Elucidating the role of emotion in privacy-concerns: A text-Convolutional Neural Network (Text-CNN)-based tweets analysis of contact tracing apps: Elucidating the role of emotion in privacy-concerns

Mihir Mehta, S. De, Manojit Chattopadhyay
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Abstract

The extant contact tracing privacy literature is yet to explore the significance of user emotions in privacy-related decision-making such as whether to use such potentially privacy-invasive apps. Using social media analytics, the present study examines users’ privacy-related emotions stimulated by privacy-related aspects of contact tracing apps. A text-Convolutional Neural Network (Text-CNN)-based emotion analysis of tweets on the Indian contact tracing app Aarogya Setu and its Singaporean counterpart TraceTogether conducted in the paper reveals that users expressed negative privacy-related emotions towards these apps indicating high levels of perceived privacy risks and the perceived lack of privacy protection. For TraceTogether, users have also exhibited positive emotions to appreciate the steps taken by the government to protect their privacy. Based on these findings, the government/data controllers can devise strategies to assuage users’ negative emotions and promote positive emotions to encourage the adoption of contact tracing apps. This work incorporates privacy related emotions as key informants about user privacy concerns within the Privacy Calculus Theory. By relying on candid user opinions available through rich but inexpensive user-generated content, the research provides a quick, reliable, and cost-effective approach to study potential app users’ emotions to gain insights into privacy concerns related to any e-governance platform.
阐明情感在隐私问题中的作用:基于文本卷积神经网络(Text-CNN)的接触追踪应用的推文分析:阐明情感在隐私问题中的作用
现有的接触追踪隐私文献尚未探讨用户情绪在隐私相关决策中的意义,例如是否使用这些可能侵犯隐私的应用程序。使用社交媒体分析,本研究考察了接触追踪应用程序的隐私相关方面所激发的用户隐私相关情绪。本文对印度联系人追踪应用Aarogya Setu和新加坡TraceTogether上的推文进行了基于文本卷积神经网络(Text-CNN)的情绪分析,发现用户对这些应用表达了负面的隐私相关情绪,这表明他们认为隐私风险很高,并且认为缺乏隐私保护。在TraceTogether上,用户也表现出积极的情绪,感谢政府为保护他们的隐私所采取的措施。基于这些发现,政府/数据控制者可以制定策略来缓解用户的负面情绪,促进积极情绪,以鼓励采用接触者追踪应用程序。这项工作将隐私相关情绪作为隐私微积分理论中用户隐私关注的关键信息。通过通过丰富而廉价的用户生成内容获取坦诚的用户意见,该研究提供了一种快速、可靠、经济的方法来研究潜在应用程序用户的情绪,从而深入了解与任何电子政务平台相关的隐私问题。
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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