Ask a Question

Prefer a chat interface with context about you and your work?

Multi-Label Learning with Stronger Consistency Guarantees

Multi-Label Learning with Stronger Consistency Guarantees

We present a detailed study of surrogate losses and algorithms for multi-label learning, supported by $H$-consistency bounds. We first show that, for the simplest form of multi-label loss (the popular Hamming loss), the well-known consistent binary relevance surrogate suffers from a sub-optimal dependency on the number of labels in terms …