Development of Artificial Intelligence (AI) is inherently tied to the development of data. However, in most industries data exists in form of isolated islands, with limited scope of sharing between different organizations. This is an hindrance to the further development of AI. Federated learning has emerged as a possible solution to this problem in the last few years without compromising user privacy. Among different variants of the federated learning, noteworthy is federated transfer learning (FTL) that allows knowledge to be transferred across domains that do not have many overlapping features and users. In this work we provide a comprehensive survey of the existing works on this topic. In more details, we study the background of FTL and its different existing applications. We further analyze FTL from privacy and machine learning perspective.
翻译:发展人工智能(AI)与数据开发有着内在的联系,然而,在大多数行业中,数据都以孤立岛屿的形式存在,不同组织之间的共享范围有限,这阻碍了AI的进一步发展。在过去几年中,联邦学习成为解决这一问题的可能解决办法,同时不损害用户的隐私。在联邦学习的不同变体中,值得注意的是联邦转移学习(FTL),它使知识能够跨越没有许多重叠特征和用户的各个领域。在这项工作中,我们对关于这个主题的现有工作进行了全面调查。我们更详细地研究FTL的背景及其不同的现有应用。我们从隐私和机器学习的角度进一步分析FTL。