AINeutralarXiv – CS AI · 7h ago5/10
🧠
Implicit Regularization for Multi-label Feature Selection
Researchers propose a novel feature selection method for multi-label learning using implicit regularization and label embedding instead of traditional sparse penalization techniques. The approach leverages Hadamard product parameterization to reduce bias and potentially enable benign overfitting, showing promise on benchmark datasets.