Random Forest Algorithm-based Modelling and Neural Network Analysis Between Social Anxiety Disorder of Childhood and Parents' Socioeconomic Attributes

Guilian Li, Lili Jiang
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Abstract

Using the random forest algorithm in machine learning, the problem of children's social phobia is transformed into a classification prediction problem. There are many reasons for social anxiety disorder in childhood (SADC). Thus, we study the influence of parents' socioeconomic attributes on SADC. Based on the data obtained from the questionnaire survey of children and their parents in an early education institution, we build a prediction model between SADC and parents' socioeconomic attributes with the bivariate correlation method, the logistic regression, and the random forest method. The study result shows that the parents' socio-economic attributes are strongly related to SADC, and the model can be applied to the personalized care and psychological intervention of this early education institution. The result also shows that the accuracy reaches 80.5%. The model can be applied to preschool prediction and screening of children's social phobia tendencies and provides a reference for teachers to give personalized care and psychological intervention to children with a high tendency in follow-up teaching activities.
基于随机森林算法的儿童社交焦虑障碍与父母社会经济属性的建模与神经网络分析
利用机器学习中的随机森林算法,将儿童社交恐惧症问题转化为分类预测问题。儿童期社交焦虑障碍(SADC)有很多原因。因此,我们研究了父母社会经济属性对SADC的影响。基于对某早教机构儿童及其家长的问卷调查数据,运用二元相关法、logistic回归法和随机森林法建立了SADC与家长社会经济属性之间的预测模型。研究结果表明,家长的社会经济属性与SADC有较强的相关性,该模型可应用于该早教机构的个性化护理和心理干预。结果表明,该方法的精度达到80.5%。该模型可应用于儿童社交恐惧症倾向的学前预测和筛查,为教师在后续教学活动中对高倾向儿童进行个性化关怀和心理干预提供参考。
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