SecureLearn - an Attack-Agnostic Defense for Multiclass Machine Learning against Data Poisoning Attacks
Data poisoning attacks are a potential threat to machine learning ML models, aiming to manipulate training datasets to disrupt their performance. Existing defenses are mostly designed to mitigate specific poisoning attacks or are aligned with particular ML algorithms. Furthermore, most defenses a...