论文标题
流式传输少量隐私
Streaming Submodular Maximization with Differential Privacy
论文作者
论文摘要
在这项工作中,我们研究了在流式设置中私下提高子模型功能的问题。当功能取决于个人的私人数据时,在一般情况下,已经完成了有关私人最大化的子模块功能的广泛工作。但是,当从目标函数域绘制的数据流的大小很大或到达很快时,必须私下优化流式设置约束内的目标。我们为此问题建立了基本的差异性基线,然后在特殊情况下,在隐私和实用程序之间取得更好的权衡。当可以将其写入子模块函数的总和时,下函数可以分解;当每个求和功能对个人的实用性建模时,这种结构自然就会产生,而目标是像著名的组合公共项目问题一样研究整个人群的总效用。最后,我们通过实验佐证将理论分析补充。
In this work, we study the problem of privately maximizing a submodular function in the streaming setting. Extensive work has been done on privately maximizing submodular functions in the general case when the function depends upon the private data of individuals. However, when the size of the data stream drawn from the domain of the objective function is large or arrives very fast, one must privately optimize the objective within the constraints of the streaming setting. We establish fundamental differentially private baselines for this problem and then derive better trade-offs between privacy and utility for the special case of decomposable submodular functions. A submodular function is decomposable when it can be written as a sum of submodular functions; this structure arises naturally when each summand function models the utility of an individual and the goal is to study the total utility of the whole population as in the well-known Combinatorial Public Projects Problem. Finally, we complement our theoretical analysis with experimental corroboration.