FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels

Wang R, Ersoy O, Zhu H, Jin Y, Liang K (2022)
IEEE Transactions on Big Data: 1-15.

Zeitschriftenaufsatz | E-Veröff. vor dem Druck | Englisch
 
Download
Es wurden keine Dateien hochgeladen. Nur Publikationsnachweis!
Autor*in
Wang, Rui; Ersoy, Oguzhan; Zhu, Hangyu; Jin, YaochuUniBi ; Liang, Kaitai
Abstract / Bemerkung
Vertical Federated Learning (VFL) enables multiple clients to collaboratively train a global model over vertically partitioned data without leaking private local information. Tree-based models, like XGBoost and LightGBM, have been widely used in VFL to enhance the interpretation and efficiency of training. However, there is a fundamental lack of research on how to conduct VFL securely over distributed labels. This work is the first to fill this gap by designing a novel protocol, called FEVERLESS, based on XGBoost. FEVERLESS leverages secure aggregation via information masking technique and global differential privacy provided by a fairly and randomly selected noise leader to prevent private information from being leaked in the training process. Furthermore, it provides label and data privacy against honest-but-curious adversaries even in the case of collusion of n−2 out of n clients. We present a comprehensive security and efficiency analysis for our design, and the empirical results from our experiments demonstrate that FEVERLESS is fast and secure. In particular, it outperforms the solution based on additive homomorphic encryption in runtime cost and provides better accuracy than the local differential privacy approach.
Erscheinungsjahr
2022
Zeitschriftentitel
IEEE Transactions on Big Data
Seite(n)
1-15
eISSN
2332-7790
Page URI
https://pub.uni-bielefeld.de/record/2978351

Zitieren

Wang R, Ersoy O, Zhu H, Jin Y, Liang K. FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels. IEEE Transactions on Big Data. 2022:1-15.
Wang, R., Ersoy, O., Zhu, H., Jin, Y., & Liang, K. (2022). FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels. IEEE Transactions on Big Data, 1-15. https://doi.org/10.1109/TBDATA.2022.3227326
Wang, Rui, Ersoy, Oguzhan, Zhu, Hangyu, Jin, Yaochu, and Liang, Kaitai. 2022. “FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels”. IEEE Transactions on Big Data, 1-15.
Wang, R., Ersoy, O., Zhu, H., Jin, Y., and Liang, K. (2022). FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels. IEEE Transactions on Big Data, 1-15.
Wang, R., et al., 2022. FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels. IEEE Transactions on Big Data, , p 1-15.
R. Wang, et al., “FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels”, IEEE Transactions on Big Data, 2022, pp. 1-15.
Wang, R., Ersoy, O., Zhu, H., Jin, Y., Liang, K.: FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels. IEEE Transactions on Big Data. 1-15 (2022).
Wang, Rui, Ersoy, Oguzhan, Zhu, Hangyu, Jin, Yaochu, and Liang, Kaitai. “FEVERLESS: Fast and Secure Vertical Federated Learning based on XGBoost for Decentralized Labels”. IEEE Transactions on Big Data (2022): 1-15.

Link(s) zu Volltext(en)
Access Level
Restricted Closed Access

Export

Markieren/ Markierung löschen
Markierte Publikationen

Open Data PUB

Suchen in

Google Scholar