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Understanding Motivations for Facebook Use: Usage Metrics, Network Structure, and Privacy

机译:了解Facebook使用的动机:使用指标,网络结构和隐私

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This study explores the links between motives for using a social network service and numerical measures of that activity. Specifically, it identified motives for Facebook use by employing a Uses and Gratifications (U&G) approach and then investigated the extent to which these motives can be predicted through usage and network metrics collected automatically via the Facebook API. In total, 11 Facebook usage metrics and eight personal network metrics served as predictors. Results showed that all three variable types in this expanded U&G frame of analysis (covering social antecedents, usage metrics, and personal network metrics) effectively predicted motives and highlighted interesting behaviors. To further illustrate the power of this framework, the intricate nature of privacy in social media was explored and relationships drawn between privacy attitudes (and acts) and measures of use and network structure.
机译:本研究探讨了使用社交网络服务的动机与该活动的数值措施之间的联系。具体而言,它通过采用使用和满足(U&G)方法来确定Facebook使用的动机,然后通过使用Facebook API自动收集的网络测量来调查这些动机的程度。总共11个Facebook使用量和八个个人网络指标作为预测因素。结果表明,这种扩展的U&G中的所有三种变量类型(覆盖了社会前书,使用度量指标和个人网络指标)有效地预测了动机,并突出了有趣的行为。为了进一步说明这一框架的力量,探讨了社交媒体隐私的复杂性,并在隐私态度(和行为)和使用措施和网络结构之间绘制的关系。

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