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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 110 of 492 papers

TitleStatusHype
A Survey of Attacks on Large Vision-Language Models: Resources, Advances, and Future TrendsCode4
Quantifying the robustness of deep multispectral segmentation models against natural perturbations and data poisoningCode3
Data Poisoning in LLMs: Jailbreak-Tuning and Scaling LawsCode3
Safety at Scale: A Comprehensive Survey of Large Model SafetyCode3
BackdoorLLM: A Comprehensive Benchmark for Backdoor Attacks and Defenses on Large Language ModelsCode3
SoK: Benchmarking Poisoning Attacks and Defenses in Federated LearningCode2
Watch Out for Your Agents! Investigating Backdoor Threats to LLM-Based AgentsCode2
Backdoor Learning: A SurveyCode2
Shadowcast: Stealthy Data Poisoning Attacks Against Vision-Language ModelsCode2
Amplifying Membership Exposure via Data PoisoningCode1
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