是什么推动了学生在社交媒体上的在线自我披露行为?SEM和人工智能的混合方法

IF 0.7 4区 管理学 Q3 COMMUNICATION
Ibrahim Arpaci
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引用次数: 8

摘要

本研究采用互补结构方程建模(SEM)和人工智能方法,调查了社交媒体上在线自我披露行为的驱动因素。该研究基于“计划行为理论”(TPB)和“通信隐私管理”(CPM)理论开发了一个理论模型。基于300名本科生的数据,采用多分析方法对预测模型进行了验证。该模型侧重于安全、隐私和信任感知在预测人们对自拍发布行为的态度中的作用。研究结果表明,隐私和安全与信任显著相关,这解释了态度的显著差异。一致地,机器学习分类算法的结果表明,在大多数情况下,安全、隐私和信任属性可以预测态度,准确率超过61%。此外,中介分析结果表明,隐私对态度没有直接影响,而是间接影响。这些发现表明,在隐私问题和实际行为的感知利益之间存在权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What drives students’ online self-disclosure behavior on social media? A hybrid SEM and artificial intelligence approach
This study investigated drivers of the online self-disclosure behaviour on social media by employing a complementary structural equation modelling (SEM) and artificial intelligence approach. The study developed a theoretical model based on the 'theory of planned behaviour' (TPB) and 'communication privacy management' (CPM) theory. The predictive model was validated by employing a multi-analytical approach based on the data obtained from 300 undergraduate students. The model focused on the role of security, privacy, and trust perceptions in predicting the attitudes toward the selfie-posting behaviour. The results suggested that privacy and security are significantly associated with the trust, which explains a significant amount of the variance in the attitudes. Consistently, results of the machine-learning classification algorithms suggested that attributes of the security, privacy, and trust could predict the attitudes with an accuracy of more than 61%% in most cases. Further, mediation analysis results indicated that privacy has no direct effect, but an indirect effect on the attitudes. These findings suggested a trade-off between the privacy concerns and perceived benefits of the actual behaviour.
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来源期刊
自引率
12.50%
发文量
66
期刊介绍: The world of mobile communications is not a trend, but a phenomenon. IJMC, a fully refereed journal, publishes articles that present current practice and theory of mobile communications, mobile technology, and mobile commerce applications. Topics covered include Integrated mobile marketing communications Wireless advertising/CRM Telematics, pervasive computing Incoming/outgoing wireless links Location management Diffusion, security, efficacy, interaction/integration Metric mobile business enterprises PDAs in services delivery M-/u-business models, m-/u-commerce Digital office, groupware, roomware Mobile ad hoc networking, wireless information assurance Nomadic/portable communications Cross-cultural mobile communications Teaching mobile communication applications Mobile/handheld devices in the classroom, tele-learning.
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