In this paper, we outline a way to deploy a privacy-preserving protocol for multiparty Randomized Controlled Trials on the scale of 500 million rows of data and more than a billion gates. Randomized Controlled Trials (RCTs) are widely used to improve business and policy decisions in various sectors such as healthcare, education, criminology, and marketing. A Randomized Controlled Trial is a scientifically rigorous method to measure the effectiveness of a treatment. This is accomplished by randomly allocating subjects to two or more groups, treating them differently, and then comparing the outcomes across groups. In many scenarios, multiple parties hold different parts of the data for conducting and analyzing RCTs. Given privacy requirements and expectations of each of these parties, it is often challenging to have a centralized store of data to conduct and analyze RCTs. We accomplish this by a three-stage solution. The first stage uses the Private Secret Share Set Intersection (PS$^3$I) solution to create a joined set and establish secret shares without revealing membership, while discarding individuals who were placed into more than one group. The second stage runs multiple instances of a general purpose MPC over a sharded database to aggregate statistics about each experimental group while discarding individuals who took an action before they received treatment. The third stage adds distributed and calibrated Differential Privacy (DP) noise to the aggregate statistics and uncertainty measures, providing formal two-sided privacy guarantees. We also evaluate the performance of multiple open source general purpose MPC libraries for this task. We additionally demonstrate how we have used this to create a working ads effectiveness measurement product capable of measuring hundreds of millions of individuals per experiment.
翻译:在本文中,我们概述了如何在5亿行的数据和10亿多扇门的尺度上为多党控制审判部署一个隐私保护协议。随机控制审判(RCTs)被广泛用于改善保健、教育、犯罪学和营销等不同部门的商业和政策决策。随机控制审判是衡量治疗有效性的严格科学方法。通过随机地将主题分配给两个或两个以上群体,区别对待他们,然后比较各组的结果。在许多情况下,多个当事方持有不同部分的数据用于进行和分析RCT。鉴于每个当事方的隐私要求和期望,随机控制审判(RCTs)被广泛用于改善医疗保健、教育、犯罪学和营销等不同部门的商业和政策决策。随机控制审判是衡量治疗有效性的严格方法。第一阶段使用私人保密共享接口(PS3$I)解决方案来创建一组组合,在不透露会员身份的情况下建立公开份额,同时抛弃被置于一个以上群体的个人。在第二个阶段,由于每个当事方的隐私要求和期望,每个当事方的保密数据集中储存库往往具有挑战性,要有一个集中储存数据库来进行和分析RCT。我们每个实验室使用一个多用途的多级数据库,然后将多少次测试。