Cryptography and Security · Computer Science
Evaluating Gradient Inversion Attacks and Defenses in Federated Learning
Yangsibo Huang, Samyak Gupta, Zhao Song, Kai Li +1
2021-12-02
Computer Vision and Pattern Recognition · Computer Science
Defending Against Gradient Inversion Attacks for Biomedical Images via Learnable Data Perturbation
Shiyi Jiang, Farshad Firouzi, Krishnendu Chakrabarty
2025-03-24
Machine Learning · Computer Science
Provable Defense against Privacy Leakage in Federated Learning from Representation Perspective
Jingwei Sun, Ang Li, Binghui Wang, Huanrui Yang +2
2020-12-14
Cryptography and Security · Computer Science
Practical Feasibility of Gradient Inversion Attacks in Federated Learning
Viktor Valadi, Mattias Åkesson, Johan Östman, Fazeleh Hoseini +2
2026-02-10
Machine Learning · Computer Science
Gradient Inversion with Generative Image Prior
Jinwoo Jeon, Jaechang Kim, Kangwook Lee, Sewoong Oh +1
2021-10-29
Machine Learning · Computer Science
Defense Against Gradient Leakage Attacks via Learning to Obscure Data
Yuxuan Wan, Han Xu, Xiaorui Liu, Jie Ren +2
2022-06-03
Machine Learning · Computer Science
Do Gradient Inversion Attacks Make Federated Learning Unsafe?
Ali Hatamizadeh, Hongxu Yin, Pavlo Molchanov, Andriy Myronenko +7
2023-02-01
Cryptography and Security · Computer Science
Advancing Practical Homomorphic Encryption for Federated Learning: Theoretical Guarantees and Efficiency Optimizations
Ren-Yi Huang, Dumindu Samaraweera, Prashant Shekhar, J. Morris Chang
2025-09-26
Cryptography and Security · Computer Science
On the Detectability of Active Gradient Inversion Attacks in Federated Learning
Vincenzo Carletti, Pasquale Foggia, Carlo Mazzocca, Giuseppe Parrella +1
2026-05-26
Machine Learning · Computer Science
Concealing Sensitive Samples against Gradient Leakage in Federated Learning
Jing Wu, Munawar Hayat, Mingyi Zhou, Mehrtash Harandi
2023-12-15
Cryptography and Security · Computer Science
Enhancing Privacy of Spatiotemporal Federated Learning against Gradient Inversion Attacks
Lele Zheng, Yang Cao, Renhe Jiang, Kenjiro Taura +3
2024-07-16
Machine Learning · Computer Science
Uncovering Gradient Inversion Risks in Practical Language Model Training
Xinguo Feng, Zhongkui Ma, Zihan Wang, Eu Joe Chegne +3
2025-07-30
Cryptography and Security · Computer Science
Exploring the Vulnerabilities of Federated Learning: A Deep Dive into Gradient Inversion Attacks
Pengxin Guo, Runxi Wang, Shuang Zeng, Jinjing Zhu +6
2026-01-12
Machine Learning · Computer Science
A New Federated Learning Framework Against Gradient Inversion Attacks
Pengxin Guo, Shuang Zeng, Wenhao Chen, Xiaodan Zhang +3
2024-12-11
Cryptography and Security · Computer Science
Federated Learning under Attack: Improving Gradient Inversion for Batch of Images
Luiz Leite, Yuri Santo, Bruno L. Dalmazo, André Riker
2024-09-27
Cryptography and Security · Computer Science
Uncovering Privacy Vulnerabilities through Analytical Gradient Inversion Attacks
Tamer Ahmed Eltaras, Qutaibah Malluhi, Alessandro Savino, Stefano Di Carlo +1
2025-09-30
Computer Vision and Pattern Recognition · Computer Science
Enhancing Gradient Inversion Attacks in Federated Learning via Hierarchical Feature Optimization
Hao Fang, Wenbo Yu, Bin Chen, Xuan Wang +3
2026-04-02
Image and Video Processing · Electrical Eng. & Systems
Gradient Inversion Attacks on Parameter-Efficient Fine-Tuning
Hasin Us Sami, Swapneel Sen, Amit K. Roy-Chowdhury, Srikanth V. Krishnamurthy +1
2025-06-06
Cryptography and Security · Computer Science
Deciphering the Interplay between Attack and Protection Complexity in Privacy-Preserving Federated Learning
Xiaojin Zhang, Mingcong Xu, Yiming Li, Wei Chen +1
2025-08-19
Computer Vision and Pattern Recognition · Computer Science
Auditing Privacy Defenses in Federated Learning via Generative Gradient Leakage
Zhuohang Li, Jiaxin Zhang, Luyang Liu, Jian Liu
2022-03-30
Machine Learning · Computer Science
GI-SMN: Gradient Inversion Attack against Federated Learning without Prior Knowledge
Jin Qian, Kaimin Wei, Yongdong Wu, Jilian Zhang +2
2024-05-07
Machine Learning · Computer Science
Robbing the Fed: Directly Obtaining Private Data in Federated Learning with Modified Models
Liam Fowl, Jonas Geiping, Wojtek Czaja, Micah Goldblum +1
2022-03-21
Machine Learning · Computer Science
Refiner: Data Refining against Gradient Leakage Attacks in Federated Learning
Mingyuan Fan, Cen Chen, Chengyu Wang, Xiaodan Li +1
2025-06-11