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virat shejwalkar
virat shejwalkar
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Title
Cited by
Cited by
Year
Manipulating the Byzantine: Optimizing Model Poisoning Attacks and Defenses for Federated Learning
V Shejwalkar, A Houmansadr
Network and Distributed System Security Symposium, NDSS, 2021
2962021
Back to the Drawing Board: A Critical Evaluation of Poisoning Attacks on Production Federated Learning
V Shejwalkar, A Houmansadr, P Kairouz, D Ramage
IEEE Symposium on Security and Privacy, 2022
2132022
Cronus: Robust and heterogeneous collaborative learning with black-box knowledge transfer
H Chang, V Shejwalkar, R Shokri, A Houmansadr
NeurIPS Workshop on New Frontiers in Federated Learning, 2021
1602021
Quantifying Privacy Leakage in Graph Embedding
V Duddu, A Boutet, V Shejwalkar
EAI MobiQuitous, 2021
1002021
Membership Privacy for Machine Learning Models Through Knowledge Transfer
V Shejwalkar, A Houmansadr
AAAI, 2021
902021
Mitigating Membership Inference Attacks by Self-Distillation Through a Novel Ensemble Architecture
X Tang, S Mahloujifar, L Song, V Shejwalkar, M Nasr, A Houmansadr, ...
USENIX Security Symposium, 2022
632022
Membership inference attacks against nlp classification models
V Shejwalkar, HA Inan, A Houmansadr, R Sim
NeurIPS 2021 Workshop Privacy in Machine Learning, 2021
412021
FRL: Federated Rank Learning
H Mozaffari, V Shejwalkar, A Houmansadr
USENIX Security Symposium, 2023
20*2023
Reconciling utility and membership privacy via knowledge distillation
V Shejwalkar, A Houmansadr
arXiv e-prints, arXiv: 1906.06589, 2019
152019
Machine Learning with Differentially Private Labels: Mechanisms and Frameworks
X Tang, M Nasr, S Mahloujifar, V Shejwalkar, L Song, A Houmansadr, ...
Proceedings on Privacy Enhancing Technologies 1, 19, 2022
102022
The perils of learning from unlabeled data: Backdoor attacks on semi-supervised learning
V Shejwalkar, L Lyu, A Houmansadr
International Conference on Computer Vision (ICCV), 2023
92023
Towards privacy aware deep learning for embedded systems
V Duddu, A Boutet, V Shejwalkar
Proceedings of the 37th ACM/SIGAPP Symposium on Applied Computing, 520-529, 2022
9*2022
Security analysis of splitfed learning
MA Khan, V Shejwalkar, A Houmansadr, FM Anwar
Proceedings of the 20th ACM Conference on Embedded Networked Sensor Systems …, 2022
72022
Recycling scraps: Improving private learning by leveraging intermediate checkpoints
V Shejwalkar, A Ganesh, R Mathews, O Thakkar, A Thakurta
arXiv preprint arXiv:2210.01864, 2022
62022
Cronus: Robust and heterogeneous collaborative learning with black-box knowledge transfer
C Hongyan, S Virat, S Reza, H Amir
arXiv preprint arXiv:1912.11279, 2019
62019
On the pitfalls of security evaluation of robust federated learning
MA Khan, V Shejwalkar, A Houmansadr, FM Anwar
2023 IEEE Security and Privacy Workshops (SPW), 57-68, 2023
32023
Leveraging prior knowledge asymmetries in the design of location privacy-preserving mechanisms
N Takbiri, V Shejwalkar, A Houmansadr, DL Goeckel, H Pishro-Nik
IEEE Wireless Communications Letters 9 (11), 2005-2009, 2020
32020
Revisiting utility metrics for location privacy-preserving mechanisms
V Shejwalkar, A Houmansadr, H Pishro-Nik, D Goeckel
Proceedings of the 35th Annual Computer Security Applications Conference …, 2019
22019
Quantifying and Enhancing the Security of Federated Learning
VV Shejwalkar
12023
Leveraging intermediate checkpoints to improve the performance of trained differentially private models
OD Thakkar, A Ganesh, VV Shejwalkar, AG Thakurta, R Mathews
US Patent App. 18/459,354, 2024
2024
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