Federated Learning with Privacy-preserving and Model IP-right-protection
文献类型:期刊论文
作者 | Qiang Yang2,3; Anbu Huang2; Lixin Fan2; Chee Seng Chan1; Jian Han Lim1; Kam Woh Ng5; Ding Sheng Ong6; Bowen Li4 |
刊名 | Machine Intelligence Research
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出版日期 | 2023 |
卷号 | 20期号:1页码:19-37 |
关键词 | Federated learning privacy-preserving machine learning security decentralized learning intellectual property protection |
ISSN号 | 2731-538X |
DOI | 10.1007/s11633-022-1343-2 |
英文摘要 | In the past decades, artificial intelligence (AI) has achieved unprecedented success, where statistical models become the central entity in AI. However, the centralized training and inference paradigm for building and using these models is facing more and more privacy and legal challenges. To bridge the gap between data privacy and the need for data fusion, an emerging AI paradigm federated learning (FL) has emerged as an approach for solving data silos and data privacy problems. Based on secure distributed AI, federated learning emphasizes data security throughout the lifecycle, which includes the following steps: data preprocessing, training, evaluation, and deployments. FL keeps data security by using methods, such as secure multi-party computation (MPC), differential privacy, and hardware solutions, to build and use distributed multiple-party machine-learning systems and statistical models over different data sources. Besides data privacy concerns, we argue that the concept of “model” matters, when developing and deploying federated models, they are easy to expose to various kinds of risks including plagiarism, illegal copy, and misuse. To address these issues, we introduce FedIPR, a novel ownership verification scheme, by embedding watermarks into FL models to verify the ownership of FL models and protect model intellectual property rights (IPR or IP-right for short). While security is at the core of FL, there are still many articles referred to distributed machine learning with no security guarantee as “federated learning”, which are not satisfied with the FL definition supposed to be. To this end, in this paper, we reiterate the concept of federated learning and propose secure federated learning (SFL), where the ultimate goal is to build trustworthy and safe AI with strong privacy-preserving and IP-right-preserving. We provide a com prehensive overview of existing works, including threats, attacks, and defenses in each phase of SFL from the lifecycle perspective. |
源URL | [http://ir.ia.ac.cn/handle/173211/55964] ![]() |
专题 | 自动化研究所_学术期刊_International Journal of Automation and Computing |
作者单位 | 1.University of Malaya, Kuala Lumpur 50603, Malaysia 2.WeBank, Shenzhen 518057, China 3.Hong Kong University of Science and Technology, Hong Kong 999077, China 4.Shanghai Jiao Tong University, Shanghai 200240, China 5.University of Surrey, Guildford GU2 7XH, UK 6.University of Aberystwyth, Wales SY23 3DD, UK |
推荐引用方式 GB/T 7714 | Qiang Yang,Anbu Huang,Lixin Fan,et al. Federated Learning with Privacy-preserving and Model IP-right-protection[J]. Machine Intelligence Research,2023,20(1):19-37. |
APA | Qiang Yang.,Anbu Huang.,Lixin Fan.,Chee Seng Chan.,Jian Han Lim.,...&Bowen Li.(2023).Federated Learning with Privacy-preserving and Model IP-right-protection.Machine Intelligence Research,20(1),19-37. |
MLA | Qiang Yang,et al."Federated Learning with Privacy-preserving and Model IP-right-protection".Machine Intelligence Research 20.1(2023):19-37. |
入库方式: OAI收割
来源:自动化研究所
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