评估和解决经济不平等的可访问隐私保护网络数据分析

A. Lapets, Frederick Jansen, Kinan Dak Albab, Rawane Issa, Lucy Qin, Mayank Varia, Azer Bestavros
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引用次数: 32

摘要

旨在解决任何形式普遍存在的不平等现象的举措的一个重要组成部分是能够收集有关现状基线和可归因于规定和部署的干预措施的任何改善的经验证据。不幸的是,可能会出现两个重大障碍,阻止此类经验证据的收集和分析:(1)数据本身的敏感性;(2)缺乏技术复杂性和基础设施,既可用于倡议的受益者,也可用于倡议的先驱者。在过去的几年里,已经证明了一种称为安全多方计算(MPC)的加密原语可以为这个难题提供一种自然的技术解决方案。MPC允许其他不感兴趣的第三方贡献其技术专长和资源,以避免自身产生任何额外的责任,并且(与直觉相反)减少现有各方为实现其数据分析目标而必须接受的数据暴露水平。然而,实现这些好处需要精心设计MPC工具和框架,这些工具和框架的可访问性水平对于基础设施和专业知识有限的非技术用户来说是最先进的。我们描述了我们自己在设计、实现和部署这些可用的web应用程序以进行安全数据分析的经验,这些应用程序是在两个专注于促进经济平等的现实世界倡议的背景下进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accessible Privacy-Preserving Web-Based Data Analysis for Assessing and Addressing Economic Inequalities
An essential component of initiatives that aim to address pervasive inequalities of any kind is the ability to collect empirical evidence of both the status quo baseline and of any improvement that can be attributed to prescribed and deployed interventions. Unfortunately, two substantial barriers can arise preventing the collection and analysis of such empirical evidence: (1) the sensitive nature of the data itself and (2) a lack of technical sophistication and infrastructure available to both an initiative's beneficiaries and to those spearheading it. In the last few years, it has been shown that a cryptographic primitive called secure multi-party computation (MPC) can provide a natural technological resolution to this conundrum. MPC allows an otherwise disinterested third party to contribute its technical expertise and resources, to avoid incurring any additional liabilities itself, and (counterintuitively) to reduce the level of data exposure that existing parties must accept to achieve their data analysis goals. However, achieving these benefits requires the deliberate design of MPC tools and frameworks whose level of accessibility to non-technical users with limited infrastructure and expertise is state-of-the-art. We describe our own experiences designing, implementing, and deploying such usable web applications for secure data analysis within the context of two real-world initiatives that focus on promoting economic equality.
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