社会利益是否证明冒个人隐私的风险是正当的?

R. Ramakrishnan, Geoffrey I. Webb
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引用次数: 1

摘要

当数据驱动的改进涉及个人身份数据,甚至可用于推断个人敏感信息的数据时,我们面临着潜在的隐私风险。当我们看到越来越多地强调使用数据挖掘来改善一系列对社会有益的活动时,从改善有才能的学生与高等教育机会的匹配,或改善竞争学校项目的资金分配,或减少手术后的住院时间,这种困境往往特别严重。所涉及的数据通常是个人身份或暴露和敏感的,许多必须参与收集和维护数据保管的机构没有足够的设备来保护数据,从而增加了隐私泄露的风险。我们应该如何处理这种权衡?我们能评估风险吗?我们能控制或减轻它们吗?我们能否制定指导方针,说明什么时候值得冒险,什么时候不值得冒险,以及如何在不同的常见场景中最好地处理数据?主席Raghu Ramakrishnan和Geoffrey I. Webb将这个由领先的数据挖掘者和隐私专家组成的小组聚集在一起解决这些关键问题。
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Does social good justify risking personal privacy?
When data-driven improvements involve personally identifiable data, or even data that can be used to infer sensitive information about individuals, we face the dilemma that we potentially risk compromising privacy. As we see increased emphasis on using data mining to effect improvements in a range of socially beneficial activities, from improving matching of talented students to opportunities for higher education, or improving allocation of funds across competing school programs, or reducing hospitalization time following surgery, the dilemma can often be especially acute. The data involved often is personally identifiable or revealing and sensitive, and many of the institutions that must be involved in gathering and maintaining custody of the data are not equipped to adequately secure the data, raising the risk of privacy breaches. How should we approach this trade-off? Can we assess the risks? Can we control or mitigate them? Can we develop guidelines for when the risk is or is not worthwhile, and for how best to handle data in different common scenarios? Chairs Raghu Ramakrishnan and Geoffrey I. Webb bring this panel of leading data miners and privacy experts together to address these critical issues.
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KDD '22: The 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Washington, DC, USA, August 14 - 18, 2022 KDD '21: The 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, Singapore, August 14-18, 2021 Mutually Beneficial Collaborations to Broaden Participation of Hispanics in Data Science Bringing Inclusive Diversity to Data Science: Opportunities and Challenges A Causal Look at Statistical Definitions of Discrimination
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