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Exploring Unorthodox Predictors of Smartphone Addiction During the COVID-19 Outbreak

2021 6th International Conference on Information Technology Research (ICITR)(2021)

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Abstract
Smartphones became an integral part of household & corporate management across all industries which resulted in high screen time, & smartphone addiction during the pandemic. This study attempts to examine the association between sociodemographic factors, & perceived smartphone addiction towards real smartphone addiction. Kwon's (2013) validated Smartphone Addiction Survey was used to collect data from the identified subjects (n = 192), and descriptive analyzes and statistical crosstabs were used to infer the associations. The results portray that Sex and Age are strong predictors of smartphone addiction: females over males tend to get addicted to smartphones, while age below 25 is highly addicted to smartphones, and age over 41 is less smartphone addict. The level of education is a moderately fair predictor of smartphone addiction. The higher the level of education, the higher the tendency to become addicted to smartphones. Marital status is not a good predictor of smartphone addiction in context, and there is no difference between being married or not of smartphone addiction. Perceived smartphone addiction is a good predictor of smartphone addiction, who believe they are addicted are more likely to become addicted to smartphones, and vice versa.
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Key words
Pandemics,Education,Sociology,Psychology,Physiology,Reliability,Synthetic aperture sonar
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