Vertical federated learning: a structured literature review

被引:0
作者
Khan, Afsana [1 ]
ten Thij, Marijn [1 ,2 ]
Wilbik, Anna [1 ]
机构
[1] Maastricht Univ, Dept Adv Comp Sci, Paul Henri Spaaklaan 1, NL-6229EN Maastricht, Netherlands
[2] Tilburg Univ, Dept Cognit Sci & Artificial Intelligence, Warandelaan 2, NL-5037AB TilburgLondon, Netherlands
关键词
Vertical federated learning; Privacy-preserving machine learning; Literature review; PRIVACY;
D O I
10.1007/s10115-025-02356-y
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Federated learning (FL) has emerged as a promising distributed learning paradigm with an added advantage of data privacy. With the growing interest in collaboration among data owners, FL has gained significant attention from organizations. The idea of FL is to enable collaborating participants train machine learning (ML) models on decentralized data without breaching privacy. In simpler words, federated learning is the approach of "bringing the model to the data, instead of bringing the data to the model". Federated learning, when applied to data which is partitioned vertically across participants, is able to build a complete ML model by combining local models trained only using the data with distinct features at the local sites. This architecture of FL is referred to as vertical federated learning (VFL), which differs from the conventional FL on horizontally partitioned data. As VFL is different from conventional FL, it comes with its own issues and challenges. Motivated by the comparatively less explored side of FL, this paper provides a comprehensive overview of existing methods and developments in VFL, covering various aspects such as communication, learning, privacy, and applications. We conclude by identifying gaps in the current literature and proposing potential future directions for research in VFL.
引用
收藏
页码:3205 / 3243
页数:39
相关论文
共 173 条
  • [1] Abadi A., Doyle B., Gini F., Et al., Starlit: Privacy-preserving federated learning to enhance financial fraud detection., (2024)
  • [2] Agarwal A., Dudik M., Kale S., Et al., Contextual bandit learning with predictable rewards, Proceedings of the 15th international conference on artificial intelligence and statistics, pp. 19-26, (2012)
  • [3] Agrawal N., Pendharkar I., Shroff J., Et al., A-XAI: adversarial machine learning for trustable explainability, AI and Ethics, 4, pp. 1143-1174, (2024)
  • [4] Albrecht J.P., How the GDPR will change the world, Eur Data Protect Law Rev, 2, pp. 287-289, (2016)
  • [5] Aono Y., Hayashi T., Wang L., Et al., Privacy-preserving deep learning via additively homomorphic encryption, IEEE Trans Inf Forensics Secur, 13, 5, pp. 1333-1345, (2017)
  • [6] Armitage A., Keeble-Allen D., Undertaking a structured literature review or structuring a literature review: Tales from the field, Proceedings of the 7th European conference on research methodology for business and management studies: ECRM2008, (2008)
  • [7] Aumann R.J., Maschler M., Game theoretic analysis of a bankruptcy problem from the talmud, J Econom Theory, 36, 2, pp. 195-213, (1985)
  • [8] GitHub - PaddlePaddle/PaddleFL: Federated Deep Learning in PaddlePaddle — github.com, (2021)
  • [9] Becker B., Kohavi R., Adult Dataset. UCI machine learning repository, (1996)
  • [10] Beutel D.J., Topal T., Mathur A., Et al., Flower: A friendly federated learning research framework., (2020)