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Identifying commonalities and differences in personality characteristics of Internet and social media addiction profiles: traits, self-esteem, and self-construal

机译:识别互联网和社交媒体成瘾特征的共性和个性特征上的差异:特质,自尊和自我建构

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Excessive use of the Internet and social media has been associated with behavioural addiction, which sparked the researchers' interest in gaining a better understanding of this global phenomenon. The aim of this study was to fill a gap in knowledge by using just one sample to identify similarities and differences in relationships between technology addictions and personality characteristics, especially traits, self-esteem, and self-construal. The sample consisted of 512 undergraduate students. The results showed that Internet addiction and social media addiction shared many more similarities than differences. Agreeableness, conscientiousness, openness to experiences, emotional stability, self-esteem, the frequency of checking account, and Internet usage were predictors of both Internet addiction and social media addiction. Age, satisfaction with life, and interdependent self-construal did not predict Internet addiction or social media addiction, whereas real self and extraversion predicted Internet addiction only, and gender, posting updates, a number of friends, and independent self-construal predicted social media addiction only. These results provide some basis for an understanding of Internet and social media addiction profiles.
机译:过度使用互联网和社交媒体与行为成瘾有关,这激发了研究人员对更好地了解这一全球现象的兴趣。这项研究的目的是通过仅使用一个样本来识别技术成瘾与人格特征(尤其是特质,自尊和自我建构)之间关系的异同来填补知识空白。样本由512名本科生组成。结果表明,网络成瘾和社交媒体成瘾的共同点是共同点,而不是差异。令人愉快,认真,开放的经验,稳定的情绪,自尊心,支票频率和互联网使用情况都是网络成瘾和社交媒体成瘾的预测因素。年龄,对生活的满意度以及相互依存的自我建构并不能预测互联网成瘾或社交媒体成瘾,而真实的自我和外向性只能预测互联网成瘾,而性别,发布更新,很多朋友和独立的自我建构可以预测社交媒体成瘾。仅上瘾。这些结果为理解互联网和社交媒体成瘾概况提供了基础。

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