Directly motivated by security-related applications from the Homeland Security Enterprise, we focus on the privacy-preserving analysis of graph data, which provides the crucial capacity to represent rich attributes and relationships. In particular, we discuss two directions, namely privacy-preserving graph generation and federated graph learning, which can jointly enable the collaboration among multiple parties each possessing private graph data. For each direction, we identify both "quick wins" and "hard problems". Towards the end, we demonstrate a user interface that can facilitate model explanation, interpretation, and visualization. We believe that the techniques developed in these directions will significantly enhance the capabilities of the Homeland Security Enterprise to tackle and mitigate the various security risks.
翻译:直接受国土安全企业与安全有关的应用程序驱动,我们注重对图表数据进行隐私保护分析,该分析提供了代表丰富属性和关系的关键能力,特别是我们讨论两个方向,即:保护隐私的图表生成和联合图表学习,这可以共同促成拥有私人图表数据的多个当事方之间的合作。对于每一个方向,我们确定“速赢”和“难题”。最后,我们展示了一个用户界面,可以促进示范解释、解释和可视化。我们认为,在这些方向上开发的技术将大大增强国土安全企业处理和减轻各种安全风险的能力。