To disclose or to protect? Predicting social media users’ behavioral intention toward privacy

Minghong Chen, Xiumei Huang, Xianjun Qi
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Abstract

PurposeIn the paradox of personalized services and privacy risks, what factors influence users’ decisions is considered an interesting issue worth exploring. The current study aims to empirically explore privacy behavior of social media users by developing a theoretical model based on privacy calculus theory.Design/methodology/approachPrivacy risks, conceptualized as natural risks and integrated risks, were proposed to affect the intention of privacy disclosure and protection. The model was validated through a hybrid approach of structural equation modeling (SEM)-artificial neural network (ANN) to analyze the data collected from 527 effective responses.FindingsThe results from the SEM analysis indicated that social interaction and perceived enjoyment were strong determinants of perceived benefits, which in turn played a dominant role in the intention to disclose the privacy in social media. Similarly, trust and privacy invasion experience were significantly related to perceived risks that had the most considerable effect on users’ privacy protection intention. And the following ANN models revealed consistent relationships and rankings with the SEM results.Originality/valueThis study broadened the application perspective of privacy calculus theory to identify both linear and non-linear effects of privacy risks and privacy benefits on users’ intention to disclose or protect their privacy by using a state-of-the-art methodological approach combining SEM and ANN.
公开还是保护?社交媒体用户的隐私行为意向预测
目的 在个性化服务与隐私风险的矛盾中,哪些因素会影响用户的决定是一个值得探讨的有趣问题。本研究旨在通过建立一个基于隐私微积分理论的理论模型,对社交媒体用户的隐私行为进行实证探索。设计/方法/途径隐私风险被概念化为自然风险和综合风险,被提出来影响隐私披露和保护的意向。通过结构方程建模(SEM)--人工神经网络(ANN)的混合方法,对从 527 个有效回复中收集到的数据进行分析,验证了该模型。同样,信任和隐私被侵犯的经历与感知风险显著相关,而感知风险对用户隐私保护意向的影响最大。本研究拓宽了隐私微积分理论的应用视角,通过结合 SEM 和 ANN 的先进方法,识别了隐私风险和隐私利益对用户披露或保护隐私意向的线性和非线性影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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