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Vertical Federated Learning for Effectiveness, Security, Applicability: A Survey

Published 25 May 2024 in cs.LG and cs.CR | (2405.17495v2)

Abstract: Vertical Federated Learning (VFL) is a privacy-preserving distributed learning paradigm where different parties collaboratively learn models using partitioned features of shared samples, without leaking private data. Recent research has shown promising results addressing various challenges in VFL, highlighting its potential for practical applications in cross-domain collaboration. However, the corresponding research is scattered and lacks organization. To advance VFL research, this survey offers a systematic overview of recent developments. First, we provide a history and background introduction, along with a summary of the general training protocol of VFL. We then revisit the taxonomy in recent reviews and analyze limitations in-depth. For a comprehensive and structured discussion, we synthesize recent research from three fundamental perspectives: effectiveness, security, and applicability. Finally, we discuss several critical future research directions in VFL, which will facilitate the developments in this field. We provide a collection of research lists and periodically update them at https://github.com/shentt67/VFL_Survey.

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References (9)
  1. California consumer privacy act (ccpa). https://oag.ca.gov/privacy/ccpa, 2018
  2. Virginia consumer data protection act (cdpa). https://lis.virginia.gov/ cgi-bin/legp604.exe?212+sum+HB2307, 2021
  3. Meadows C. A more efficient cryptographic matchmaking protocol for use in the absence of a continuously available third party. In: 1986 IEEE Symposium on Security and Privacy. IEEE, 1986: 134-134.
  4. Lin Y. The practice of federated learning in tencent wesee advertising, 2021.
  5. Rooijakkers T. CONVINCED-–Enabling privacy-preserving survival analyses using Multi-Party Computation, 2020.
  6. Krizhevsky A, Hinton G. Learning multiple layers of features from tiny images. 2009.
  7. Kahn M. Diabetes. UCI Machine Learning Repository.
  8. Dua D, Graff C. UCI machine learning repository. 2017.
  9. Zheng F. Input reconstruction attack against vertical federated large language models. arXiv preprint arXiv:2311.07585, 2023.
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