The rapid growth of smartphone in recent years has resulted in many syndromes. Most of these syndromes are caused by excessive use of smartphone. In addition, people who tends to use smartphone excessively are also likely to have smartphone addiction. In this paper, we presented the system architecture for e-Health system. Not only we used the architecture for our smartphone addiction recognition system, but we also pointed out important benefits of the system architecture, which also can be adopted by other system. Later on, we presented a development of the classification model for recognizing likelihood of having smartphone addiction. We trained the classification model based on data retrieved from subjects’ smartphone. The result showed that the best model can correctly classify the instance up to 78%.
CITATION STYLE
Lawanont, W., & Inoue, M. (2018). A development of classification model for smartphone addiction recognition system based on smartphone usage data. In Smart Innovation, Systems and Technologies (Vol. 73, pp. 3–12). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-319-59424-8_1
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