes 277 U.S. fathers with at least one preschool-aged child as participants. Study variables include fathers' psychological well-being, father involvement, parental competency, parent–child relationships, coparenting relationship quality, work and family conflict, and fathers' demographic information.

Results

The supervised machine learning model was trained using a random forest regression. After tuning, the random forest regression with the training data identified parent–child relationship conflict as the most important predictor, followed by father involvement, coparenting relationships, work and family conflict, and parental competency (R2 = .62).

Conclusion

This research shows the benefits of taking a supervised machine learning random forest statistical approach to increasing understanding of the complexity of factors related to fathers' psychological well-being.

Implications

To support fathers' psychological well-being, practitioners and family educators may consider addressing familial factors such as parent–child relationship conflict, father involvement, and coparenting relationship quality within a family.

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来源期刊
Family Relations
Family Relations Multiple-
CiteScore
3.40
自引率
13.60%
发文量
164
期刊介绍: A premier, applied journal of family studies, Family Relations is mandatory reading for family scholars and all professionals who work with families, including: family practitioners, educators, marriage and family therapists, researchers, and social policy specialists. The journal"s content emphasizes family research with implications for intervention, education, and public policy, always publishing original, innovative and interdisciplinary works with specific recommendations for practice.
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