Since its introduction in 2006, differential privacy has emerged as a predominant statistical tool for quantifying data privacy in academic works. Yet despite the plethora of research and open-source utilities that have accompanied its rise, with limited exceptions, differential privacy has failed to achieve widespread adoption in the enterprise domain. Our study aims to shed light on the fundamental causes underlying this academic-industrial utilization gap through detailed interviews of 24 privacy practitioners across 9 major companies. We analyze the results of our survey to provide key findings and suggestions for companies striving to improve privacy protection in their data workflows and highlight the necessary and missing requirements of existing differential privacy tools, with the goal of guiding researchers working towards the broader adoption of differential privacy. Our findings indicate that analysts suffer from lengthy bureaucratic processes for requesting access to sensitive data, yet once granted, only scarcely-enforced privacy policies stand between rogue practitioners and misuse of private information. We thus argue that differential privacy can significantly improve the processes of requesting and conducting data exploration across silos, and conclude that with a few of the improvements suggested herein, the practical use of differential privacy across the enterprise is within striking distance.
翻译:自2006年推出以来,差异隐私权已成为学术工作数据隐私量化的主要统计工具,尽管随研究量和开放源码公用设施激增,但除少数例外情况外,差异隐私权未能在企业领域得到广泛采纳。我们的研究旨在通过详细采访9个大公司的24名隐私从业人员,揭示这一学术-工业利用差距的根本原因。我们分析了调查结果,为努力在其数据工作流程中改进隐私保护的公司提供关键调查结果和建议,并突出强调现有差异隐私工具的必要和缺失要求,目的是指导研究人员更广泛地采用差异隐私。我们的调查结果表明,分析人员在请求获取敏感数据方面经历了漫长的官僚程序,但一旦获准,在无赖从业者和滥用私人信息之间,只有极少执行的隐私政策。我们因此认为,差异隐私可以大大改善各服务库之间要求和进行数据探索的过程,并得出结论认为,随着本文中建议的几项改进,不同隐私的实际使用跨企业间距离很远。