论文标题
当机器学习达到隐私时:调查和前景
When Machine Learning Meets Privacy: A Survey and Outlook
论文作者
论文摘要
新出现的机器学习(例如深度学习)方法已成为彻底改变各种行业的强大驱动力,例如智能医疗保健,金融技术和监视系统。同时,在这个基于机器学习的人工智能时代,隐私已成为一个很大的关注。重要的是要注意,在机器学习的背景下,隐私保护问题与传统数据隐私保护的情况大不相同,因为机器学习可以作为朋友和敌人。当前,有关隐私和机器学习(ML)(ML)的工作仍处于婴儿期,因为大多数现有解决方案仅关注机器学习过程中的隐私问题。因此,需要一项有关隐私保护问题和机器学习的全面研究。本文在隐私问题和机器学习解决方案中调查了艺术的状态。该调查涵盖了隐私和机器学习之间的三类互动:(i)私人机器学习,(ii)机器学习辅助隐私保护,以及(iii)基于机器学习的隐私攻击和相应的保护方案。审查了每个类别的当前研究进度,并确定了主要挑战。最后,基于我们对隐私和机器学习领域的深入分析,我们指出了该领域的未来研究方向。
The newly emerged machine learning (e.g. deep learning) methods have become a strong driving force to revolutionize a wide range of industries, such as smart healthcare, financial technology, and surveillance systems. Meanwhile, privacy has emerged as a big concern in this machine learning-based artificial intelligence era. It is important to note that the problem of privacy preservation in the context of machine learning is quite different from that in traditional data privacy protection, as machine learning can act as both friend and foe. Currently, the work on the preservation of privacy and machine learning (ML) is still in an infancy stage, as most existing solutions only focus on privacy problems during the machine learning process. Therefore, a comprehensive study on the privacy preservation problems and machine learning is required. This paper surveys the state of the art in privacy issues and solutions for machine learning. The survey covers three categories of interactions between privacy and machine learning: (i) private machine learning, (ii) machine learning aided privacy protection, and (iii) machine learning-based privacy attack and corresponding protection schemes. The current research progress in each category is reviewed and the key challenges are identified. Finally, based on our in-depth analysis of the area of privacy and machine learning, we point out future research directions in this field.