Original paper
Multi-label Learning with Missing Labels Using Mixed Dependency Graphs
Volume: 126, Issue: 8, Pages: 875 - 896
Published: Apr 6, 2018
Abstract
This work focuses on the problem of multi-label learning with missing labels (MLML), which aims to label each test instance with multiple class labels given training instances that have an incomplete/partial set of these labels (i.e., some of their labels are missing). The key point to handle missing labels is propagating the label information from the provided labels to missing labels, through a dependency graph that each label of each instance...
Paper Details
Title
Multi-label Learning with Missing Labels Using Mixed Dependency Graphs
Published Date
Apr 6, 2018
Volume
126
Issue
8
Pages
875 - 896
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