Introduction to the special issue on learning from multi-label data

Tsoumakas, Grigorios; Zhang, Min-Ling; Zhou, Zhi-Hua
July 2012
Machine Learning;Jul2012, Vol. 88 Issue 1/2, p1
Academic Journal
An introduction is presented in which the editor discusses various reports within the issue on topics including label dependence and loss minimisation, learning-to-rank algorithms for learning from multi-label data, and Compressed Labeling for multi-label learning.


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