有特殊教育需求儿童的主观幸福感:利用机器学习进行纵向预测。

IF 3.8 2区 心理学 Q1 PSYCHOLOGY, APPLIED
Amanda Swee-Ching Tan, Farhan Ali, Kenneth K Poon
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引用次数: 0

摘要

有特殊教育需求(SEN)的儿童是一个多样化的群体,他们在幸福感和心理健康方面面临着诸多挑战。要想了解这一群体的幸福感预测因素,就必须将各种因素结合起来,同时采用能够揭示这些因素如何共同影响幸福感的复杂性的方法。我们对一群有不同特殊教育需求的儿童(N = 499;M = 8.4 ± 0.9 岁)的主观幸福感进行了纵向预测。非线性机器学习和经典线性分类器使用了 32 个变量(从人口统计学到各类生活经历)作为预测因子。与传统的线性分类器相比,非线性机器学习分类器在预测主观幸福感方面表现出更高的性能(F1 分数 = 0.72 到 0.84)。总体而言,在所有儿童中,先前的主观幸福感、计算能力、读写能力和人际交往能力发挥了重要作用。然而,聚类分析进一步确定了四个共享重要预测因子的不同群组:一个以人际功能预测因子为主的 "社交者 "群组、一个强调学术技能预测因子的 "分析者 "群组,以及两个重要预测因子更为多样化的群组。我们的研究强调了机器学习发现的有特殊教育需要儿童获得幸福感的多种途径,这对理解和支持他们的幸福感具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subjective well-being of children with special educational needs: Longitudinal predictors using machine learning.

Children with special educational needs (SEN) are a diverse group facing numerous challenges related to well-being and mental health. Understanding the predictors of well-being in this population requires the incorporation of diverse factors along with approaches that can uncover complexity in how these factors work together to influence well-being. We longitudinally predicted subjective well-being in a group of children with diverse special educational needs (N = 499; M = 8.4 ± 0.9 years). Thirty-two variables - ranging from demographics to various categories of life experiences - were used as predictors for both nonlinear machine learning and classical linear classifiers. Nonlinear machine learning classifiers exhibited much performance in predicting subjective well-being (F1 score = 0.72 to 0.84) compared to traditional linear classifiers. Overall, across all children, prior subjective well-being, numeracy, literacy skills, and interpersonal dimensions played important roles. However, clustering further identified four distinct clusters sharing important predictors: a 'socializer' cluster dominated by interpersonal functioning predictors, an 'analyzer' cluster emphasizing academic skills predictors, and two clusters with more diverse sets of important predictors. Our research highlights the multiple pathways toward well-being in children with SEN as uncovered by machine learning, with implications for understanding and supporting their well-being.

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来源期刊
CiteScore
12.10
自引率
2.90%
发文量
95
期刊介绍: Applied Psychology: Health and Well-Being is a triannual peer-reviewed academic journal published by Wiley-Blackwell on behalf of the International Association of Applied Psychology. It was established in 2009 and covers applied psychology topics such as clinical psychology, counseling, cross-cultural psychology, and environmental psychology.
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