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Membership Inference Attack

Papers

Showing 5175 of 186 papers

TitleStatusHype
ReCaLL: Membership Inference via Relative Conditional Log-Likelihoods0
Data Plagiarism Index: Characterizing the Privacy Risk of Data-Copying in Tabular Generative Models0
Do Parameters Reveal More than Loss for Membership Inference?Code0
RWKU: Benchmarking Real-World Knowledge Unlearning for Large Language ModelsCode2
Semantic Membership Inference Attack against Large Language Models0
Machine Unlearning for Uplink Interference Cancellation0
Is My Data in Your Retrieval Database? Membership Inference Attacks Against Retrieval Augmented Generation0
Towards Black-Box Membership Inference Attack for Diffusion Models0
The Mosaic Memory of Large Language ModelsCode0
Data Contamination Calibration for Black-box LLMsCode1
Many-Shot Regurgitation (MSR) Prompting0
GLiRA: Black-Box Membership Inference Attack via Knowledge DistillationCode0
Federated Graph Condensation with Information Bottleneck Principles0
Towards Reliable Empirical Machine Unlearning Evaluation: A Game-Theoretic View0
A Federated Parameter Aggregation Method for Node Classification Tasks with Different Graph Network Structures0
τ: Gradient-based and Task-Agnostic machine Unlearning0
Low-Cost Privacy-Preserving Decentralized Learning0
Shake to Leak: Fine-tuning Diffusion Models Can Amplify the Generative Privacy RiskCode1
On the Impact of Uncertainty and Calibration on Likelihood-Ratio Membership Inference Attacks0
Why Does Differential Privacy with Large Epsilon Defend Against Practical Membership Inference Attacks?0
Do Membership Inference Attacks Work on Large Language Models?Code2
FedMIA: An Effective Membership Inference Attack Exploiting "All for One" Principle in Federated LearningCode1
Impact of Dataset Properties on Membership Inference Vulnerability of Deep Transfer Learning0
De-identification is not always enough0
Inference Attacks Against Face Recognition Model without Classification Layers0
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