论文标题
从安全计算输出中了解信息披露:平均工资计算的研究
Understanding Information Disclosure from Secure Computation Output: A Study of Average Salary Computation
论文作者
论文摘要
近年来,安全的多方计算的性能得到了重大改进,并且正在越来越多地用于商业产品。尽管大量工作致力于在标准安全模型下提高其效率,但威胁模型并未考虑到安全功能评估的输出的信息泄漏。量化有关观察功能结果的私人投入的信息披露是这项工作的主题。在波士顿市性别薪酬差距研究的推动下,在这项工作中,我们着重于计算薪水的平均值,并通过信息理论技术量化有关一个或多个参与者(目标)私人投入(目标)的私人投入的信息披露。我们研究了许多分布,包括对数正态,通常用于建模工资。因此,我们评估信息披露在重复评估重叠输入的平均功能后,就像波士顿性别薪酬研究多次进行的那样,并为使用安全计算应用程序中的总和和平均功能提供了建议。我们的目标是开发机制,将有关参与者的输入的信息披露降低到所需的水平,并提供对该功能进行现实世界中安全评估的准则。
Secure multi-party computation has seen substantial performance improvements in recent years and is being increasingly used in commercial products. While a significant amount of work was dedicated to improving its efficiency under standard security models, the threat models do not account for information leakage from the output of secure function evaluation. Quantifying information disclosure about private inputs from observing the function outcome is the subject of this work. Motivated by the City of Boston gender pay gap studies, in this work we focus on the computation of the average of salaries and quantify information disclosure about private inputs of one or more participants (the target) to an adversary via information-theoretic techniques. We study a number of distributions including log-normal, which is typically used for modeling salaries. We consequently evaluate information disclosure after repeated evaluation of the average function on overlapping inputs, as was done in the Boston gender pay study that ran multiple times, and provide recommendations for using the sum and average functions in secure computation applications. Our goal is to develop mechanisms that lower information disclosure about participants' inputs to a desired level and provide guidelines for setting up real-world secure evaluation of this function.