Knowledge Graph (KG) has attracted more and more companies' attention for its ability to connect different types of data in meaningful ways and support rich data services. However, the data isolation problem limits the performance of KG and prevents its further development. That is, multiple parties have their own KGs but they cannot share with each other due to regulation or competition reasons. Therefore, how to conduct privacy preserving KG becomes an important research question to answer. That is, multiple parties conduct KG related tasks collaboratively on the basis of protecting the privacy of multiple KGs. To date, there is few work on solving the above KG isolation problem. In this paper, to fill this gap, we summarize the open problems for privacy preserving KG in data isolation setting and propose possible solutions for them. Specifically, we summarize the open problems in privacy preserving KG from four aspects, i.e., merging, query, representation, and completion. We present these problems in details and propose possible technical solutions for them. Moreover, we present three privacy preserving KG-aware applications and simply describe how can our proposed techniques be applied into these applications.
翻译:知识图(KG)吸引了越来越多的公司关注其以有意义的方式连接不同类型数据并支持丰富数据服务的能力。然而,数据孤立问题限制了KG的绩效,阻碍了其进一步发展。这就是说,多个当事方有自己的KG,但由于规章或竞争的原因,它们无法相互分享。因此,如何进行隐私保护KG成了一个重要的研究问题。这就是说,多个当事方在保护多个KG的隐私的基础上合作执行与KG有关的任务。到目前为止,解决上述KG孤立问题的工作很少。为了填补这一空白,我们在本文件中总结了在数据隔离设置中保护KG的隐私的公开问题,并为它们提出可能的解决办法。具体地说,我们总结了保护KG的隐私的四个方面,即合并、查询、陈述和完成方面的公开问题。我们将这些问题纳入了细节,并为它们提出了可能的技术解决办法。此外,我们提出了三个保护KG-aware隐私的应用,并简单地描述了我们提出的技术如何应用到这些应用中。