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Weiyi Sun; Miao Chao – Education and Information Technologies, 2024
The use of social media among students has gained significant attention due to its potential impact on academic performance, characterized by both positive and negative effects. However, limited research exists regarding the different types of excessive social media use and their influence on academic performance. In this innovative study, we aim…
Descriptors: Social Media, Mass Media Use, Academic Achievement, Time Management
Onat Kocabiyik, Oya – International Journal of Research in Education and Science, 2021
The aim of this study is to determine the social media addiction levels of university students and examine whether their social comparison orientations and ruminative responses significantly predict social media addiction. The study group consists of 261 university students. "Social Media Addiction Scale", "Iowa-Netherlands Social…
Descriptors: Social Media, College Students, Addictive Behavior, Predictor Variables
Odaci, Hatice; Degerli, Fatma Irem; Cikrikci, Neslihan – Journal of Psychologists and Counsellors in Schools, 2021
The purpose of this research was to examine internet addiction among high school and university students in terms of interpersonal relationships, automatic thoughts and problem-solving skills. The sample of the study comprised a total of 480 participants: 195 (40.6%) high school and 285 (59.4%) university students. Females constituted 53.3% (256)…
Descriptors: Addictive Behavior, Internet, High School Students, College Students
Sagar, Mehmet Enes – International Education Studies, 2021
The aim of this study is to examine how cognitive flexibility and self-control variables predict the social media addiction levels of university students. Relational model-based screening conducted in the 2020-2021 academic year. The research group studying this study in different universities in Turkey, 230 (47%) were male and 259 (53%) were…
Descriptors: Cognitive Processes, Self Control, Adjustment (to Environment), Social Media
Akkus Çutuk, Zeynep – Malaysian Online Journal of Educational Technology, 2021
The present study aimed at testing a model developed to uncover the relationships among social media addiction, cognitive absorption, and self-esteem. This study's sample consisted of 361 university students, 198 of whom were females, and 163 were males. Data were collected using the Social Media Addiction Scale (SMAS), the Cognitive Absorption…
Descriptors: Social Media, Addictive Behavior, Handheld Devices, Telecommunications
Defoe, Ivy N.; Semon Dubas, Judith; Somerville, Leah H.; Lugtig, Peter; van Aken, Marcel A. G. – Developmental Psychology, 2016
Adolescence is a vulnerable period for the initiation and peak of many harmful risk-taking behaviors such as smoking, which is among the most addictive and deadliest behaviors. Generic metatheories like the theory of triadic influence (TTI) suggest that interrelated risk factors across multiple domains (i.e., intrapersonal and…
Descriptors: Adolescents, Smoking, At Risk Persons, Addictive Behavior
Celik, Vehbi; Yesilyurt, Etem; Korkmaz, Ozgen; Usta, Ertugrul – EURASIA Journal of Mathematics, Science & Technology Education, 2014
In this research internet addiction has been dealt with as predictor and predicted variable, this situation has been analyzed from the perspectives of loneliness and cognitive absorption and a tangible model has been put forth. Participant group has been constituted by 338 teacher candidates. Research data were collected using loneliness scale…
Descriptors: Internet, Addictive Behavior, Predictor Variables, Cognitive Processes
Donati, Maria Anna; Chiesi, Francesca; Primi, Caterina – Journal of Adolescence, 2013
This study aimed at testing a model in which cognitive, dispositional, and social factors were integrated into a single perspective as predictors of gambling behavior. We also aimed at providing further evidence of gender differences related to adolescent gambling. Participants were 994 Italian adolescents (64% Males; Mean age = 16.57).…
Descriptors: Adolescents, Addictive Behavior, Cognitive Processes, Gender Differences

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