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Rui Wang
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Distributed additive encryption and quantization for privacy preserving federated deep learning
H Zhu, R Wang, Y Jin, K Liang, J Ning
Neurocomputing 463, 309-327, 2021
542021
PIVODL: Privacy-preserving vertical federated learning over distributed labels
H Zhu, R Wang, Y Jin, K Liang
IEEE Transactions on Artificial Intelligence 4 (5), 988-1001, 2021
302021
More is better (mostly): On the backdoor attacks in federated graph neural networks
J Xu, R Wang, S Koffas, K Liang, S Picek
Proceedings of the 38th Annual Computer Security Applications Conference …, 2022
232022
Your smart contracts are not secure: investigating arbitrageurs and oracle manipulators in ethereum
K Tjiam, R Wang, H Chen, K Liang
Proceedings of the 3rd Workshop on Cyber-Security Arms Race, 25-35, 2021
202021
Feverless: Fast and secure vertical federated learning based on xgboost for decentralized labels
R Wang, O Ersoy, H Zhu, Y Jin, K Liang
IEEE Transactions on Big Data, 2022
172022
An-gcn: an anonymous graph convolutional network against edge-perturbing attacks
A Liu, B Li, T Li, P Zhou, R Wang
IEEE transactions on neural networks and learning systems 35 (1), 88-102, 2022
92022
Brief but powerful: Byzantine-robust and privacy-preserving federated learning via model segmentation and secure clustering
R Wang, X Wang, H Chen, S Picek, Z Liu, K Liang
arXiv preprint arXiv:2208.10161, 2022
82022
Federated synthetic data generation with stronger security guarantees
AR Ghavamipour, F Turkmen, R Wang, K Liang
Proceedings of the 28th ACM Symposium on Access Control Models and …, 2023
62023
FLVoogd: Robust and privacy preserving federated learning
T Yuhang, W Rui, Q Yanqi, P Emmanouil, L Kaitai
Asian Conference on Machine Learning, 1022-1037, 2023
62023
Effect of Homomorphic Encryption on the Performance of Training Federated Learning Generative Adversarial Networks
I Pejic, R Wang, K Liang
arXiv preprint arXiv:2207.00263, 2022
62022
Multi-flgans: multi-distributed adversarial networks for non-IID distribution
A Amalan, R Wang, Y Qiao, E Panaousis, K Liang
arXiv preprint arXiv:2206.12178, 2022
52022
Feature engineering framework based on secure multi-party computation in federated learning
L Sun, R Du, D He, S Zhu, R Wang, S Chan
2021 IEEE 23rd Int Conf on High Performance Computing & Communications; 7th …, 2021
42021
MUDGUARD: Taming Malicious Majorities in Federated Learning using Privacy-Preserving Byzantine-Robust Clustering
R Wang, X Wang, H Chen, J Decouchant, S Picek, N Laoutaris, K Liang
ACM SIGMETRICS, 2025
2025
Stealthy Backdoor Attack against Federated Learning through Frequency Domain by Backdoor Neuron Constraint and Model Camouflage
Y Qiao, D Liu, R Wang, K Liang
IEEE Journal on Emerging and Selected Topics in Circuits and Systems, 2024
2024
Low-Frequency Black-Box Backdoor Attack via Evolutionary Algorithm
Y Qiao, D Liu, R Wang, K Liang
arXiv preprint arXiv:2402.15653, 2024
2024
Secure and resilient federated learning
R Wang
2024
FTA: Stealthy and Adaptive Backdoor Attack with Flexible Triggers on Federated Learning
Y Qiao, D Liu, C Chen, R Wang, K Liang
arXiv preprint arXiv:2309.00127, 2023
2023
FTA: Stealthy and Robust Backdoor Attack with Flexible Trigger on Federated Learning
Y Qiao, C Chen, R Wang, K Liang
arXiv e-prints, arXiv: 2309.00127, 2023
2023
Flvoogd: Robust and privacy preserving federated learning
Y Tian, R Wang, Y Qiao, E Panaousis, K Liang
arXiv preprint arXiv:2207.00428, 2022
2022
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