The Social Dilemma of Big Data: Donating Personal Data to Promote Social Welfare

Kirsten Hillebrand, Lars Hornuf, Benjamin Müller, Daniel Vrankar
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引用次数: 7

Abstract

When using digital devices and services, individuals provide their personal data to organizations in exchange for gains in various domains of life. Organizations use these data to run technologies such as smart assistants, augmented reality, and robotics. Most often, these organizations seek to make a profit. Individuals can, however, also provide personal data to public databases that enable nonprofit organizations to promote social welfare if sufficient data are contributed. Regulators have therefore called for efficient ways to help the public collectively benefit from its own data. By implementing an online experiment among 1,696 US citizens, we find that individuals would donate their data even when at risk of getting leaked. The willingness to provide personal data depends on the risk level of a data leak but not on a realistic impact of the data on social welfare. Individuals are less willing to donate their data to the private industry than to academia or the government. Finally, individuals are not sensitive to whether the data are processed by a human-supervised or a self-learning smart assistant.
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大数据的社会困境:捐赠个人数据促进社会福利
在使用数字设备和服务时,个人向组织提供他们的个人数据,以换取生活中各个领域的收益。组织使用这些数据来运行智能助手、增强现实和机器人等技术。大多数情况下,这些组织寻求盈利。然而,个人也可以向公共数据库提供个人数据,如果提供了足够的数据,非营利组织就可以促进社会福利。因此,监管机构呼吁采取有效方式,帮助公众从自己的数据中集体受益。通过对1696名美国公民进行的一项在线实验,我们发现,即使有泄露的风险,人们也会捐赠他们的数据。提供个人资料的意愿取决于资料外泄的风险程度,而不取决于资料对社会福利的实际影响。与学术界或政府相比,个人更不愿意将自己的数据捐赠给私营企业。最后,个人对数据是由人类监督还是自主学习的智能助手处理并不敏感。
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