论文标题
具有平稳敏感性的差异私人深度学习
Differentially Private Deep Learning with Smooth Sensitivity
论文作者
论文摘要
在许多实践领域,确保用于训练现代机器学习模型的敏感数据的隐私至关重要。研究这些问题的一种方法是通过差异隐私的视角。在此框架中,通常通过扰动模型以一种用于训练模型的数据的细节而获得的隐私保证。这种方法的一个特定实例是通过“教师学生”框架,其中拥有敏感数据的老师为学生提供了有用但嘈杂的信息,希望让学生模型在给定的任务上表现良好,而无需访问敏感数据的特定功能。因为更强的隐私保证通常涉及教师的更重要的扰动,因此从根本上部署现有框架涉及学生的绩效和隐私保证之间的权衡。先前作品中最重要的技术之一是教师模型的合奏,这些模型基于嘈杂的投票程序将信息返回给学生。在这项工作中,我们提出了一种具有平稳敏感性的新型投票机制,我们称之为不变的嘈杂gragmax,在某些条件下,可以在不影响传递给学生的有用信息的情况下从教师那里呈现很大的随机围绕。 与以前的工作相比,我们的方法对所有措施的最新方法都改进了,并扩展到具有更好的性能和更强隐私($ε\ 0 $)的较大任务。这个新提出的框架可以与任何机器学习模型一起应用,并为需要大量数据培训的任务提供了一个吸引人的解决方案。
Ensuring the privacy of sensitive data used to train modern machine learning models is of paramount importance in many areas of practice. One approach to study these concerns is through the lens of differential privacy. In this framework, privacy guarantees are generally obtained by perturbing models in such a way that specifics of data used to train the model are made ambiguous. A particular instance of this approach is through a "teacher-student" framework, wherein the teacher, who owns the sensitive data, provides the student with useful, but noisy, information, hopefully allowing the student model to perform well on a given task without access to particular features of the sensitive data. Because stronger privacy guarantees generally involve more significant perturbation on the part of the teacher, deploying existing frameworks fundamentally involves a trade-off between student's performance and privacy guarantee. One of the most important techniques used in previous works involves an ensemble of teacher models, which return information to a student based on a noisy voting procedure. In this work, we propose a novel voting mechanism with smooth sensitivity, which we call Immutable Noisy ArgMax, that, under certain conditions, can bear very large random noising from the teacher without affecting the useful information transferred to the student. Compared with previous work, our approach improves over the state-of-the-art methods on all measures, and scale to larger tasks with both better performance and stronger privacy ($ε\approx 0$). This new proposed framework can be applied with any machine learning models, and provides an appealing solution for tasks that requires training on a large amount of data.