GitHub / ml-lab-sau / Discriminatory-Label-specific-Weights-for-Multi-label-Learning-with-Missing-Labels
To deal with the class imbalance problem in multi-label learning with missing labels, we propose Class Imbalance aware Missing labels Multi-label Learning, CIMML. Our proposed method handles class imbalance issue by constructing a label weight matrix with weight estimation guided by how frequently a label is present, absent, and unobserved.
Stars: 0
Forks: 0
Open issues: 0
License: None
Language: MATLAB
Size: 32.3 MB
Dependencies parsed at: Pending
Created at: over 1 year ago
Updated at: about 1 year ago
Pushed at: over 1 year ago
Last synced at: about 1 year ago
Topics: class-imbalance, label-correlation, missing-label-aware-label-weights, missing-labels, multi-label-learning