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首页> 外文期刊>Journal of management information systems >The Role of Push-Pull Technology in Privacy Calculus: The Case of Location-Based Services
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The Role of Push-Pull Technology in Privacy Calculus: The Case of Location-Based Services

机译:推挽技术在隐私演算中的作用:基于位置的服务

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摘要

Location-based services (LBS) use positioning technologies to provide individual users with reachability and accessibility that would otherwise not be available in the conventional commercial realm. While LBS confer greater connectivity and personalization on consumers, they also threaten users' information privacy through granular tracking of their preferences, behaviors, and identity. To address privacy concerns in the LBS context, this study extends the privacy calculus model to explore the role of information delivery mechanisms (pull and push) in the efficacy of three privacy intervention approaches (compensation, industry self-regulation, and government regulation) in influencing individual privacy decision making. The research model was tested using data gathered from 528 respondents through a quasi-experimental survey method. Structural equations modeling using partial least squares validated the instrument and the proposed model. Results suggest that the effects of the three privacy intervention approaches on an individual's privacy calculus vary based on the type of information delivery mechanism (pull and push). Results suggest that providing financial compensation for push-based LBS is more important than it is for pull-based LBS. Moreover, this study shows that privacy advocates and government legislators should not treat all types of LBS as undifferentiated but could instead specifically target certain types of services.
机译:基于位置的服务(LBS)使用定位技术为单个用户提供可达性和可访问性,而这些功能在常规商业领域中是无法获得的。虽然LBS为消费者提供了更大的连接性和个性化设置,但它们也通过细化其偏好,行为和身份的跟踪,威胁了用户的信息隐私。为了解决LBS上下文中的隐私问题,本研究扩展了隐私演算模型,以探索信息传递机制(拉和推)在三种隐私干预方法(补偿,行业自我监管和政府监管)的有效性中的作用。影响个人隐私决策。使用从528名受访者通过准实验调查方法收集的数据对研究模型进行了测试。使用偏最小二乘的结构方程建模对仪器和所提出的模型进行了验证。结果表明,三种隐私干预方法对个人隐私演算的影响随信息传递机制(拉和推)的类型而异。结果表明,为基于推送的LBS提供经济补偿比基于拉动的LBS更重要。此外,这项研究表明,隐私权倡导者和政府立法者不应将所有类型的LBS视为未区别对待,而应专门针对某些类型的服务。

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