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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 91100 of 492 papers

TitleStatusHype
Clean Label Attacks against SLU Systems0
Unleashing Worms and Extracting Data: Escalating the Outcome of Attacks against RAG-based Inference in Scale and Severity Using JailbreakingCode0
Context is the Key: Backdoor Attacks for In-Context Learning with Vision Transformers0
Blockchain-based Federated Recommendation with Incentive Mechanism0
Protecting against simultaneous data poisoning attacks0
BackdoorLLM: A Comprehensive Benchmark for Backdoor Attacks and Defenses on Large Language ModelsCode3
Accelerating the Surrogate Retraining for Poisoning Attacks against Recommender SystemsCode0
Unlearnable Examples Detection via Iterative Filtering0
Sonic: Fast and Transferable Data Poisoning on Clustering Algorithms0
2D-OOB: Attributing Data Contribution Through Joint Valuation FrameworkCode0
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