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首页> 外文期刊>Journal of Cybersecurity >Predicting smartphone location-sharing decisions through self-reflection on past privacy behavior
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Predicting smartphone location-sharing decisions through self-reflection on past privacy behavior

机译:通过对过去隐私行为的自我反思预测智能手机定位决策

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Smartphone location sharing is a particularly sensitive type of information disclosure that has implications for users’ digital privacy and security as well as their physical safety. To understand and predict location disclosure behavior, we developed an Android app that scraped metadata from users’ phones, asked them to grant the location-sharing permission to the app, and administered a survey. We compared the effectiveness of using self-report measures commonly used in the social sciences, behavioral data collected from users’ mobile phones, and a new type of measure that we developed, representing a hybrid of self-report and behavioral data to contextualize users’ attitudes toward their past location-sharing behaviors. This new type of measure is based on a reflective learning paradigm where individuals reflect on past behavior to inform future behavior. Based on data from 380 Android smartphone users, we found that the best predictors of whether participants granted the location-sharing permission to our app were: behavioral intention to share information with apps, the “FYI” communication style, and one of our new hybrid measures asking users whether they were comfortable sharing location with apps currently installed on their smartphones. Our novel, hybrid construct of self-reflection on past behavior significantly improves predictive power and shows the importance of combining social science and computational science approaches for improving the prediction of users’ privacy behaviors. Further, when assessing the construct validity of the Behavioral Intention construct drawn from previous location-sharing research, our data showed a clear distinction between two different types of Behavioral Intention: self-reported intention to use mobile apps versus the intention to share information with these apps. This finding suggests that users desire the ability to use mobile apps without being required to share sensitive information, such as their location. These results have important implications for cybersecurity research and system design to meet users’ location-sharing privacy needs.
机译:智能手机位置共享是一种特别敏感的信息披露类型,对用户的数字隐私和安全以及其物理安全有影响。要了解和预测位置泄露行为,我们开发了一个Android应用程序从用户的手机刮下元数据,要求他们授予应用程序的位置共享权限,并管理调查。我们比较了使用社会科学常用的自我报告措施的有效性,从用户的移动电话中收集的行为数据以及我们开发的新类型的衡量标准,代表了自我报告和行为数据的混合,以上下文化用户对他们过去的位置共享行为的态度。这种新型的措施基于反射性学习范式,其中个人反映过去的行为以告知未来的行为。基于来自380个Android智能手机用户的数据,我们发现参与者是否授予我们应用程序的位置共享许可的最佳预测因素是:行为意图与应用程序分享信息,“FYI”通信风格以及我们的新混合动力车之一措施询问用户他们是否习惯于与当前安装在其智能手机上的应用程序。我们的新颖,混合杂交构建过去行为的自我反思显着提高了预测的权力,并表明了组合社会科学和计算科学方法来改善用户隐私行为的预测的重要性。此外,在评估从先前的位置共享研究中汲取的行为意图构建的构建有效性时,我们的数据显示了两种不同类型的行为意图之间的明确区别:自我报告的意图使用移动应用程序与分享信息共享信息的意图应用。此发现表明,用户希望能够使用移动应用程序而不需要共享敏感信息,例如它们的位置。这些结果对网络安全研究和系统设计具有重要意义,以满足用户的位置共享隐私需求。

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