Department of Industrial Engineering, Ulsan National Institute of Science and Technology, Ulsan 44919, Korea.
College of Business Administration, Konkuk University, Seoul 05029, Korea.
Int J Environ Res Public Health. 2021 Jun 15;18(12):6458. doi: 10.3390/ijerph18126458.
While smartphone addiction is becoming a recent concern with the exponential increase in the number of smartphone users, it is difficult to predict problematic smartphone users based on the usage characteristics of individual smartphone users. This study aimed to explore the possibility of predicting smartphone addiction level with mobile phone log data. By Korea Internet and Security Agency (KISA), 29,712 respondents completed the Smartphone Addiction Scale developed in 2017. Integrating basic personal characteristics and smartphone usage information, the data were analyzed using machine learning techniques (decision tree, random forest, and Xgboost) in addition to hypothesis tests. In total, 27 variables were employed to predict smartphone addiction and the accuracy rate was the highest for the random forest (82.59%) model and the lowest for the decision tree model (74.56%). The results showed that users' general information, such as age group, job classification, and sex did not contribute much to predicting their smartphone addiction level. The study can provide directions for future work on the detection of smartphone addiction with log-data, which suggests that more detailed smartphone's log-data will enable more accurate results.
随着智能手机用户数量的指数级增长,智能手机成瘾问题成为了近期关注的焦点,但基于个体智能手机用户的使用特征来预测存在问题的智能手机用户却非常困难。本研究旨在探讨利用手机日志数据预测智能手机成瘾程度的可能性。韩国互联网振兴院(KISA)共调查了 29712 名受访者,这些受访者完成了 2017 年开发的智能手机成瘾量表。本研究整合了基本的个人特征和智能手机使用信息,除了假设检验之外,还使用机器学习技术(决策树、随机森林和 Xgboost)对数据进行了分析。总共使用了 27 个变量来预测智能手机成瘾,随机森林(82.59%)模型的准确率最高,决策树模型的准确率最低(74.56%)。结果表明,用户的一般信息,如年龄组、职业分类和性别,对预测他们的智能手机成瘾程度并没有太大帮助。本研究为利用日志数据检测智能手机成瘾提供了方向,这表明更详细的智能手机日志数据将能够产生更准确的结果。