Predicting Smartphone Addiction in Teenagers: An Integrative Model Incorporating Machine Learning and Big Five Personality Traits

Jacobo Osorio, Marko Figueroa, Lenis Wong
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Abstract

: Smartphone addiction has emerged as a growing concern in society, particularly among teenagers, due to its potential negative impact on physical, emotional social well-being. The excessive use of smartphones has consistently shown associations with negative outcomes, highlighting a strong dependence on these devices, which often leads to detrimental effects on mental health, including heightened levels of anxiety, distress, stress depression. This psychological burden can further result in the neglect of daily activities as individuals become increasingly engrossed in seeking pleasure through their smartphones. The aim of this study is to develop a predictive model utilizing machine learning techniques to identify smartphone addiction based on the "Big Five Personality Traits (BFPT)". The model was developed by following five out of the six phases of the "Cross Industry Standard Process for Data Mining (CRISP-DM)" methodology, namely "business understanding," "data understanding," "data preparation," "modeling," and "evaluation." To construct the database, data was collected from a school using the Big Five Inventory (BFI) and the Smartphone Addiction Scale (SAS) questionnaires. Subsequently, four algorithms (DT, RF, XGB LG) were employed the correlation between the personality traits and addiction was examined. The analysis revealed a relationship between the traits of neuroticism and conscientiousness with smartphone addiction. The results demonstrated that the RF algorithm achieved an accuracy of 89.7%, a precision of 87.3% the highest AUC value on the ROC curve. These findings highlight the effectiveness of the proposed model in accurately predicting smartphone addiction among adolescents
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预测青少年的智能手机成瘾:结合机器学习和五大人格特质的综合模型
:智能手机成瘾已成为社会日益关注的问题,尤其是在青少年中,因为它可能对身体、情感和社会福祉产生负面影响。过度使用智能手机一直显示出与负面结果的关联,突出表明了对这些设备的强烈依赖,这往往会导致对心理健康的不利影响,包括焦虑、苦恼和压力抑郁水平的升高。随着人们越来越沉迷于通过智能手机寻求乐趣,这种心理负担会进一步导致人们忽视日常活动。本研究旨在利用机器学习技术开发一个预测模型,以 "大五人格特质(BFPT)"为基础识别智能手机成瘾。该模型的开发遵循了 "数据挖掘跨行业标准流程(CRISP-DM)"方法论六个阶段中的五个阶段,即 "业务理解"、"数据理解"、"数据准备"、"建模 "和 "评估"。为了构建数据库,使用大五量表(BFI)和智能手机成瘾量表(SAS)问卷从一所学校收集数据。随后,采用四种算法(DT、RF、XGB LG)对人格特质与成瘾之间的相关性进行了研究。分析结果显示,神经质和自觉性特质与智能手机成瘾之间存在关系。结果表明,RF 算法的准确率为 89.7%,精确率为 87.3%,ROC 曲线上的 AUC 值最高。这些结果凸显了所提出的模型在准确预测青少年智能手机成瘾方面的有效性。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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