Contact Tracing has been used to identify people who were in close proximity to those infected with SARS-Cov2 coronavirus. A number of digital contract tracing applications have been introduced to facilitate or complement physical contact tracing. However, there are a number of privacy issues in the implementation of contract tracing applications, which make people reluctant to install or update their infection status on these applications. In this concept paper, we present ideas from Graph Neural Networks and explainability, that could improve trust in these applications, and encourage adoption by people.
翻译:利用联系追踪查明与感染SARS-Cov2 Corona病毒的人关系密切的人的身份,并采用若干数字合同追踪应用程序,以便利或补充实物联系追踪,但在执行合同追踪应用程序方面存在若干隐私问题,使人们不愿安装或更新这些应用程序的感染状况,在本概念文件中,我们介绍了图形神经网络和解释性的想法,这些想法可以增进对这些应用程序的信任,鼓励人们采用。