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Data Poisoning

Data Poisoning is an adversarial attack that tries to manipulate the training dataset in order to control the prediction behavior of a trained model such that the model will label malicious examples into a desired classes (e.g., labeling spam e-mails as safe).

Source: Explaining Vulnerabilities to Adversarial Machine Learning through Visual Analytics

Papers

Showing 311320 of 492 papers

TitleStatusHype
Try to Avoid Attacks: A Federated Data Sanitization Defense for Healthcare IoMT Systems0
Tuning without Peeking: Provable Privacy and Generalization Bounds for LLM Post-Training0
Turning Generative Models Degenerate: The Power of Data Poisoning Attacks0
Understanding Influence Functions and Datamodels via Harmonic Analysis0
Unlearnable Examples Detection via Iterative Filtering0
UTrace: Poisoning Forensics for Private Collaborative Learning0
VPN: Verification of Poisoning in Neural Networks0
What's Pulling the Strings? Evaluating Integrity and Attribution in AI Training and Inference through Concept Shift0
What Distributions are Robust to Indiscriminate Poisoning Attacks for Linear Learners?0
Wild Patterns Reloaded: A Survey of Machine Learning Security against Training Data Poisoning0
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