TITLE

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

AUTHOR(S)
Tsoumakas, Grigorios; Zhang, Min-Ling; Zhou, Zhi-Hua
PUB. DATE
July 2012
SOURCE
Machine Learning;Jul2012, Vol. 88 Issue 1/2, p1
SOURCE TYPE
Academic Journal
DOC. TYPE
Editorial
ABSTRACT
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.
ACCESSION #
76517359

 

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