Point process models are of great importance in real world applications. In certain critical applications, estimation of point process models involves large amounts of sensitive personal data from users. Privacy concerns naturally arise which have not been addressed in the existing literature. To bridge this glaring gap, we propose the first general differentially private estimation procedure for point process models. Specifically, we take the Hawkes process as an example, and introduce a rigorous definition of differential privacy for event stream data based on a discretized representation of the Hawkes process. We then propose two differentially private optimization algorithms, which can efficiently estimate Hawkes process models with the desired privacy and utility guarantees under two different settings. Experiments are provided to back up our theoretical analysis.
翻译:在现实世界应用中,点数过程模型非常重要。在某些关键应用中,点数过程模型的估算涉及用户的大量敏感个人数据。隐私问题自然出现,而现有文献中尚未涉及。为了弥合这一明显差距,我们建议了点数过程模型的第一种一般性的、有差别的私人估计程序。具体地说,我们以霍克斯进程为例,根据霍克斯进程的一个分散的表述,对事件流数据采用严格的隐私定义。然后,我们提出了两种有差别的私人优化算法,可以有效地估计霍克斯进程模型,在两种不同环境下,以所需的隐私和公用事业保障为理想。我们提供了实验,以作为理论分析的后盾。